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import sys
from pathlib import Path
import subprocess
import torch
import logging
from ..utils.base_model import BaseModel
example_path = Path(__file__).parent / "../../third_party/example"
sys.path.append(str(example_path))
# import some modules here
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
logger = logging.getLogger(__name__)
class Example(BaseModel):
# change to your default configs
default_conf = {
"name": "example",
"keypoint_threshold": 0.1,
"max_keypoints": 2000,
"model_name": "model.pth",
}
required_inputs = ["image"]
def _init(self, conf):
# set checkpoints paths if needed
model_path = example_path / "checkpoints" / f'{conf["model_name"]}'
if not model_path.exists():
logger.info(f"No model found at {model_path}")
# init model
self.net = callable
# self.net = ExampleNet(is_test=True)
state_dict = torch.load(model_path, map_location="cpu")
self.net.load_state_dict(state_dict["model_state"])
logger.info(f"Load example model done.")
def _forward(self, data):
# data: dict, keys: 'image'
# image color mode: RGB
# image value range in [0, 1]
image = data["image"]
# B: batch size, N: number of keypoints
# keypoints shape: B x N x 2, type: torch tensor
# scores shape: B x N, type: torch tensor
# descriptors shape: B x 128 x N, type: torch tensor
keypoints, scores, descriptors = self.net(image)
return {
"keypoints": keypoints,
"scores": scores,
"descriptors": descriptors,
}
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