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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
import logging
from typing import List, Optional, Tuple, Union
import numpy as np
import torch
from PIL.Image import Image
from sam2.modeling.sam2_base import SAM2Base
from sam2.utils.transforms import SAM2Transforms
class SAM2ImagePredictor:
def __init__(
self,
sam_model: SAM2Base,
mask_threshold=0.0,
max_hole_area=0.0,
max_sprinkle_area=0.0,
**kwargs,
) -> None:
"""
Uses SAM-2 to calculate the image embedding for an image, and then
allow repeated, efficient mask prediction given prompts.
Arguments:
sam_model (Sam-2): The model to use for mask prediction.
mask_threshold (float): The threshold to use when converting mask logits
to binary masks. Masks are thresholded at 0 by default.
max_hole_area (int): If max_hole_area > 0, we fill small holes in up to
the maximum area of max_hole_area in low_res_masks.
max_sprinkle_area (int): If max_sprinkle_area > 0, we remove small sprinkles up to
the maximum area of max_sprinkle_area in low_res_masks.
"""
super().__init__()
self.model = sam_model
self._transforms = SAM2Transforms(
resolution=self.model.image_size,
mask_threshold=mask_threshold,
max_hole_area=max_hole_area,
max_sprinkle_area=max_sprinkle_area,
)
# Predictor state
self._is_image_set = False
self._features = None
self._orig_hw = None
# Whether the predictor is set for single image or a batch of images
self._is_batch = False
# Predictor config
self.mask_threshold = mask_threshold
# Spatial dim for backbone feature maps
self._bb_feat_sizes = [
(256, 256),
(128, 128),
(64, 64),
]
@classmethod
def from_pretrained(cls, model_id: str, cache_dir, device) -> "SAM2ImagePredictor":
"""
Load a pretrained model from the Hugging Face hub.
Arguments:
model_id (str): The Hugging Face repository ID.
**kwargs: Additional arguments to pass to the model constructor.
Returns:
(SAM2ImagePredictor): The loaded model.
"""
from sam2.build_sam import build_sam2_hf
sam_model = build_sam2_hf(model_id, cache_dir, device)
return cls(sam_model)
@torch.no_grad()
def set_image(
self,
image: Union[np.ndarray, Image],
) -> None:
"""
Calculates the image embeddings for the provided image, allowing
masks to be predicted with the 'predict' method.
Arguments:
image (np.ndarray or PIL Image): The input image to embed in RGB format. The image should be in HWC format if np.ndarray, or WHC format if PIL Image
with pixel values in [0, 255].
image_format (str): The color format of the image, in ['RGB', 'BGR'].
"""
self.reset_predictor()
# Transform the image to the form expected by the model
if isinstance(image, np.ndarray):
logging.info("For numpy array image, we assume (HxWxC) format")
self._orig_hw = [image.shape[:2]]
elif isinstance(image, Image):
w, h = image.size
self._orig_hw = [(h, w)]
else:
raise NotImplementedError("Image format not supported")
input_image = self._transforms(image)
input_image = input_image[None, ...].to(self.device)
assert (
len(input_image.shape) == 4 and input_image.shape[1] == 3
), f"input_image must be of size 1x3xHxW, got {input_image.shape}"
logging.info("Computing image embeddings for the provided image...")
backbone_out = self.model.forward_image(input_image)
_, vision_feats, _, _ = self.model._prepare_backbone_features(backbone_out)
# Add no_mem_embed, which is added to the lowest rest feat. map during training on videos
if self.model.directly_add_no_mem_embed:
vision_feats[-1] = vision_feats[-1] + self.model.no_mem_embed
feats = [
feat.permute(1, 2, 0).view(1, -1, *feat_size)
for feat, feat_size in zip(vision_feats[::-1], self._bb_feat_sizes[::-1])
][::-1]
self._features = {"image_embed": feats[-1], "high_res_feats": feats[:-1]}
self._is_image_set = True
logging.info("Image embeddings computed.")
@torch.no_grad()
def set_image_batch(
self,
image_list: List[Union[np.ndarray]],
) -> None:
"""
Calculates the image embeddings for the provided image batch, allowing
masks to be predicted with the 'predict_batch' method.
