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from types import SimpleNamespace

import cv2
import numpy as np
import torch
import torchvision.transforms.functional as F

from .extract_features import read_image, resize_image

device = "cuda" if torch.cuda.is_available() else "cpu"

confs = {
    # Best quality but loads of points. Only use for small scenes
    "loftr": {
        "output": "matches-loftr",
        "model": {
            "name": "loftr",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": True,
            "resize_max": 1024,
            "dfactor": 8,
            "width": 640,
            "height": 480,
            "force_resize": True,
        },
        "max_error": 1,  # max error for assigned keypoints (in px)
        "cell_size": 1,  # size of quantization patch (max 1 kp/patch)
    },
    # "loftr_quadtree": {
    #     "output": "matches-loftr-quadtree",
    #     "model": {
    #         "name": "quadtree",
    #         "weights": "outdoor",
    #         "max_keypoints": 2000,
    #         "match_threshold": 0.2,
    #     },
    #     "preprocessing": {
    #         "grayscale": True,
    #         "resize_max": 1024,
    #         "dfactor": 8,
    #         "width": 640,
    #         "height": 480,
    #         "force_resize": True,
    #     },
    #     "max_error": 1,  # max error for assigned keypoints (in px)
    #     "cell_size": 1,  # size of quantization patch (max 1 kp/patch)
    # },
    "cotr": {
        "output": "matches-cotr",
        "model": {
            "name": "cotr",
            "weights": "out/default",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "resize_max": 1024,
            "dfactor": 8,
            "width": 640,
            "height": 480,
            "force_resize": True,
        },
        "max_error": 1,  # max error for assigned keypoints (in px)
        "cell_size": 1,  # size of quantization patch (max 1 kp/patch)
    },
    # Semi-scalable loftr which limits detected keypoints
    "loftr_aachen": {
        "output": "matches-loftr_aachen",
        "model": {
            "name": "loftr",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {"grayscale": True, "resize_max": 1024, "dfactor": 8},
        "max_error": 2,  # max error for assigned keypoints (in px)
        "cell_size": 8,  # size of quantization patch (max 1 kp/patch)
    },
    # Use for matching superpoint feats with loftr
    "loftr_superpoint": {
        "output": "matches-loftr_aachen",
        "model": {
            "name": "loftr",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {"grayscale": True, "resize_max": 1024, "dfactor": 8},
        "max_error": 4,  # max error for assigned keypoints (in px)
        "cell_size": 4,  # size of quantization patch (max 1 kp/patch)
    },
    # Use topicfm for matching feats
    "topicfm": {
        "output": "matches-topicfm",
        "model": {
            "name": "topicfm",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": True,
            "force_resize": True,
            "resize_max": 1024,
            "dfactor": 8,
            "width": 640,
            "height": 480,
        },
    },
    # Use aspanformer for matching feats
    "aspanformer": {
        "output": "matches-aspanformer",
        "model": {
            "name": "aspanformer",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": True,
            "force_resize": True,
            "resize_max": 1024,
            "width": 640,
            "height": 480,
            "dfactor": 8,
        },
    },
    "duster": {
        "output": "matches-duster",
        "model": {
            "name": "duster",
            "weights": "vit_large",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "resize_max": 512,
            "dfactor": 16,
        },
    },
    "mast3r": {
        "output": "matches-mast3r",
        "model": {
            "name": "mast3r",
            "weights": "vit_large",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "resize_max": 512,
            "dfactor": 16,
        },
    },
    "xfeat_dense": {
        "output": "matches-xfeat_dense",
        "model": {
            "name": "xfeat_dense",
            "max_keypoints": 8000,
        },
        "preprocessing": {
            "grayscale": False,
            "force_resize": False,
            "resize_max": 1024,
            "width": 640,
            "height": 480,
            "dfactor": 8,
        },
    },
    "dkm": {
        "output": "matches-dkm",
        "model": {
            "name": "dkm",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "force_resize": True,
            "resize_max": 1024,
            "width": 80,
            "height": 60,
            "dfactor": 8,
        },
    },
    "roma": {
        "output": "matches-roma",
        "model": {
            "name": "roma",
            "weights": "outdoor",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "force_resize": True,
            "resize_max": 1024,
            "width": 320,
            "height": 240,
            "dfactor": 8,
        },
    },
    "gim(dkm)": {
        "output": "matches-gim",
        "model": {
            "name": "gim",
            "weights": "gim_dkm_100h.ckpt",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": False,
            "force_resize": True,
            "resize_max": 1024,
            "width": 320,
            "height": 240,
            "dfactor": 8,
        },
    },
    "omniglue": {
        "output": "matches-omniglue",
        "model": {
            "name": "omniglue",
            "match_threshold": 0.2,
            "max_keypoints": 2000,
            "features": "null",
        },
        "preprocessing": {
            "grayscale": False,
            "resize_max": 1024,
            "dfactor": 8,
            "force_resize": False,
        },
    },
    "sold2": {
        "output": "matches-sold2",
        "model": {
            "name": "sold2",
            "max_keypoints": 2000,
            "match_threshold": 0.2,
        },
        "preprocessing": {
            "grayscale": True,
            "force_resize": True,
            "resize_max": 1024,
            "width": 640,
            "height": 480,
            "dfactor": 8,
        },
    },
    "gluestick": {
        "output": "matches-gluestick",
        "model": {
            "name": "gluestick",
            "use_lines": True,
            "max_keypoints": 1000,
            "max_lines": 300,
            "force_num_keypoints": False,
        },
        "preprocessing": {
            "grayscale": True,
            "force_resize": True,
            "resize_max": 1024,
            "width": 640,
            "height": 480,
            "dfactor": 8,
        },
    },
}

