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import copy
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import cv2
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import matplotlib.pyplot as plt
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import numpy as np
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class GMC:
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def __init__(self, method='sparseOptFlow', downscale=2, verbose=None):
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super().__init__()
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self.method = method
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self.downscale = max(1, int(downscale))
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if self.method == 'orb':
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self.detector = cv2.FastFeatureDetector_create(20)
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self.extractor = cv2.ORB_create()
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self.matcher = cv2.BFMatcher(cv2.NORM_HAMMING)
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elif self.method == 'sift':
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self.detector = cv2.SIFT_create(nOctaveLayers=3, contrastThreshold=0.02, edgeThreshold=20)
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self.extractor = cv2.SIFT_create(nOctaveLayers=3, contrastThreshold=0.02, edgeThreshold=20)
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self.matcher = cv2.BFMatcher(cv2.NORM_L2)
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elif self.method == 'ecc':
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number_of_iterations = 5000
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termination_eps = 1e-6
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self.warp_mode = cv2.MOTION_EUCLIDEAN
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self.criteria = (cv2.TERM_CRITERIA_EPS | cv2.TERM_CRITERIA_COUNT, number_of_iterations, termination_eps)
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elif self.method == 'sparseOptFlow':
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self.feature_params = dict(maxCorners=1000,
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qualityLevel=0.01,
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minDistance=1,
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blockSize=3,
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useHarrisDetector=False,
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k=0.04)
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# self.gmc_file = open('GMC_results.txt', 'w')
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elif self.method in ['file', 'files']:
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seqName = verbose[0]
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ablation = verbose[1]
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if ablation:
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filePath = r'tracker/GMC_files/MOT17_ablation'
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else:
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filePath = r'tracker/GMC_files/MOTChallenge'
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if '-FRCNN' in seqName:
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seqName = seqName[:-6]
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elif '-DPM' in seqName or '-SDP' in seqName:
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seqName = seqName[:-4]
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self.gmcFile = open(f'{filePath}/GMC-{seqName}.txt')
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if self.gmcFile is None:
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raise ValueError(f'Error: Unable to open GMC file in directory:{filePath}')
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elif self.method in ['none', 'None']:
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self.method = 'none'
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else:
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raise ValueError(f'Error: Unknown CMC method:{method}')
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self.prevFrame = None
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self.prevKeyPoints = None
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self.prevDescriptors = None
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self.initializedFirstFrame = False
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def apply(self, raw_frame, detections=None):
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if self.method in ['orb', 'sift']:
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return self.applyFeaures(raw_frame, detections)
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elif self.method == 'ecc':
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return self.applyEcc(raw_frame, detections)
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elif self.method == 'sparseOptFlow':
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return self.applySparseOptFlow(raw_frame, detections)
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elif self.method == 'file':
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return self.applyFile(raw_frame, detections)
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elif self.method == 'none':
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return np.eye(2, 3)
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else:
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return np.eye(2, 3)
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def applyEcc(self, raw_frame, detections=None):
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# Initialize
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height, width, _ = raw_frame.shape
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frame = cv2.cvtColor(raw_frame, cv2.COLOR_BGR2GRAY)
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H = np.eye(2, 3, dtype=np.float32)
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# Downscale image (TODO: consider using pyramids)
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if self.downscale > 1.0:
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frame = cv2.GaussianBlur(frame, (3, 3), 1.5)
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frame = cv2.resize(frame, (width // self.downscale, height // self.downscale))
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width = width // self.downscale
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height = height // self.downscale
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# Handle first frame
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if not self.initializedFirstFrame:
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# Initialize data
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self.prevFrame = frame.copy()
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# Initialization done
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self.initializedFirstFrame = True
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return H
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# Run the ECC algorithm. The results are stored in warp_matrix.
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# (cc, H) = cv2.findTransformECC(self.prevFrame, frame, H, self.warp_mode, self.criteria)
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try:
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(cc, H) = cv2.findTransformECC(self.prevFrame, frame, H, self.warp_mode, self.criteria, None, 1)
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except Exception as e:
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print(f'Warning: find transform failed. Set warp as identity {e}')
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return H
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def applyFeaures(self, raw_frame, detections=None):
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# Initialize
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height, width, _ = raw_frame.shape
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frame = cv2.cvtColor(raw_frame, cv2.COLOR_BGR2GRAY)
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H = np.eye(2, 3)
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# Downscale image (TODO: consider using pyramids)
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if self.downscale > 1.0:
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# frame = cv2.GaussianBlur(frame, (3, 3), 1.5)
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frame = cv2.resize(frame, (width // self.downscale, height // self.downscale))
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width = width // self.downscale
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height = height // self.downscale
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# find the keypoints
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mask = np.zeros_like(frame)
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# mask[int(0.05 * height): int(0.95 * height), int(0.05 * width): int(0.95 * width)] = 255
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mask[int(0.02 * height):int(0.98 * height), int(0.02 * width):int(0.98 * width)] = 255
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if detections is not None:
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for det in detections:
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tlbr = (det[:4] / self.downscale).astype(np.int_)
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mask[tlbr[1]:tlbr[3], tlbr[0]:tlbr[2]] = 0
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keypoints = self.detector.detect(frame, mask)
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# compute the descriptors
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keypoints, descriptors = self.extractor.compute(frame, keypoints)
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# Handle first frame
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if not self.initializedFirstFrame:
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# Initialize data
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self.prevFrame = frame.copy()
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self.prevKeyPoints = copy.copy(keypoints)
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self.prevDescriptors = copy.copy(descriptors)
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# Initialization done
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self.initializedFirstFrame = True
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return H
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# Match descriptors.