Arguments:
image_list (List[np.ndarray]): The input images to embed in RGB format. The image should be in HWC format if np.ndarray
with pixel values in [0, 255].
"""
self.reset_predictor()
assert isinstance(image_list, list)
self._orig_hw = []
for image in image_list:
assert isinstance(
image, np.ndarray
), "Images are expected to be an np.ndarray in RGB format, and of shape HWC"
self._orig_hw.append(image.shape[:2])
# Transform the image to the form expected by the model
img_batch = self._transforms.forward_batch(image_list)
img_batch = img_batch.to(self.device)
batch_size = img_batch.shape[0]
assert (
len(img_batch.shape) == 4 and img_batch.shape[1] == 3
), f"img_batch must be of size Bx3xHxW, got {img_batch.shape}"
logging.info("Computing image embeddings for the provided images...")
backbone_out = self.model.forward_image(img_batch)
_, vision_feats, _, _ = self.model._prepare_backbone_features(backbone_out)
# Add no_mem_embed, which is added to the lowest rest feat. map during training on videos
if self.model.directly_add_no_mem_embed:
vision_feats[-1] = vision_feats[-1] + self.model.no_mem_embed
feats = [
feat.permute(1, 2, 0).view(batch_size, -1, *feat_size)
for feat, feat_size in zip(vision_feats[::-1], self._bb_feat_sizes[::-1])
][::-1]
self._features = {"image_embed": feats[-1], "high_res_feats": feats[:-1]}
self._is_image_set = True
self._is_batch = True
logging.info("Image embeddings computed.")
def predict_batch(
self,
point_coords_batch: List[np.ndarray] = None,
point_labels_batch: List[np.ndarray] = None,
box_batch: List[np.ndarray] = None,
mask_input_batch: List[np.ndarray] = None,
multimask_output: bool = True,
return_logits: bool = False,
normalize_coords=True,
) -> Tuple[List[np.ndarray], List[np.ndarray], List[np.ndarray]]:
"""This function is very similar to predict(...), however it is used for batched mode, when the model is expected to generate predictions on multiple images.
It returns a tuple of lists of masks, ious, and low_res_masks_logits.
"""
assert self._is_batch, "This function should only be used when in batched mode"
if not self._is_image_set:
raise RuntimeError(
"An image must be set with .set_image_batch(...) before mask prediction."
)
num_images = len(self._features["image_embed"])
all_masks = []
all_ious = []
all_low_res_masks = []
for img_idx in range(num_images):
# Transform input prompts
point_coords = (
point_coords_batch[img_idx] if point_coords_batch is not None else None
)
point_labels = (
point_labels_batch[img_idx] if point_labels_batch is not None else None
)
box = box_batch[img_idx] if box_batch is not None else None
mask_input = (
mask_input_batch[img_idx] if mask_input_batch is not None else None
)
mask_input, unnorm_coords, labels, unnorm_box = self._prep_prompts(
point_coords,
point_labels,
box,
mask_input,
normalize_coords,
img_idx=img_idx,
)
masks, iou_predictions, low_res_masks = self._predict(
unnorm_coords,
labels,
unnorm_box,
mask_input,
multimask_output,
return_logits=return_logits,
img_idx=img_idx,
)
masks_np = masks.squeeze(0).float().detach().cpu().numpy()
iou_predictions_np = (
iou_predictions.squeeze(0).float().detach().cpu().numpy()
)
low_res_masks_np = low_res_masks.squeeze(0).float().detach().cpu().numpy()
all_masks.append(masks_np)
all_ious.append(iou_predictions_np)
all_low_res_masks.append(low_res_masks_np)
return all_masks, all_ious, all_low_res_masks
def predict(
self,
point_coords: Optional[np.ndarray] = None,
point_labels: Optional[np.ndarray] = None,
box: Optional[np.ndarray] = None,
mask_input: Optional[np.ndarray] = None,
multimask_output: bool = True,
return_logits: bool = False,
normalize_coords=True,
) -> Tuple[np.ndarray, np.ndarray, np.ndarray]:
"""
Predict masks for the given input prompts, using the currently set image.
