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update: rename common -> ui
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import warnings
from pathlib import Path
from typing import Any, Dict, Optional
import cv2
import matplotlib.pyplot as plt
import numpy as np
import torch
from hloc import extract_features, logger, match_dense, match_features
from hloc.utils.viz import add_text, plot_keypoints
from .utils import (
ROOT,
filter_matches,
get_feature_model,
get_model,
load_config,
)
from .viz import display_matches, fig2im, plot_images
warnings.simplefilter("ignore")
class ImageMatchingAPI(torch.nn.Module):
default_conf = {
"ransac": {
"enable": True,
"estimator": "poselib",
"geometry": "homography",
"method": "RANSAC",
"reproj_threshold": 3,
"confidence": 0.9999,
"max_iter": 10000,
},
}
def __init__(
self,
conf: dict = {},
device: str = "cpu",
detect_threshold: float = 0.015,
max_keypoints: int = 1024,
match_threshold: float = 0.2,
) -> None:
"""
Initializes an instance of the ImageMatchingAPI class.
Args:
conf (dict): A dictionary containing the configuration parameters.
device (str, optional): The device to use for computation. Defaults to "cpu".
detect_threshold (float, optional): The threshold for detecting keypoints. Defaults to 0.015.
max_keypoints (int, optional): The maximum number of keypoints to extract. Defaults to 1024.
match_threshold (float, optional): The threshold for matching keypoints. Defaults to 0.2.
Returns:
None
"""
super().__init__()
self.device = device
self.conf = {**self.default_conf, **conf}
self._updata_config(detect_threshold, max_keypoints, match_threshold)
self._init_models()
if device == "cuda":
memory_allocated = torch.cuda.memory_allocated(device)
memory_reserved = torch.cuda.memory_reserved(device)
logger.info(
f"GPU memory allocated: {memory_allocated / 1024**2:.3f} MB"
)
logger.info(
f"GPU memory reserved: {memory_reserved / 1024**2:.3f} MB"
)
self.pred = None
def parse_match_config(self, conf):
if conf["dense"]:
return {
**conf,
"matcher": match_dense.confs.get(
conf["matcher"]["model"]["name"]
),
"dense": True,
}
else:
return {
**conf,
"feature": extract_features.confs.get(
conf["feature"]["model"]["name"]
),
"matcher": match_features.confs.get(
conf["matcher"]["model"]["name"]
),
"dense": False,
}
def _updata_config(
self,
detect_threshold: float = 0.015,
max_keypoints: int = 1024,
match_threshold: float = 0.2,
):
self.dense = self.conf["dense"]
if self.conf["dense"]:
try:
self.conf["matcher"]["model"][
"match_threshold"
] = match_threshold
except TypeError as e:
logger.error(e)
else:
self.conf["feature"]["model"]["max_keypoints"] = max_keypoints
self.conf["feature"]["model"][
"keypoint_threshold"
] = detect_threshold
self.extract_conf = self.conf["feature"]
self.match_conf = self.conf["matcher"]
def _init_models(self):
# initialize matcher
self.matcher = get_model(self.match_conf)
# initialize extractor
if self.dense:
self.extractor = None
else:
self.extractor = get_feature_model(self.conf["feature"])
def _forward(self, img0, img1):
if self.dense:
pred = match_dense.match_images(
self.matcher,
img0,
img1,
self.match_conf["preprocessing"],
device=self.device,
)
last_fixed = "{}".format( # noqa: F841
self.match_conf["model"]["name"]
)
else:
pred0 = extract_features.extract(
self.extractor, img0, self.extract_conf["preprocessing"]
)
pred1 = extract_features.extract(
self.extractor, img1, self.extract_conf["preprocessing"]
)
pred = match_features.match_images(self.matcher, pred0, pred1)
return pred
@torch.inference_mode()
def forward(
self,
img0: np.ndarray,
img1: np.ndarray,
) -> Dict[str, np.ndarray]:
"""
Forward pass of the image matching API.
Args:
img0: A 3D NumPy array of shape (H, W, C) representing the first image.
Values are in the range [0, 1] and are in RGB mode.
img1: A 3D NumPy array of shape (H, W, C) representing the second image.
Values are in the range [0, 1] and are in RGB mode.
Returns:
A dictionary containing the following keys:
- image0_orig: The original image 0.
