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import os
import pickle
import random
import shutil
import time
import warnings
from itertools import combinations
from pathlib import Path
from typing import Any, Callable, Dict, List, Optional, Tuple, Union
import cv2
import gradio as gr
import matplotlib.pyplot as plt
import numpy as np
import poselib
import psutil
from PIL import Image
from hloc import (
DEVICE,
extract_features,
extractors,
logger,
match_dense,
match_features,
matchers,
)
from hloc.utils.base_model import dynamic_load
from .viz import display_keypoints, display_matches, fig2im, plot_images
warnings.simplefilter("ignore")
ROOT = Path(__file__).parent.parent
# some default values
DEFAULT_SETTING_THRESHOLD = 0.1
DEFAULT_SETTING_MAX_FEATURES = 2000
DEFAULT_DEFAULT_KEYPOINT_THRESHOLD = 0.01
DEFAULT_ENABLE_RANSAC = True
DEFAULT_RANSAC_METHOD = "CV2_USAC_MAGSAC"
DEFAULT_RANSAC_REPROJ_THRESHOLD = 8
DEFAULT_RANSAC_CONFIDENCE = 0.999
DEFAULT_RANSAC_MAX_ITER = 10000
DEFAULT_MIN_NUM_MATCHES = 4
DEFAULT_MATCHING_THRESHOLD = 0.2
DEFAULT_SETTING_GEOMETRY = "Homography"
GRADIO_VERSION = gr.__version__.split(".")[0]
MATCHER_ZOO = None
class ModelCache:
def __init__(self, max_memory_size: int = 8):
self.max_memory_size = max_memory_size
self.current_memory_size = 0
self.model_dict = {}
self.model_timestamps = []
def cache_model(self, model_key, model_loader_func, model_conf):
if model_key in self.model_dict:
self.model_timestamps.remove(model_key)
self.model_timestamps.append(model_key)
logger.info(f"Load cached {model_key}")
return self.model_dict[model_key]
model = self._load_model_from_disk(model_loader_func, model_conf)
while self._calculate_model_memory() > self.max_memory_size:
if len(self.model_timestamps) == 0:
logger.warn(
"RAM: {}GB, MAX RAM: {}GB".format(
self._calculate_model_memory(), self.max_memory_size
)
)
break
oldest_model_key = self.model_timestamps.pop(0)
self.current_memory_size = self._calculate_model_memory()
logger.info(f"Del cached {oldest_model_key}")
del self.model_dict[oldest_model_key]
self.model_dict[model_key] = model
self.model_timestamps.append(model_key)
self.print_memory_usage()
logger.info(f"Total cached {list(self.model_dict.keys())}")
return model
def _load_model_from_disk(self, model_loader_func, model_conf):
return model_loader_func(model_conf)
def _calculate_model_memory(self, verbose=False):
host_colocation = int(os.environ.get("HOST_COLOCATION", "1"))
vm = psutil.virtual_memory()
du = shutil.disk_usage(".")
if verbose:
logger.info(
f"RAM: {vm.used / 1e9:.1f}/{vm.total / host_colocation / 1e9:.1f}GB"
)
logger.info(
f"DISK: {du.used / 1e9:.1f}/{du.total / host_colocation / 1e9:.1f}GB"
)
return vm.used / 1e9
def print_memory_usage(self):
self._calculate_model_memory(verbose=True)
model_cache = ModelCache()
def load_config(config_name: str) -> Dict[str, Any]:
"""
Load a YAML configuration file.
Args:
config_name: The path to the YAML configuration file.
Returns:
The configuration dictionary, with string keys and arbitrary values.
"""
import yaml
with open(config_name, "r") as stream:
try:
config: Dict[str, Any] = yaml.safe_load(stream)
except yaml.YAMLError as exc:
logger.error(exc)
return config
def get_matcher_zoo(
matcher_zoo: Dict[str, Dict[str, Union[str, bool]]]
) -> Dict[str, Dict[str, Union[Callable, bool]]]:
"""
Restore matcher configurations from a dictionary.
Args:
matcher_zoo: A dictionary with the matcher configurations,
where the configuration is a dictionary as loaded from a YAML file.
Returns:
A dictionary with the matcher configurations, where the configuration is
a function or a function instead of a string.