Arguments:
point_coords (np.ndarray or None): A Nx2 array of point prompts to the
model. Each point is in (X,Y) in pixels.
point_labels (np.ndarray or None): A length N array of labels for the
point prompts. 1 indicates a foreground point and 0 indicates a
background point.
box (np.ndarray or None): A length 4 array given a box prompt to the
model, in XYXY format.
mask_input (np.ndarray): A low resolution mask input to the model, typically
coming from a previous prediction iteration. Has form 1xHxW, where
for SAM, H=W=256.
multimask_output (bool): If true, the model will return three masks.
For ambiguous input prompts (such as a single click), this will often
produce better masks than a single prediction. If only a single
mask is needed, the model's predicted quality score can be used
to select the best mask. For non-ambiguous prompts, such as multiple
input prompts, multimask_output=False can give better results.
return_logits (bool): If true, returns un-thresholded masks logits
instead of a binary mask.
normalize_coords (bool): If true, the point coordinates will be normalized to the range [0,1] and point_coords is expected to be wrt. image dimensions.
Returns:
(np.ndarray): The output masks in CxHxW format, where C is the
number of masks, and (H, W) is the original image size.
(np.ndarray): An array of length C containing the model's
predictions for the quality of each mask.
(np.ndarray): An array of shape CxHxW, where C is the number
of masks and H=W=256. These low resolution logits can be passed to
a subsequent iteration as mask input.
"""
if not self._is_image_set:
raise RuntimeError(
"An image must be set with .set_image(...) before mask prediction."
)
# Transform input prompts
mask_input, unnorm_coords, labels, unnorm_box = self._prep_prompts(
point_coords, point_labels, box, mask_input, normalize_coords
)
masks, iou_predictions, low_res_masks = self._predict(
unnorm_coords,
labels,
unnorm_box,
mask_input,
multimask_output,
return_logits=return_logits,
)
masks_np = masks.squeeze(0).float().detach().cpu().numpy()
iou_predictions_np = iou_predictions.squeeze(0).float().detach().cpu().numpy()
low_res_masks_np = low_res_masks.squeeze(0).float().detach().cpu().numpy()
return masks_np, iou_predictions_np, low_res_masks_np
def _prep_prompts(
self, point_coords, point_labels, box, mask_logits, normalize_coords, img_idx=-1
):
unnorm_coords, labels, unnorm_box, mask_input = None, None, None, None
if point_coords is not None:
assert (
point_labels is not None
), "point_labels must be supplied if point_coords is supplied."
point_coords = torch.as_tensor(
point_coords, dtype=torch.float, device=self.device
)
unnorm_coords = self._transforms.transform_coords(
point_coords, normalize=normalize_coords, orig_hw=self._orig_hw[img_idx]
)
labels = torch.as_tensor(point_labels, dtype=torch.int, device=self.device)
if len(unnorm_coords.shape) == 2:
unnorm_coords, labels = unnorm_coords[None, ...], labels[None, ...]
if box is not None:
box = torch.as_tensor(box, dtype=torch.float, device=self.device)
unnorm_box = self._transforms.transform_boxes(
box, normalize=normalize_coords, orig_hw=self._orig_hw[img_idx]
) # Bx2x2
if mask_logits is not None:
mask_input = torch.as_tensor(
mask_logits, dtype=torch.float, device=self.device
)
if len(mask_input.shape) == 3:
mask_input = mask_input[None, :, :, :]
return mask_input, unnorm_coords, labels, unnorm_box
@torch.no_grad()
def _predict(
self,
point_coords: Optional[torch.Tensor],
point_labels: Optional[torch.Tensor],
boxes: Optional[torch.Tensor] = None,
mask_input: Optional[torch.Tensor] = None,
multimask_output: bool = True,
return_logits: bool = False,
img_idx: int = -1,
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
"""
Predict masks for the given input prompts, using the currently set image.
Input prompts are batched torch tensors and are expected to already be
transformed to the input frame using SAM2Transforms.