def to_cpts(kpts, ps):
    if ps > 0.0:
        kpts = np.round(np.round((kpts + 0.5) / ps) * ps - 0.5, 2)
    return [tuple(cpt) for cpt in kpts]


def assign_keypoints(
    kpts: np.ndarray,
    other_cpts: Union[List[Tuple], np.ndarray],
    max_error: float,
    update: bool = False,
    ref_bins: Optional[List[Counter]] = None,
    scores: Optional[np.ndarray] = None,
    cell_size: Optional[int] = None,
):
    if not update:
        # Without update this is just a NN search
        if len(other_cpts) == 0 or len(kpts) == 0:
            return np.full(len(kpts), -1)
        dist, kpt_ids = KDTree(np.array(other_cpts)).query(kpts)
        valid = dist <= max_error
        kpt_ids[~valid] = -1
        return kpt_ids
    else:
        ps = cell_size if cell_size is not None else max_error
        ps = max(ps, max_error)
        # With update we quantize and bin (optionally)
        assert isinstance(other_cpts, list)
        kpt_ids = []
        cpts = to_cpts(kpts, ps)
        bpts = to_cpts(kpts, int(max_error))
        cp_to_id = {val: i for i, val in enumerate(other_cpts)}
        for i, (cpt, bpt) in enumerate(zip(cpts, bpts)):
            try:
                kid = cp_to_id[cpt]
            except KeyError:
                kid = len(cp_to_id)
                cp_to_id[cpt] = kid
                other_cpts.append(cpt)
                if ref_bins is not None:
                    ref_bins.append(Counter())
            if ref_bins is not None:
                score = scores[i] if scores is not None else 1
                ref_bins[cp_to_id[cpt]][bpt] += score
            kpt_ids.append(kid)
        return np.array(kpt_ids)


def get_grouped_ids(array):
    # Group array indices based on its values
    # all duplicates are grouped as a set
    idx_sort = np.argsort(array)
    sorted_array = array[idx_sort]
    _, ids, _ = np.unique(sorted_array, return_counts=True, return_index=True)
    res = np.split(idx_sort, ids[1:])
    return res


def get_unique_matches(match_ids, scores):
    if len(match_ids.shape) == 1:
        return [0]

    isets1 = get_grouped_ids(match_ids[:, 0])
    isets2 = get_grouped_ids(match_ids[:, 1])
    uid1s = [ids[scores[ids].argmax()] for ids in isets1 if len(ids) > 0]
    uid2s = [ids[scores[ids].argmax()] for ids in isets2 if len(ids) > 0]
    uids = list(set(uid1s).intersection(uid2s))
    return match_ids[uids], scores[uids]