"""
matcher_zoo_restored = {}
for k, v in matcher_zoo.items():
matcher_zoo_restored[k] = parse_match_config(v)
return matcher_zoo_restored
def parse_match_config(conf):
if conf["dense"]:
return {
"matcher": match_dense.confs.get(conf["matcher"]),
"dense": True,
}
else:
return {
"feature": extract_features.confs.get(conf["feature"]),
"matcher": match_features.confs.get(conf["matcher"]),
"dense": False,
}
def get_model(match_conf: Dict[str, Any]):
"""
Load a matcher model from the provided configuration.
Args:
match_conf: A dictionary containing the model configuration.
Returns:
A matcher model instance.
"""
Model = dynamic_load(matchers, match_conf["model"]["name"])
model = Model(match_conf["model"]).eval().to(DEVICE)
return model
def get_feature_model(conf: Dict[str, Dict[str, Any]]):
"""
Load a feature extraction model from the provided configuration.
Args:
conf: A dictionary containing the model configuration.
Returns:
A feature extraction model instance.
"""
Model = dynamic_load(extractors, conf["model"]["name"])
model = Model(conf["model"]).eval().to(DEVICE)
return model
def gen_examples():
random.seed(1)
example_matchers = [
"disk+lightglue",
"xfeat(sparse)",
"dedode",
"loftr",
"disk",
"RoMa",
"d2net",
"aspanformer",
"topicfm",
"superpoint+superglue",
"superpoint+lightglue",
"superpoint+mnn",
"disk",
]
def distribute_elements(A, B):
new_B = np.array(B, copy=True).flatten()
np.random.shuffle(new_B)
new_B = np.resize(new_B, len(A))
np.random.shuffle(new_B)
return new_B.tolist()
# normal examples
def gen_images_pairs(count: int = 5):
path = str(ROOT / "datasets/sacre_coeur/mapping")
imgs_list = [
os.path.join(path, file)
for file in os.listdir(path)
if file.lower().endswith((".jpg", ".jpeg", ".png"))
]
pairs = list(combinations(imgs_list, 2))
if len(pairs) < count:
count = len(pairs)
selected = random.sample(range(len(pairs)), count)
return [pairs[i] for i in selected]
# rotated examples
def gen_rot_image_pairs(count: int = 5):
path = ROOT / "datasets/sacre_coeur/mapping"
path_rot = ROOT / "datasets/sacre_coeur/mapping_rot"
rot_list = [45, 180, 90, 225, 270]
pairs = []
for file in os.listdir(path):
if file.lower().endswith((".jpg", ".jpeg", ".png")):
for rot in rot_list:
file_rot = "{}_rot{}.jpg".format(Path(file).stem, rot)
if (path_rot / file_rot).exists():
pairs.append(
[
path / file,
path_rot / file_rot,
]
)
if len(pairs) < count:
count = len(pairs)
selected = random.sample(range(len(pairs)), count)
return [pairs[i] for i in selected]
def gen_scale_image_pairs(count: int = 5):
path = ROOT / "datasets/sacre_coeur/mapping"
path_scale = ROOT / "datasets/sacre_coeur/mapping_scale"
scale_list = [0.3, 0.5]
pairs = []
for file in os.listdir(path):
if file.lower().endswith((".jpg", ".jpeg", ".png")):
for scale in scale_list:
file_scale = "{}_scale{}.jpg".format(Path(file).stem, scale)
if (path_scale / file_scale).exists():
pairs.append(
[
path / file,
path_scale / file_scale,
]
)
if len(pairs) < count:
count = len(pairs)
selected = random.sample(range(len(pairs)), count)
return [pairs[i] for i in selected]
# extramely hard examples
def gen_image_pairs_wxbs(count: int = None):
prefix = "datasets/wxbs_benchmark/.WxBS/v1.1"
wxbs_path = ROOT / prefix
pairs = []
for catg in os.listdir(wxbs_path):
catg_path = wxbs_path / catg
if not catg_path.is_dir():
continue
for scene in os.listdir(catg_path):
scene_path = catg_path / scene
if not scene_path.is_dir():
continue
img1_path = scene_path / "01.png"
img2_path = scene_path / "02.png"