- image1_orig: The original image 1.
- keypoints0_orig: The keypoints detected in image 0.
- keypoints1_orig: The keypoints detected in image 1.
- mkeypoints0_orig: The raw matches between image 0 and image 1.
- mkeypoints1_orig: The raw matches between image 1 and image 0.
- mmkeypoints0_orig: The RANSAC inliers in image 0.
- mmkeypoints1_orig: The RANSAC inliers in image 1.
- mconf: The confidence scores for the raw matches.
- mmconf: The confidence scores for the RANSAC inliers.
"""
# Take as input a pair of images (not a batch)
assert isinstance(img0, np.ndarray)
assert isinstance(img1, np.ndarray)
self.pred = self._forward(img0, img1)
if self.conf["ransac"]["enable"]:
self.pred = self._geometry_check(self.pred)
return self.pred
def _geometry_check(
self,
pred: Dict[str, Any],
) -> Dict[str, Any]:
"""
Filter matches using RANSAC. If keypoints are available, filter by keypoints.
If lines are available, filter by lines. If both keypoints and lines are
available, filter by keypoints.
Args:
pred (Dict[str, Any]): dict of matches, including original keypoints.
See :func:`filter_matches` for the expected keys.
Returns:
Dict[str, Any]: filtered matches
"""
pred = filter_matches(
pred,
ransac_method=self.conf["ransac"]["method"],
ransac_reproj_threshold=self.conf["ransac"]["reproj_threshold"],
ransac_confidence=self.conf["ransac"]["confidence"],
ransac_max_iter=self.conf["ransac"]["max_iter"],
)
return pred
def visualize(
self,
log_path: Optional[Path] = None,
) -> None:
"""
Visualize the matches.
Args:
log_path (Path, optional): The directory to save the images. Defaults to None.
Returns:
None
"""
if self.conf["dense"]:
postfix = str(self.conf["matcher"]["model"]["name"])
else:
postfix = "{}_{}".format(
str(self.conf["feature"]["model"]["name"]),
str(self.conf["matcher"]["model"]["name"]),
)
titles = [
"Image 0 - Keypoints",
"Image 1 - Keypoints",
]
pred: Dict[str, Any] = self.pred
image0: np.ndarray = pred["image0_orig"]
image1: np.ndarray = pred["image1_orig"]
output_keypoints: np.ndarray = plot_images(
[image0, image1], titles=titles, dpi=300
)
if (
"keypoints0_orig" in pred.keys()
and "keypoints1_orig" in pred.keys()
):
plot_keypoints([pred["keypoints0_orig"], pred["keypoints1_orig"]])
text: str = (
f"# keypoints0: {len(pred['keypoints0_orig'])} \n"
+ f"# keypoints1: {len(pred['keypoints1_orig'])}"
)
add_text(0, text, fs=15)
output_keypoints = fig2im(output_keypoints)
# plot images with raw matches
titles = [
"Image 0 - Raw matched keypoints",
"Image 1 - Raw matched keypoints",
]
output_matches_raw, num_matches_raw = display_matches(
pred, titles=titles, tag="KPTS_RAW"
)
# plot images with ransac matches
titles = [
"Image 0 - Ransac matched keypoints",
"Image 1 - Ransac matched keypoints",
]
output_matches_ransac, num_matches_ransac = display_matches(
pred, titles=titles, tag="KPTS_RANSAC"
)
if log_path is not None:
img_keypoints_path: Path = log_path / f"img_keypoints_{postfix}.png"
img_matches_raw_path: Path = (
log_path / f"img_matches_raw_{postfix}.png"
)
img_matches_ransac_path: Path = (
log_path / f"img_matches_ransac_{postfix}.png"
)
cv2.imwrite(
str(img_keypoints_path),
output_keypoints[:, :, ::-1].copy(), # RGB -> BGR
)
cv2.imwrite(
str(img_matches_raw_path),
output_matches_raw[:, :, ::-1].copy(), # RGB -> BGR
)
cv2.imwrite(
str(img_matches_ransac_path),
output_matches_ransac[:, :, ::-1].copy(), # RGB -> BGR
)
plt.close("all")
if __name__ == "__main__":
config = load_config(ROOT / "ui/config.yaml")
api = ImageMatchingAPI(config)