def matches_to_matches0(matches, scores):
    if len(matches) == 0:
        return np.zeros(0, dtype=np.int32), np.zeros(0, dtype=np.float16)
    n_kps0 = np.max(matches[:, 0]) + 1
    matches0 = -np.ones((n_kps0,))
    scores0 = np.zeros((n_kps0,))
    matches0[matches[:, 0]] = matches[:, 1]
    scores0[matches[:, 0]] = scores
    return matches0.astype(np.int32), scores0.astype(np.float16)


def kpids_to_matches0(kpt_ids0, kpt_ids1, scores):
    valid = (kpt_ids0 != -1) & (kpt_ids1 != -1)
    matches = np.dstack([kpt_ids0[valid], kpt_ids1[valid]])
    matches = matches.reshape(-1, 2)
    scores = scores[valid]

    # Remove n-to-1 matches
    matches, scores = get_unique_matches(matches, scores)
    return matches_to_matches0(matches, scores)

def scale_keypoints(kpts, scale):
    if np.any(scale != 1.0):
        kpts *= kpts.new_tensor(scale)
    return kpts

class ImagePairDataset(torch.utils.data.Dataset):
    default_conf = {
        "grayscale": True,
        "resize_max": 1024,
        "dfactor": 8,
        "cache_images": False,
    }

    def __init__(self, image_dir, conf, pairs):
        self.image_dir = image_dir
        self.conf = conf = SimpleNamespace(**{**self.default_conf, **conf})
        self.pairs = pairs
        if self.conf.cache_images:
            image_names = set(sum(pairs, ()))  # unique image names in pairs
            logger.info(f"Loading and caching {len(image_names)} unique images.")
            self.images = {}
            self.scales = {}
            for name in tqdm(image_names):
                image = read_image(self.image_dir / name, self.conf.grayscale)
                self.images[name], self.scales[name] = self.preprocess(image)

    def preprocess(self, image: np.ndarray):
        image = image.astype(np.float32, copy=False)
        size = image.shape[:2][::-1]
        scale = np.array([1.0, 1.0])

        if self.conf.resize_max:
            scale = self.conf.resize_max / max(size)
            if scale < 1.0:
                size_new = tuple(int(round(x * scale)) for x in size)
                image = resize_image(image, size_new, "cv2_area")
                scale = np.array(size) / np.array(size_new)

        if self.conf.grayscale:
            assert image.ndim == 2, image.shape
            image = image[None]
        else:
            image = image.transpose((2, 0, 1))  # HxWxC to CxHxW
        image = torch.from_numpy(image / 255.0).float()

        # assure that the size is divisible by dfactor
        size_new = tuple(
            map(
                lambda x: int(x // self.conf.dfactor * self.conf.dfactor),
                image.shape[-2:],
            )
        )
        image = F.resize(image, size=size_new)
        scale = np.array(size) / np.array(size_new)[::-1]
        return image, scale

    def __len__(self):
        return len(self.pairs)

    def __getitem__(self, idx):
        name0, name1 = self.pairs[idx]
        if self.conf.cache_images:
            image0, scale0 = self.images[name0], self.scales[name0]
            image1, scale1 = self.images[name1], self.scales[name1]
        else:
            image0 = read_image(self.image_dir / name0, self.conf.grayscale)
            image1 = read_image(self.image_dir / name1, self.conf.grayscale)
            image0, scale0 = self.preprocess(image0)
            image1, scale1 = self.preprocess(image1)
        return image0, image1, scale0, scale1, name0, name1


@torch.no_grad()
def match_dense(
    conf: Dict,
    pairs: List[Tuple[str, str]],
    image_dir: Path,
    match_path: Path,  # out
    existing_refs: Optional[List] = [],
):
    device = "cuda" if torch.cuda.is_available() else "cpu"
    Model = dynamic_load(matchers, conf["model"]["name"])
    model = Model(conf["model"]).eval().to(device)

    dataset = ImagePairDataset(image_dir, conf["preprocessing"], pairs)
    loader = torch.utils.data.DataLoader(
        dataset, num_workers=16, batch_size=1, shuffle=False
    )

    logger.info("Performing dense matching...")
    with h5py.File(str(match_path), "a") as fd:
        for data in tqdm(loader, smoothing=0.1):
            # load image-pair data
            image0, image1, scale0, scale1, (name0,), (name1,) = data
            scale0, scale1 = scale0[0].numpy(), scale1[0].numpy()
            image0, image1 = image0.to(device), image1.to(device)