if img1_path.exists() and img2_path.exists():
pairs.append([str(img1_path), str(img2_path)])
return pairs
# image pair path
pairs = gen_images_pairs()
pairs += gen_rot_image_pairs()
pairs += gen_scale_image_pairs()
pairs += gen_image_pairs_wxbs()
match_setting_threshold = DEFAULT_SETTING_THRESHOLD
match_setting_max_features = DEFAULT_SETTING_MAX_FEATURES
detect_keypoints_threshold = DEFAULT_DEFAULT_KEYPOINT_THRESHOLD
ransac_method = DEFAULT_RANSAC_METHOD
ransac_reproj_threshold = DEFAULT_RANSAC_REPROJ_THRESHOLD
ransac_confidence = DEFAULT_RANSAC_CONFIDENCE
ransac_max_iter = DEFAULT_RANSAC_MAX_ITER
input_lists = []
dist_examples = distribute_elements(pairs, example_matchers)
for pair, mt in zip(pairs, dist_examples):
input_lists.append(
[
pair[0],
pair[1],
match_setting_threshold,
match_setting_max_features,
detect_keypoints_threshold,
mt,
# enable_ransac,
ransac_method,
ransac_reproj_threshold,
ransac_confidence,
ransac_max_iter,
]
)
return input_lists
def set_null_pred(feature_type: str, pred: dict):
if feature_type == "KEYPOINT":
pred["mmkeypoints0_orig"] = np.array([])
pred["mmkeypoints1_orig"] = np.array([])
pred["mmconf"] = np.array([])
elif feature_type == "LINE":
pred["mline_keypoints0_orig"] = np.array([])
pred["mline_keypoints1_orig"] = np.array([])
pred["H"] = None
pred["geom_info"] = {}
return pred
def _filter_matches_opencv(
kp0: np.ndarray,
kp1: np.ndarray,
method: int = cv2.RANSAC,
reproj_threshold: float = 3.0,
confidence: float = 0.99,
max_iter: int = 2000,
geometry_type: str = "Homography",
) -> Tuple[np.ndarray, np.ndarray]:
"""
Filters matches between two sets of keypoints using OpenCV's findHomography.
Args:
kp0 (np.ndarray): Array of keypoints from the first image.
kp1 (np.ndarray): Array of keypoints from the second image.
method (int, optional): RANSAC method. Defaults to "cv2.RANSAC".
reproj_threshold (float, optional): RANSAC reprojection threshold. Defaults to 3.0.
confidence (float, optional): RANSAC confidence. Defaults to 0.99.
max_iter (int, optional): RANSAC maximum iterations. Defaults to 2000.
geometry_type (str, optional): Type of geometry. Defaults to "Homography".
Returns:
Tuple[np.ndarray, np.ndarray]: Homography matrix and mask.
"""
if geometry_type == "Homography":
M, mask = cv2.findHomography(
kp0,
kp1,
method=method,
ransacReprojThreshold=reproj_threshold,
confidence=confidence,
maxIters=max_iter,
)
elif geometry_type == "Fundamental":
M, mask = cv2.findFundamentalMat(
kp0,
kp1,
method=method,
ransacReprojThreshold=reproj_threshold,
confidence=confidence,
maxIters=max_iter,
)
mask = np.array(mask.ravel().astype("bool"), dtype="bool")
return M, mask
def _filter_matches_poselib(
kp0: np.ndarray,
kp1: np.ndarray,
method: int = None, # not used
reproj_threshold: float = 3,
confidence: float = 0.99,
max_iter: int = 2000,
geometry_type: str = "Homography",
) -> dict:
"""
Filters matches between two sets of keypoints using the poselib library.
Args:
kp0 (np.ndarray): Array of keypoints from the first image.
kp1 (np.ndarray): Array of keypoints from the second image.
method (str, optional): RANSAC method. Defaults to "RANSAC".
reproj_threshold (float, optional): RANSAC reprojection threshold. Defaults to 3.
confidence (float, optional): RANSAC confidence. Defaults to 0.99.
max_iter (int, optional): RANSAC maximum iterations. Defaults to 2000.
geometry_type (str, optional): Type of geometry. Defaults to "Homography".
Returns:
dict: Information about the homography estimation.