Arguments:
point_coords (torch.Tensor or None): A BxNx2 array of point prompts to the
model. Each point is in (X,Y) in pixels.
point_labels (torch.Tensor or None): A BxN array of labels for the
point prompts. 1 indicates a foreground point and 0 indicates a
background point.
boxes (np.ndarray or None): A Bx4 array given a box prompt to the
model, in XYXY format.
mask_input (np.ndarray): A low resolution mask input to the model, typically
coming from a previous prediction iteration. Has form Bx1xHxW, where
for SAM, H=W=256. Masks returned by a previous iteration of the
predict method do not need further transformation.
multimask_output (bool): If true, the model will return three masks.
For ambiguous input prompts (such as a single click), this will often
produce better masks than a single prediction. If only a single
mask is needed, the model's predicted quality score can be used
to select the best mask. For non-ambiguous prompts, such as multiple
input prompts, multimask_output=False can give better results.
return_logits (bool): If true, returns un-thresholded masks logits
instead of a binary mask.
Returns:
(torch.Tensor): The output masks in BxCxHxW format, where C is the
number of masks, and (H, W) is the original image size.
(torch.Tensor): An array of shape BxC containing the model's
predictions for the quality of each mask.
(torch.Tensor): An array of shape BxCxHxW, where C is the number
of masks and H=W=256. These low res logits can be passed to
a subsequent iteration as mask input.
"""
if not self._is_image_set:
raise RuntimeError(
"An image must be set with .set_image(...) before mask prediction."
)
if point_coords is not None:
concat_points = (point_coords, point_labels)
else:
concat_points = None
# Embed prompts
if boxes is not None:
box_coords = boxes.reshape(-1, 2, 2)
box_labels = torch.tensor([[2, 3]], dtype=torch.int, device=boxes.device)
box_labels = box_labels.repeat(boxes.size(0), 1)
# we merge "boxes" and "points" into a single "concat_points" input (where
# boxes are added at the beginning) to sam_prompt_encoder
if concat_points is not None:
concat_coords = torch.cat([box_coords, concat_points[0]], dim=1)
concat_labels = torch.cat([box_labels, concat_points[1]], dim=1)
concat_points = (concat_coords, concat_labels)
else:
concat_points = (box_coords, box_labels)
sparse_embeddings, dense_embeddings = self.model.sam_prompt_encoder(
points=concat_points,
boxes=None,
masks=mask_input,
)
# Predict masks
batched_mode = (
concat_points is not None and concat_points[0].shape[0] > 1
) # multi object prediction
high_res_features = [
feat_level[img_idx].unsqueeze(0)
for feat_level in self._features["high_res_feats"]
]
low_res_masks, iou_predictions, _, _ = self.model.sam_mask_decoder(
image_embeddings=self._features["image_embed"][img_idx].unsqueeze(0),
image_pe=self.model.sam_prompt_encoder.get_dense_pe(),
sparse_prompt_embeddings=sparse_embeddings,
dense_prompt_embeddings=dense_embeddings,
multimask_output=multimask_output,
repeat_image=batched_mode,
high_res_features=high_res_features,
)
# Upscale the masks to the original image resolution
masks = self._transforms.postprocess_masks(
low_res_masks, self._orig_hw[img_idx]
)
low_res_masks = torch.clamp(low_res_masks, -32.0, 32.0)
if not return_logits:
masks = masks > self.mask_threshold
return masks, iou_predictions, low_res_masks
def get_image_embedding(self) -> torch.Tensor:
"""
Returns the image embeddings for the currently set image, with
shape 1xCxHxW, where C is the embedding dimension and (H,W) are
the embedding spatial dimension of SAM (typically C=256, H=W=64).
"""
if not self._is_image_set:
raise RuntimeError(
"An image must be set with .set_image(...) to generate an embedding."
)
assert (
self._features is not None
), "Features must exist if an image has been set."
return self._features["image_embed"]
@property
def device(self) -> torch.device:
return self.model.device
def reset_predictor(self) -> None:
"""
Resets the image embeddings and other state variables.
"""
self._is_image_set = False
self._features = None
self._orig_hw = None
self._is_batch = False
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