            # match semi-dense
            # for consistency with pairs_from_*: refine kpts of image0
            if name0 in existing_refs:
                # special case: flip to enable refinement in query image
                pred = model({"image0": image1, "image1": image0})
                pred = {
                    **pred,
                    "keypoints0": pred["keypoints1"],
                    "keypoints1": pred["keypoints0"],
                }
            else:
                # usual case
                pred = model({"image0": image0, "image1": image1})

            # Rescale keypoints and move to cpu
            kpts0, kpts1 = pred["keypoints0"], pred["keypoints1"]
            kpts0 = scale_keypoints(kpts0 + 0.5, scale0) - 0.5
            kpts1 = scale_keypoints(kpts1 + 0.5, scale1) - 0.5
            kpts0 = kpts0.cpu().numpy()
            kpts1 = kpts1.cpu().numpy()
            scores = pred["scores"].cpu().numpy()

            # Write matches and matching scores in hloc format
            pair = names_to_pair(name0, name1)
            if pair in fd:
                del fd[pair]
            grp = fd.create_group(pair)

            # Write dense matching output
            grp.create_dataset("keypoints0", data=kpts0)
            grp.create_dataset("keypoints1", data=kpts1)
            grp.create_dataset("scores", data=scores)
    del model, loader


# default: quantize all!
def load_keypoints(
    conf: Dict, feature_paths_refs: List[Path], quantize: Optional[set] = None
):
    name2ref = {
        n: i for i, p in enumerate(feature_paths_refs) for n in list_h5_names(p)
    }

    existing_refs = set(name2ref.keys())
    if quantize is None:
        quantize = existing_refs  # quantize all
    if len(existing_refs) > 0:
        logger.info(f"Loading keypoints from {len(existing_refs)} images.")

    # Load query keypoints
    cpdict = defaultdict(list)
    bindict = defaultdict(list)
    for name in existing_refs:
        with h5py.File(str(feature_paths_refs[name2ref[name]]), "r") as fd:
            kps = fd[name]["keypoints"].__array__()
            if name not in quantize:
                cpdict[name] = kps
            else:
                if "scores" in fd[name].keys():
                    kp_scores = fd[name]["scores"].__array__()
                else:
                    # we set the score to 1.0 if not provided
                    # increase for more weight on reference keypoints for
                    # stronger anchoring
                    kp_scores = [1.0 for _ in range(kps.shape[0])]
                # bin existing keypoints of reference images for association
                assign_keypoints(
                    kps,
                    cpdict[name],
                    conf["max_error"],
                    True,
                    bindict[name],
                    kp_scores,
                    conf["cell_size"],
                )
    return cpdict, bindict


def aggregate_matches(
    conf: Dict,
    pairs: List[Tuple[str, str]],
    match_path: Path,
    feature_path: Path,
    required_queries: Optional[Set[str]] = None,
    max_kps: Optional[int] = None,
    cpdict: Dict[str, Iterable] = defaultdict(list),
    bindict: Dict[str, List[Counter]] = defaultdict(list),
):
    if required_queries is None:
        required_queries = set(sum(pairs, ()))
        # default: do not overwrite existing features in feature_path!
        required_queries -= set(list_h5_names(feature_path))

    # if an entry in cpdict is provided as np.ndarray we assume it is fixed
    required_queries -= set([k for k, v in cpdict.items() if isinstance(v, np.ndarray)])

    # sort pairs for reduced RAM
    pairs_per_q = Counter(list(chain(*pairs)))
    pairs_score = [min(pairs_per_q[i], pairs_per_q[j]) for i, j in pairs]
    pairs = [p for _, p in sorted(zip(pairs_score, pairs))]

    if len(required_queries) > 0:
        logger.info(f"Aggregating keypoints for {len(required_queries)} images.")
    n_kps = 0
    with h5py.File(str(match_path), "a") as fd:
        for name0, name1 in tqdm(pairs, smoothing=0.1):
            pair = names_to_pair(name0, name1)
            grp = fd[pair]
            kpts0 = grp["keypoints0"].__array__()
            kpts1 = grp["keypoints1"].__array__()
            scores = grp["scores"].__array__()

            # Aggregate local features
            update0 = name0 in required_queries
            update1 = name1 in required_queries