"""
ransac_options = {
"max_iterations": max_iter,
# "min_iterations": min_iter,
"success_prob": confidence,
"max_reproj_error": reproj_threshold,
# "progressive_sampling": args.sampler.lower() == 'prosac'
}
if geometry_type == "Homography":
M, info = poselib.estimate_homography(kp0, kp1, ransac_options)
elif geometry_type == "Fundamental":
M, info = poselib.estimate_fundamental(kp0, kp1, ransac_options)
else:
raise NotImplementedError
return M, np.array(info["inliers"])
def proc_ransac_matches(
mkpts0: np.ndarray,
mkpts1: np.ndarray,
ransac_method: str = DEFAULT_RANSAC_METHOD,
ransac_reproj_threshold: float = 3.0,
ransac_confidence: float = 0.99,
ransac_max_iter: int = 2000,
geometry_type: str = "Homography",
):
if ransac_method.startswith("CV2"):
logger.info(
f"ransac_method: {ransac_method}, geometry_type: {geometry_type}"
)
return _filter_matches_opencv(
mkpts0,
mkpts1,
ransac_zoo[ransac_method],
ransac_reproj_threshold,
ransac_confidence,
ransac_max_iter,
geometry_type,
)
elif ransac_method.startswith("POSELIB"):
logger.info(
f"ransac_method: {ransac_method}, geometry_type: {geometry_type}"
)
return _filter_matches_poselib(
mkpts0,
mkpts1,
None,
ransac_reproj_threshold,
ransac_confidence,
ransac_max_iter,
geometry_type,
)
else:
raise NotImplementedError
def filter_matches(
pred: Dict[str, Any],
ransac_method: str = DEFAULT_RANSAC_METHOD,
ransac_reproj_threshold: float = DEFAULT_RANSAC_REPROJ_THRESHOLD,
ransac_confidence: float = DEFAULT_RANSAC_CONFIDENCE,
ransac_max_iter: int = DEFAULT_RANSAC_MAX_ITER,
ransac_estimator: str = None,
):
"""
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.
ransac_method (str, optional): RANSAC method. Defaults to DEFAULT_RANSAC_METHOD.
ransac_reproj_threshold (float, optional): RANSAC reprojection threshold. Defaults to DEFAULT_RANSAC_REPROJ_THRESHOLD.
ransac_confidence (float, optional): RANSAC confidence. Defaults to DEFAULT_RANSAC_CONFIDENCE.
ransac_max_iter (int, optional): RANSAC maximum iterations. Defaults to DEFAULT_RANSAC_MAX_ITER.
Returns:
Dict[str, Any]: filtered matches.
"""
mkpts0: Optional[np.ndarray] = None
mkpts1: Optional[np.ndarray] = None
feature_type: Optional[str] = None
if "mkeypoints0_orig" in pred.keys() and "mkeypoints1_orig" in pred.keys():
mkpts0 = pred["mkeypoints0_orig"]
mkpts1 = pred["mkeypoints1_orig"]
feature_type = "KEYPOINT"
elif (
"line_keypoints0_orig" in pred.keys()
and "line_keypoints1_orig" in pred.keys()
):
mkpts0 = pred["line_keypoints0_orig"]
mkpts1 = pred["line_keypoints1_orig"]
feature_type = "LINE"
else:
return set_null_pred(feature_type, pred)
if mkpts0 is None or mkpts0 is None:
return set_null_pred(feature_type, pred)
if ransac_method not in ransac_zoo.keys():
ransac_method = DEFAULT_RANSAC_METHOD
if len(mkpts0) < DEFAULT_MIN_NUM_MATCHES:
return set_null_pred(feature_type, pred)
geom_info = compute_geometry(
pred,
ransac_method=ransac_method,
ransac_reproj_threshold=ransac_reproj_threshold,
ransac_confidence=ransac_confidence,
ransac_max_iter=ransac_max_iter,
)
if "Homography" in geom_info.keys():
mask = geom_info["mask_h"]
if feature_type == "KEYPOINT":
pred["mmkeypoints0_orig"] = mkpts0[mask]
pred["mmkeypoints1_orig"] = mkpts1[mask]
pred["mmconf"] = pred["mconf"][mask]
elif feature_type == "LINE":
pred["mline_keypoints0_orig"] = mkpts0[mask]
pred["mline_keypoints1_orig"] = mkpts1[mask]
pred["H"] = np.array(geom_info["Homography"])
else:
set_null_pred(feature_type, pred)
# do not show mask
geom_info.pop("mask_h", None)
geom_info.pop("mask_f", None)
pred["geom_info"] = geom_info
return pred
def compute_geometry(
pred: Dict[str, Any],
ransac_method: str = DEFAULT_RANSAC_METHOD,
ransac_reproj_threshold: float = DEFAULT_RANSAC_REPROJ_THRESHOLD,
ransac_confidence: float = DEFAULT_RANSAC_CONFIDENCE,
ransac_max_iter: int = DEFAULT_RANSAC_MAX_ITER,
) -> Dict[str, List[float]]:
"""
Compute geometric information of matches, including Fundamental matrix,
Homography matrix, and rectification matrices (if available).