            # in localization we do not want to bin the query kp
            # assumes that the query is name0!
            if update0 and not update1 and max_kps is None:
                max_error0 = cell_size0 = 0.0
            else:
                max_error0 = conf["max_error"]
                cell_size0 = conf["cell_size"]

            # Get match ids and extend query keypoints (cpdict)
            mkp_ids0 = assign_keypoints(
                kpts0,
                cpdict[name0],
                max_error0,
                update0,
                bindict[name0],
                scores,
                cell_size0,
            )
            mkp_ids1 = assign_keypoints(
                kpts1,
                cpdict[name1],
                conf["max_error"],
                update1,
                bindict[name1],
                scores,
                conf["cell_size"],
            )

            # Build matches from assignments
            matches0, scores0 = kpids_to_matches0(mkp_ids0, mkp_ids1, scores)

            assert kpts0.shape[0] == scores.shape[0]
            grp.create_dataset("matches0", data=matches0)
            grp.create_dataset("matching_scores0", data=scores0)

            # Convert bins to kps if finished, and store them
            for name in (name0, name1):
                pairs_per_q[name] -= 1
                if pairs_per_q[name] > 0 or name not in required_queries:
                    continue
                kp_score = [c.most_common(1)[0][1] for c in bindict[name]]
                cpdict[name] = [c.most_common(1)[0][0] for c in bindict[name]]
                cpdict[name] = np.array(cpdict[name], dtype=np.float32)

                # Select top-k query kps by score (reassign matches later)
                if max_kps:
                    top_k = min(max_kps, cpdict[name].shape[0])
                    top_k = np.argsort(kp_score)[::-1][:top_k]
                    cpdict[name] = cpdict[name][top_k]
                    kp_score = np.array(kp_score)[top_k]

                # Write query keypoints
                with h5py.File(feature_path, "a") as kfd:
                    if name in kfd:
                        del kfd[name]
                    kgrp = kfd.create_group(name)
                    kgrp.create_dataset("keypoints", data=cpdict[name])
                    kgrp.create_dataset("score", data=kp_score)
                    n_kps += cpdict[name].shape[0]
                del bindict[name]

    if len(required_queries) > 0:
        avg_kp_per_image = round(n_kps / len(required_queries), 1)
        logger.info(
            f"Finished assignment, found {avg_kp_per_image} "
            f"keypoints/image (avg.), total {n_kps}."
        )
    return cpdict


def assign_matches(
    pairs: List[Tuple[str, str]],
    match_path: Path,
    keypoints: Union[List[Path], Dict[str, np.array]],
    max_error: float,
):
    if isinstance(keypoints, list):
        keypoints = load_keypoints({}, keypoints, kpts_as_bin=set([]))
    assert len(set(sum(pairs, ())) - set(keypoints.keys())) == 0
    with h5py.File(str(match_path), "a") as fd:
        for name0, name1 in tqdm(pairs):
            pair = names_to_pair(name0, name1)
            grp = fd[pair]
            kpts0 = grp["keypoints0"].__array__()
            kpts1 = grp["keypoints1"].__array__()
            scores = grp["scores"].__array__()

            # NN search across cell boundaries
            mkp_ids0 = assign_keypoints(kpts0, keypoints[name0], max_error)
            mkp_ids1 = assign_keypoints(kpts1, keypoints[name1], max_error)

            matches0, scores0 = kpids_to_matches0(mkp_ids0, mkp_ids1, scores)

            # overwrite matches0 and matching_scores0
            del grp["matches0"], grp["matching_scores0"]
            grp.create_dataset("matches0", data=matches0)
            grp.create_dataset("matching_scores0", data=scores0)


@torch.no_grad()
def match_and_assign(
    conf: Dict,
    pairs_path: Path,
    image_dir: Path,
    match_path: Path,  # out
    feature_path_q: Path,  # out
    feature_paths_refs: Optional[List[Path]] = [],
    max_kps: Optional[int] = 8192,
    overwrite: bool = False,
) -> Path:
    for path in feature_paths_refs:
        if not path.exists():
            raise FileNotFoundError(f"Reference feature file {path}.")
    pairs = parse_retrieval(pairs_path)
    pairs = [(q, r) for q, rs in pairs.items() for r in rs]
    pairs = find_unique_new_pairs(pairs, None if overwrite else match_path)
    required_queries = set(sum(pairs, ()))

    name2ref = {
        n: i for i, p in enumerate(feature_paths_refs) for n in list_h5_names(p)
    }
    existing_refs = required_queries.intersection(set(name2ref.keys()))

    # images which require feature extraction
    required_queries = required_queries - existing_refs

    if feature_path_q.exists():
        existing_queries = set(list_h5_names(feature_path_q))
        feature_paths_refs.append(feature_path_q)
        existing_refs = set.union(existing_refs, existing_queries)
        if not overwrite:
            required_queries = required_queries - existing_queries

    if len(pairs) == 0 and len(required_queries) == 0:
        logger.info("All pairs exist. Skipping dense matching.")
        return

    # extract semi-dense matches
    match_dense(conf, pairs, image_dir, match_path, existing_refs=existing_refs)

    logger.info("Assigning matches...")

    # Pre-load existing keypoints
    cpdict, bindict = load_keypoints(
        conf, feature_paths_refs, quantize=required_queries
    )

    # Reassign matches by aggregation
    cpdict = aggregate_matches(
        conf,
        pairs,
        match_path,
        feature_path=feature_path_q,
        required_queries=required_queries,
        max_kps=max_kps,
        cpdict=cpdict,
        bindict=bindict,
    )

    # Invalidate matches that are far from selected bin by reassignment
    if max_kps is not None:
        logger.info(f'Reassign matches with max_error={conf["max_error"]}.')
        assign_matches(pairs, match_path, cpdict, max_error=conf["max_error"])

def scale_lines(lines, scale):
    if np.any(scale != 1.0):
        lines *= lines.new_tensor(scale)
    return lines


def match(model, path_0, path_1, conf):
    default_conf = {
        "grayscale": True,
        "resize_max": 1024,
        "dfactor": 8,
        "cache_images": False,
        "force_resize": False,
        "width": 320,
        "height": 240,
    }

    def preprocess(image: np.ndarray):
        image = image.astype(np.float32, copy=False)
        size = image.shape[:2][::-1]
        scale = np.array([1.0, 1.0])
        if conf.resize_max:
            scale = conf.resize_max / max(size)
            if scale < 1.0:
                size_new = tuple(int(round(x * scale)) for x in size)
                image = resize_image(image, size_new, "cv2_area")
                scale = np.array(size) / np.array(size_new)
        if conf.force_resize:
            size = image.shape[:2][::-1]
            image = resize_image(image, (conf.width, conf.height), "cv2_area")
            size_new = (conf.width, conf.height)
            scale = np.array(size) / np.array(size_new)
        if conf.grayscale:
            assert image.ndim == 2, image.shape
            image = image[None]
        else:
            image = image.transpose((2, 0, 1))  # HxWxC to CxHxW
        image = torch.from_numpy(image / 255.0).float()
        # assure that the size is divisible by dfactor
        size_new = tuple(
            map(
                lambda x: int(x // conf.dfactor * conf.dfactor),
                image.shape[-2:],
            )
        )
        image = F.resize(image, size=size_new, antialias=True)
        scale = np.array(size) / np.array(size_new)[::-1]
        return image, scale

    conf = SimpleNamespace(**{**default_conf, **conf})
    image0 = read_image(path_0, conf.grayscale)
    image1 = read_image(path_1, conf.grayscale)
    image0, scale0 = preprocess(image0)
    image1, scale1 = preprocess(image1)
    image0 = image0.to(device)[None]
    image1 = image1.to(device)[None]
    pred = model({"image0": image0, "image1": image1})

    # Rescale keypoints and move to cpu
    kpts0, kpts1 = pred["keypoints0"], pred["keypoints1"]
    kpts0 = scale_keypoints(kpts0 + 0.5, scale0) - 0.5
    kpts1 = scale_keypoints(kpts1 + 0.5, scale1) - 0.5

    ret = {
        "image0": image0.squeeze().cpu().numpy(),
        "image1": image1.squeeze().cpu().numpy(),
        "keypoints0": kpts0.cpu().numpy(),
        "keypoints1": kpts1.cpu().numpy(),
    }
    if "mconf" in pred.keys():
        ret["mconf"] = pred["mconf"].cpu().numpy()
    return ret