Args:
pred (Dict[str, Any]): dict of matches, including original keypoints.
ransac_method (str, optional): RANSAC method. Defaults to DEFAULT_RANSAC_METHOD.
ransac_reproj_threshold (float, optional): RANSAC reprojection threshold. Defaults to DEFAULT_RANSAC_REPROJ_THRESHOLD.
ransac_confidence (float, optional): RANSAC confidence. Defaults to DEFAULT_RANSAC_CONFIDENCE.
ransac_max_iter (int, optional): RANSAC maximum iterations. Defaults to DEFAULT_RANSAC_MAX_ITER.
Returns:
Dict[str, List[float]]: geometric information in form of a dict.
"""
mkpts0: Optional[np.ndarray] = None
mkpts1: Optional[np.ndarray] = None
if "mkeypoints0_orig" in pred.keys() and "mkeypoints1_orig" in pred.keys():
mkpts0 = pred["mkeypoints0_orig"]
mkpts1 = pred["mkeypoints1_orig"]
elif (
"line_keypoints0_orig" in pred.keys()
and "line_keypoints1_orig" in pred.keys()
):
mkpts0 = pred["line_keypoints0_orig"]
mkpts1 = pred["line_keypoints1_orig"]
if mkpts0 is not None and mkpts1 is not None:
if len(mkpts0) < 2 * DEFAULT_MIN_NUM_MATCHES:
return {}
geo_info: Dict[str, List[float]] = {}
F, mask_f = proc_ransac_matches(
mkpts0,
mkpts1,
ransac_method,
ransac_reproj_threshold,
ransac_confidence,
ransac_max_iter,
geometry_type="Fundamental",
)
if F is not None:
geo_info["Fundamental"] = F.tolist()
geo_info["mask_f"] = mask_f
H, mask_h = proc_ransac_matches(
mkpts1,
mkpts0,
ransac_method,
ransac_reproj_threshold,
ransac_confidence,
ransac_max_iter,
geometry_type="Homography",
)
h0, w0, _ = pred["image0_orig"].shape
if H is not None:
geo_info["Homography"] = H.tolist()
geo_info["mask_h"] = mask_h
try:
_, H1, H2 = cv2.stereoRectifyUncalibrated(
mkpts0.reshape(-1, 2),
mkpts1.reshape(-1, 2),
F,
imgSize=(w0, h0),
)
geo_info["H1"] = H1.tolist()
geo_info["H2"] = H2.tolist()
except cv2.error as e:
logger.error(
f"StereoRectifyUncalibrated failed, skip! error: {e}"
)
return geo_info
else:
return {}
def wrap_images(
img0: np.ndarray,
img1: np.ndarray,
geo_info: Optional[Dict[str, List[float]]],
geom_type: str,
) -> Tuple[Optional[str], Optional[Dict[str, List[float]]]]:
"""
Wraps the images based on the geometric transformation used to align them.
Args:
img0: numpy array representing the first image.
img1: numpy array representing the second image.
geo_info: dictionary containing the geometric transformation information.
geom_type: type of geometric transformation used to align the images.
Returns:
A tuple containing a base64 encoded image string and a dictionary with the transformation matrix.
"""
h0, w0, _ = img0.shape
h1, w1, _ = img1.shape
if geo_info is not None and len(geo_info) != 0:
rectified_image0 = img0
rectified_image1 = None
if "Homography" not in geo_info:
logger.warning(f"{geom_type} not exist, maybe too less matches")
return None, None
H = np.array(geo_info["Homography"])
title: List[str] = []
if geom_type == "Homography":
rectified_image1 = cv2.warpPerspective(img1, H, (w0, h0))
title = ["Image 0", "Image 1 - warped"]
elif geom_type == "Fundamental":
if geom_type not in geo_info:
logger.warning(f"{geom_type} not exist, maybe too less matches")
return None, None
else:
H1, H2 = np.array(geo_info["H1"]), np.array(geo_info["H2"])
rectified_image0 = cv2.warpPerspective(img0, H1, (w0, h0))
rectified_image1 = cv2.warpPerspective(img1, H2, (w1, h1))
title = ["Image 0 - warped", "Image 1 - warped"]
else:
print("Error: Unknown geometry type")
fig = plot_images(
[rectified_image0.squeeze(), rectified_image1.squeeze()],
title,
dpi=300,
)
return fig2im(fig), rectified_image1
else:
return None, None
def generate_warp_images(
input_image0: np.ndarray,
input_image1: np.ndarray,
matches_info: Dict[str, Any],
choice: str,
) -> Tuple[Optional[np.ndarray], Optional[np.ndarray]]:
"""
Changes the estimate of the geometric transformation used to align the images.
Args:
input_image0: First input image.
input_image1: Second input image.
matches_info: Dictionary containing information about the matches.
choice: Type of geometric transformation to use ('Homography' or 'Fundamental') or 'No' to disable.
Returns:
A tuple containing the updated images and the warpped images.
"""
if (
matches_info is None
or len(matches_info) < 1
or "geom_info" not in matches_info.keys()
):
return None, None
geom_info = matches_info["geom_info"]
warped_image = None
if choice != "No":
wrapped_image_pair, warped_image = wrap_images(
input_image0, input_image1, geom_info, choice
)
return wrapped_image_pair, warped_image
else:
return None, None
def send_to_match(state_cache: Dict[str, Any]):
"""
Send the state cache to the match function.
Args:
state_cache (Dict[str, Any]): Current state of the app.
Returns:
None
"""
if state_cache:
return (
state_cache["image0_orig"],
state_cache["wrapped_image"],
)
else:
return None, None
def run_ransac(
state_cache: Dict[str, Any],
choice_geometry_type: str,
ransac_method: str = DEFAULT_RANSAC_METHOD,
ransac_reproj_threshold: int = DEFAULT_RANSAC_REPROJ_THRESHOLD,
ransac_confidence: float = DEFAULT_RANSAC_CONFIDENCE,
ransac_max_iter: int = DEFAULT_RANSAC_MAX_ITER,
) -> Tuple[Optional[np.ndarray], Optional[Dict[str, int]]]:
"""
Run RANSAC matches and return the output images and the number of matches.
Args:
state_cache (Dict[str, Any]): Current state of the app, including the matches.
ransac_method (str, optional): RANSAC method. Defaults to DEFAULT_RANSAC_METHOD.
ransac_reproj_threshold (int, optional): RANSAC reprojection threshold. Defaults to DEFAULT_RANSAC_REPROJ_THRESHOLD.
ransac_confidence (float, optional): RANSAC confidence. Defaults to DEFAULT_RANSAC_CONFIDENCE.
ransac_max_iter (int, optional): RANSAC maximum iterations. Defaults to DEFAULT_RANSAC_MAX_ITER.
Returns:
Tuple[Optional[np.ndarray], Optional[Dict[str, int]]]: Tuple containing the output images and the number of matches.
"""
if not state_cache:
logger.info("Run Match first before Rerun RANSAC")
gr.Warning("Run Match first before Rerun RANSAC")
return None, None
t1 = time.time()
logger.info(
f"Run RANSAC matches using: {ransac_method} with threshold: {ransac_reproj_threshold}"
)
logger.info(
f"Run RANSAC matches using: {ransac_confidence} with iter: {ransac_max_iter}"
)
# if enable_ransac:
filter_matches(
state_cache,
ransac_method=ransac_method,
ransac_reproj_threshold=ransac_reproj_threshold,
ransac_confidence=ransac_confidence,
ransac_max_iter=ransac_max_iter,
)
logger.info(f"RANSAC matches done using: {time.time()-t1:.3f}s")
t1 = time.time()
# plot images with ransac matches
titles = [
"Image 0 - Ransac matched keypoints",
"Image 1 - Ransac matched keypoints",
]
output_matches_ransac, num_matches_ransac = display_matches(
state_cache, titles=titles, tag="KPTS_RANSAC"
)
logger.info(f"Display matches done using: {time.time()-t1:.3f}s")
t1 = time.time()
# compute warp images
output_wrapped, warped_image = generate_warp_images(
state_cache["image0_orig"],
state_cache["image1_orig"],
state_cache,
choice_geometry_type,
)
plt.close("all")
num_matches_raw = state_cache["num_matches_raw"]
state_cache["wrapped_image"] = warped_image
# tmp_state_cache = tempfile.NamedTemporaryFile(suffix='.pkl', delete=False)
tmp_state_cache = "output.pkl"
with open(tmp_state_cache, "wb") as f:
pickle.dump(state_cache, f)
logger.info("Dump results done!")