@torch.no_grad()
def match_images(model, image_0, image_1, conf, device="cpu"):
    default_conf = {
        "grayscale": True,
        "resize_max": 1024,
        "dfactor": 8,
        "cache_images": False,
        "force_resize": False,
        "width": 320,
        "height": 240,
    }

    def preprocess(image: np.ndarray):
        image = image.astype(np.float32, copy=False)
        size = image.shape[:2][::-1]
        scale = np.array([1.0, 1.0])
        if conf.resize_max:
            scale = conf.resize_max / max(size)
            if scale < 1.0:
                size_new = tuple(int(round(x * scale)) for x in size)
                image = resize_image(image, size_new, "cv2_area")
                scale = np.array(size) / np.array(size_new)
        if conf.force_resize:
            size = image.shape[:2][::-1]
            image = resize_image(image, (conf.width, conf.height), "cv2_area")
            size_new = (conf.width, conf.height)
            scale = np.array(size) / np.array(size_new)
        if conf.grayscale:
            assert image.ndim == 2, image.shape
            image = image[None]
        else:
            image = image.transpose((2, 0, 1))  # HxWxC to CxHxW
        image = torch.from_numpy(image / 255.0).float()

        # assure that the size is divisible by dfactor
        size_new = tuple(
            map(
                lambda x: int(x // conf.dfactor * conf.dfactor),
                image.shape[-2:],
            )
        )
        image = F.resize(image, size=size_new)
        scale = np.array(size) / np.array(size_new)[::-1]
        return image, scale

    conf = SimpleNamespace(**{**default_conf, **conf})

    if len(image_0.shape) == 3 and conf.grayscale:
        image0 = cv2.cvtColor(image_0, cv2.COLOR_RGB2GRAY)
    else:
        image0 = image_0
    if len(image_0.shape) == 3 and conf.grayscale:
        image1 = cv2.cvtColor(image_1, cv2.COLOR_RGB2GRAY)
    else:
        image1 = image_1

    # comment following lines, image is always RGB mode
    # if not conf.grayscale and len(image0.shape) == 3:
    #     image0 = image0[:, :, ::-1]  # BGR to RGB
    # if not conf.grayscale and len(image1.shape) == 3:
    #     image1 = image1[:, :, ::-1]  # BGR to RGB

    image0, scale0 = preprocess(image0)
    image1, scale1 = preprocess(image1)
    image0 = image0.to(device)[None]
    image1 = image1.to(device)[None]
    pred = model({"image0": image0, "image1": image1})

    s0 = np.array(image_0.shape[:2][::-1]) / np.array(image0.shape[-2:][::-1])
    s1 = np.array(image_1.shape[:2][::-1]) / np.array(image1.shape[-2:][::-1])

    # Rescale keypoints and move to cpu
    if "keypoints0" in pred.keys() and "keypoints1" in pred.keys():
        kpts0, kpts1 = pred["keypoints0"], pred["keypoints1"]
        kpts0_origin = scale_keypoints(kpts0 + 0.5, s0) - 0.5
        kpts1_origin = scale_keypoints(kpts1 + 0.5, s1) - 0.5

        ret = {
            "image0": image0.squeeze().cpu().numpy(),
            "image1": image1.squeeze().cpu().numpy(),
            "image0_orig": image_0,
            "image1_orig": image_1,
            "keypoints0": kpts0.cpu().numpy(),
            "keypoints1": kpts1.cpu().numpy(),
            "keypoints0_orig": kpts0_origin.cpu().numpy(),
            "keypoints1_orig": kpts1_origin.cpu().numpy(),
            "mkeypoints0": kpts0.cpu().numpy(),
            "mkeypoints1": kpts1.cpu().numpy(),
            "mkeypoints0_orig": kpts0_origin.cpu().numpy(),
            "mkeypoints1_orig": kpts1_origin.cpu().numpy(),
            "original_size0": np.array(image_0.shape[:2][::-1]),
            "original_size1": np.array(image_1.shape[:2][::-1]),
            "new_size0": np.array(image0.shape[-2:][::-1]),
            "new_size1": np.array(image1.shape[-2:][::-1]),
            "scale0": s0,
            "scale1": s1,
        }
        if "mconf" in pred.keys():
            ret["mconf"] = pred["mconf"].cpu().numpy()
        elif "scores" in pred.keys():  # adapting loftr
            ret["mconf"] = pred["scores"].cpu().numpy()
        else:
            ret["mconf"] = np.ones_like(kpts0.cpu().numpy()[:, 0])
    if "lines0" in pred.keys() and "lines1" in pred.keys():
        if "keypoints0" in pred.keys() and "keypoints1" in pred.keys():
            kpts0, kpts1 = pred["keypoints0"], pred["keypoints1"]
            kpts0_origin = scale_keypoints(kpts0 + 0.5, s0) - 0.5
            kpts1_origin = scale_keypoints(kpts1 + 0.5, s1) - 0.5
            kpts0_origin = kpts0_origin.cpu().numpy()
            kpts1_origin = kpts1_origin.cpu().numpy()
        else:
            kpts0_origin, kpts1_origin = (
                None,
                None,
            )  # np.zeros([0]), np.zeros([0])
        lines0, lines1 = pred["lines0"], pred["lines1"]
        lines0_raw, lines1_raw = pred["raw_lines0"], pred["raw_lines1"]

        lines0_raw = torch.from_numpy(lines0_raw.copy())
        lines1_raw = torch.from_numpy(lines1_raw.copy())
        lines0_raw = scale_lines(lines0_raw + 0.5, s0) - 0.5
        lines1_raw = scale_lines(lines1_raw + 0.5, s1) - 0.5

        lines0 = torch.from_numpy(lines0.copy())
        lines1 = torch.from_numpy(lines1.copy())
        lines0 = scale_lines(lines0 + 0.5, s0) - 0.5
        lines1 = scale_lines(lines1 + 0.5, s1) - 0.5

        ret = {
            "image0_orig": image_0,
            "image1_orig": image_1,
            "line0": lines0_raw.cpu().numpy(),
            "line1": lines1_raw.cpu().numpy(),
            "line0_orig": lines0.cpu().numpy(),
            "line1_orig": lines1.cpu().numpy(),
            "line_keypoints0_orig": kpts0_origin,
            "line_keypoints1_orig": kpts1_origin,
        }
    del pred
    torch.cuda.empty_cache()
    return ret

@torch.no_grad()
def main(
    conf: Dict,
    pairs: Path,
    image_dir: Path,
    export_dir: Optional[Path] = None,
    matches: Optional[Path] = None,  # out
    features: Optional[Path] = None,  # out
    features_ref: Optional[Path] = None,
    max_kps: Optional[int] = 8192,
    overwrite: bool = False,
) -> Path:
    logger.info(
        "Extracting semi-dense features with configuration:" f"\n{pprint.pformat(conf)}"
    )

    if features is None:
        features = "feats_"

    if isinstance(features, Path):
        features_q = features
        if matches is None:
            raise ValueError(
                "Either provide both features and matches as Path" " or both as names."
            )
    else:
        if export_dir is None:
            raise ValueError(
                "Provide an export_dir if features and matches"
                f" are not file paths: {features}, {matches}."
            )
        features_q = Path(export_dir, f'{features}{conf["output"]}.h5')
        if matches is None:
            matches = Path(export_dir, f'{conf["output"]}_{pairs.stem}.h5')

    if features_ref is None:
        features_ref = []
    elif isinstance(features_ref, list):
        features_ref = list(features_ref)
    elif isinstance(features_ref, Path):
        features_ref = [features_ref]
    else:
        raise TypeError(str(features_ref))

    match_and_assign(
        conf, pairs, image_dir, matches, features_q, features_ref, max_kps, overwrite
    )

    return features_q, matches


if __name__ == "__main__":
    parser = argparse.ArgumentParser()
    parser.add_argument("--pairs", type=Path, required=True)
    parser.add_argument("--image_dir", type=Path, required=True)
    parser.add_argument("--export_dir", type=Path, required=True)
    parser.add_argument("--matches", type=Path, default=confs["loftr"]["output"])
    parser.add_argument(
        "--features", type=str, default="feats_" + confs["loftr"]["output"]
    )
    parser.add_argument("--conf", type=str, default="loftr", choices=list(confs.keys()))
    args = parser.parse_args()
    main(
        confs[args.conf],
        args.pairs,
        args.image_dir,
        args.export_dir,
        args.matches,
        args.features,
    )