return (
output_matches_ransac,
{
"num_matches_raw": num_matches_raw,
"num_matches_ransac": num_matches_ransac,
},
output_wrapped,
tmp_state_cache,
)
def run_matching(
image0: np.ndarray,
image1: np.ndarray,
match_threshold: float,
extract_max_keypoints: int,
keypoint_threshold: float,
key: str,
ransac_method: str = DEFAULT_RANSAC_METHOD,
ransac_reproj_threshold: int = DEFAULT_RANSAC_REPROJ_THRESHOLD,
ransac_confidence: float = DEFAULT_RANSAC_CONFIDENCE,
ransac_max_iter: int = DEFAULT_RANSAC_MAX_ITER,
choice_geometry_type: str = DEFAULT_SETTING_GEOMETRY,
matcher_zoo: Dict[str, Any] = None,
force_resize: bool = False,
image_width: int = 640,
image_height: int = 480,
use_cached_model: bool = False,
) -> Tuple[
np.ndarray,
np.ndarray,
np.ndarray,
Dict[str, int],
Dict[str, Dict[str, Any]],
Dict[str, Dict[str, float]],
np.ndarray,
]:
"""Match two images using the given parameters.
Args:
image0 (np.ndarray): RGB image 0.
image1 (np.ndarray): RGB image 1.
match_threshold (float): match threshold.
extract_max_keypoints (int): number of keypoints to extract.
keypoint_threshold (float): keypoint threshold.
key (str): key of the model to use.
ransac_method (str, optional): RANSAC method to use.
ransac_reproj_threshold (int, optional): RANSAC reprojection threshold.
ransac_confidence (float, optional): RANSAC confidence level.
ransac_max_iter (int, optional): RANSAC maximum number of iterations.
choice_geometry_type (str, optional): setting of geometry estimation.
matcher_zoo (Dict[str, Any], optional): matcher zoo. Defaults to None.
force_resize (bool, optional): force resize. Defaults to False.
image_width (int, optional): image width. Defaults to 640.
image_height (int, optional): image height. Defaults to 480.
use_cached_model (bool, optional): use cached model. Defaults to False.
Returns:
tuple:
- output_keypoints (np.ndarray): image with keypoints.
- output_matches_raw (np.ndarray): image with raw matches.
- output_matches_ransac (np.ndarray): image with RANSAC matches.
- num_matches (Dict[str, int]): number of raw and RANSAC matches.
- configs (Dict[str, Dict[str, Any]]): match and feature extraction configs.
- geom_info (Dict[str, Dict[str, float]]): geometry information.
- output_wrapped (np.ndarray): wrapped images.
"""
# image0 and image1 is RGB mode
if image0 is None or image1 is None:
logger.error(
"Error: No images found! Please upload two images or select an example."
)
raise gr.Error(
"Error: No images found! Please upload two images or select an example."
)
# init output
output_keypoints = None
output_matches_raw = None
output_matches_ransac = None
# super slow!
if "roma" in key.lower() and DEVICE == "cpu":
gr.Info(
f"Success! Please be patient and allow for about 2-3 minutes."
f" Due to CPU inference, {key} is quiet slow."
)
t0 = time.time()
model = matcher_zoo[key]
match_conf = model["matcher"]
# update match config
match_conf["model"]["match_threshold"] = match_threshold
match_conf["model"]["max_keypoints"] = extract_max_keypoints
cache_key = "{}_{}".format(key, match_conf["model"]["name"])
if use_cached_model:
# because of the model cache, we need to update the config
matcher = model_cache.cache_model(cache_key, get_model, match_conf)
matcher.conf["max_keypoints"] = extract_max_keypoints
matcher.conf["match_threshold"] = match_threshold
logger.info(f"Loaded cached model {cache_key}")
else:
matcher = get_model(match_conf)
logger.info(f"Loading model using: {time.time()-t0:.3f}s")
t1 = time.time()
if model["dense"]:
if not match_conf["preprocessing"].get("force_resize", False):
match_conf["preprocessing"]["force_resize"] = force_resize
else:
logger.info("preprocessing is already resized")
if force_resize:
match_conf["preprocessing"]["height"] = image_height
match_conf["preprocessing"]["width"] = image_width
logger.info(f"Force resize to {image_width}x{image_height}")
pred = match_dense.match_images(
matcher, image0, image1, match_conf["preprocessing"], device=DEVICE
)
del matcher
extract_conf = None
else:
extract_conf = model["feature"]
# update extract config
extract_conf["model"]["max_keypoints"] = extract_max_keypoints
extract_conf["model"]["keypoint_threshold"] = keypoint_threshold
cache_key = "{}_{}".format(key, extract_conf["model"]["name"])
if use_cached_model:
extractor = model_cache.cache_model(
cache_key, get_feature_model, extract_conf
)
# because of the model cache, we need to update the config
extractor.conf["max_keypoints"] = extract_max_keypoints
extractor.conf["keypoint_threshold"] = keypoint_threshold
logger.info(f"Loaded cached model {cache_key}")
else:
extractor = get_feature_model(extract_conf)
if not extract_conf["preprocessing"].get("force_resize", False):
extract_conf["preprocessing"]["force_resize"] = force_resize
else:
logger.info("preprocessing is already resized")
if force_resize:
extract_conf["preprocessing"]["height"] = image_height
extract_conf["preprocessing"]["width"] = image_width
logger.info(f"Force resize to {image_width}x{image_height}")
pred0 = extract_features.extract(
extractor, image0, extract_conf["preprocessing"]
)
pred1 = extract_features.extract(
extractor, image1, extract_conf["preprocessing"]
)
pred = match_features.match_images(matcher, pred0, pred1)
del extractor
# gr.Info(
# f"Matching images done using: {time.time()-t1:.3f}s",
# )
logger.info(f"Matching images done using: {time.time()-t1:.3f}s")
t1 = time.time()
# plot images with keypoints
titles = [
"Image 0 - Keypoints",
"Image 1 - Keypoints",
]
output_keypoints = display_keypoints(pred, titles=titles)
# 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)
# if enable_ransac:
filter_matches(
pred,
ransac_method=ransac_method,
ransac_reproj_threshold=ransac_reproj_threshold,
ransac_confidence=ransac_confidence,
ransac_max_iter=ransac_max_iter,
)
# gr.Info(f"RANSAC matches done using: {time.time()-t1:.3f}s")
logger.info(f"RANSAC matches done using: {time.time()-t1:.3f}s")
t1 = time.time()
# 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"
)
# gr.Info(f"Display matches done using: {time.time()-t1:.3f}s")
logger.info(f"Display matches done using: {time.time()-t1:.3f}s")
t1 = time.time()
# plot wrapped images
output_wrapped, warped_image = generate_warp_images(
pred["image0_orig"],
pred["image1_orig"],
pred,
choice_geometry_type,
)
plt.close("all")
# gr.Info(f"In summary, total time: {time.time()-t0:.3f}s")
logger.info(f"TOTAL time: {time.time()-t0:.3f}s")
state_cache = pred
state_cache["num_matches_raw"] = num_matches_raw
state_cache["num_matches_ransac"] = num_matches_ransac
state_cache["wrapped_image"] = warped_image
# tmp_state_cache = tempfile.NamedTemporaryFile(suffix='.pkl', delete=False)
tmp_state_cache = "output.pkl"
with open(tmp_state_cache, "wb") as f:
pickle.dump(state_cache, f)
logger.info("Dump results done!")
return (
output_keypoints,
output_matches_raw,
output_matches_ransac,
{
"num_raw_matches": num_matches_raw,
"num_ransac_matches": num_matches_ransac,
},
{
"match_conf": match_conf,
"extractor_conf": extract_conf,
},
{
"geom_info": pred.get("geom_info", {}),
},
output_wrapped,
state_cache,
tmp_state_cache,
)
# @ref: https://docs.opencv.org/4.x/d0/d74/md__build_4_x-contrib_docs-lin64_opencv_doc_tutorials_calib3d_usac.html
# AND: https://opencv.org/blog/2021/06/09/evaluating-opencvs-new-ransacs
ransac_zoo = {
"POSELIB": "LO-RANSAC",
"CV2_RANSAC": cv2.RANSAC,
"CV2_USAC_MAGSAC": cv2.USAC_MAGSAC,
"CV2_USAC_DEFAULT": cv2.USAC_DEFAULT,
"CV2_USAC_FM_8PTS": cv2.USAC_FM_8PTS,
"CV2_USAC_PROSAC": cv2.USAC_PROSAC,
"CV2_USAC_FAST": cv2.USAC_FAST,
"CV2_USAC_ACCURATE": cv2.USAC_ACCURATE,
"CV2_USAC_PARALLEL": cv2.USAC_PARALLEL,
}
def rotate_image(input_path, degrees, output_path):
img = Image.open(input_path)
img_rotated = img.rotate(-degrees)
img_rotated.save(output_path)
def scale_image(input_path, scale_factor, output_path):
img = Image.open(input_path)
width, height = img.size
new_width = int(width * scale_factor)
new_height = int(height * scale_factor)
new_img = Image.new("RGB", (width, height), (0, 0, 0))
img_resized = img.resize((new_width, new_height))
position = ((width - new_width) // 2, (height - new_height) // 2)
new_img.paste(img_resized, position)
new_img.save(output_path)