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knnMatches = self.matcher.knnMatch(self.prevDescriptors, descriptors, 2)
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# Filtered matches based on smallest spatial distance
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matches = []
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spatialDistances = []
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maxSpatialDistance = 0.25 * np.array([width, height])
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# Handle empty matches case
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if len(knnMatches) == 0:
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# Store to next iteration
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self.prevFrame = frame.copy()
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self.prevKeyPoints = copy.copy(keypoints)
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self.prevDescriptors = copy.copy(descriptors)
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return H
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for m, n in knnMatches:
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if m.distance < 0.9 * n.distance:
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prevKeyPointLocation = self.prevKeyPoints[m.queryIdx].pt
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currKeyPointLocation = keypoints[m.trainIdx].pt
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spatialDistance = (prevKeyPointLocation[0] - currKeyPointLocation[0],
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prevKeyPointLocation[1] - currKeyPointLocation[1])
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if (np.abs(spatialDistance[0]) < maxSpatialDistance[0]) and \
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(np.abs(spatialDistance[1]) < maxSpatialDistance[1]):
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spatialDistances.append(spatialDistance)
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matches.append(m)
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meanSpatialDistances = np.mean(spatialDistances, 0)
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stdSpatialDistances = np.std(spatialDistances, 0)
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inliesrs = (spatialDistances - meanSpatialDistances) < 2.5 * stdSpatialDistances
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goodMatches = []
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prevPoints = []
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currPoints = []
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for i in range(len(matches)):
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if inliesrs[i, 0] and inliesrs[i, 1]:
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goodMatches.append(matches[i])
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prevPoints.append(self.prevKeyPoints[matches[i].queryIdx].pt)
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currPoints.append(keypoints[matches[i].trainIdx].pt)
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prevPoints = np.array(prevPoints)
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currPoints = np.array(currPoints)
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# Draw the keypoint matches on the output image
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if 0:
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matches_img = np.hstack((self.prevFrame, frame))
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matches_img = cv2.cvtColor(matches_img, cv2.COLOR_GRAY2BGR)
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W = np.size(self.prevFrame, 1)
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for m in goodMatches:
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prev_pt = np.array(self.prevKeyPoints[m.queryIdx].pt, dtype=np.int_)
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curr_pt = np.array(keypoints[m.trainIdx].pt, dtype=np.int_)
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curr_pt[0] += W
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color = np.random.randint(0, 255, (3,))
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color = (int(color[0]), int(color[1]), int(color[2]))
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matches_img = cv2.line(matches_img, prev_pt, curr_pt, tuple(color), 1, cv2.LINE_AA)
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matches_img = cv2.circle(matches_img, prev_pt, 2, tuple(color), -1)
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matches_img = cv2.circle(matches_img, curr_pt, 2, tuple(color), -1)
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plt.figure()
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plt.imshow(matches_img)
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plt.show()
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# Find rigid matrix
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if (np.size(prevPoints, 0) > 4) and (np.size(prevPoints, 0) == np.size(prevPoints, 0)):
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H, inliesrs = cv2.estimateAffinePartial2D(prevPoints, currPoints, cv2.RANSAC)
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# Handle downscale
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if self.downscale > 1.0:
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H[0, 2] *= self.downscale
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H[1, 2] *= self.downscale
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else:
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print('Warning: not enough matching points')
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# Store to next iteration
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self.prevFrame = frame.copy()
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self.prevKeyPoints = copy.copy(keypoints)
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self.prevDescriptors = copy.copy(descriptors)
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return H
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def applySparseOptFlow(self, raw_frame, detections=None):
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# Initialize
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# t0 = time.time()
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height, width, _ = raw_frame.shape
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frame = cv2.cvtColor(raw_frame, cv2.COLOR_BGR2GRAY)
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H = np.eye(2, 3)
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# Downscale image
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if self.downscale > 1.0:
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# frame = cv2.GaussianBlur(frame, (3, 3), 1.5)
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frame = cv2.resize(frame, (width // self.downscale, height // self.downscale))
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# find the keypoints
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keypoints = cv2.goodFeaturesToTrack(frame, mask=None, **self.feature_params)
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# Handle first frame
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if not self.initializedFirstFrame:
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# Initialize data
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self.prevFrame = frame.copy()
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self.prevKeyPoints = copy.copy(keypoints)
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# Initialization done
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self.initializedFirstFrame = True
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return H
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# find correspondences
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matchedKeypoints, status, err = cv2.calcOpticalFlowPyrLK(self.prevFrame, frame, self.prevKeyPoints, None)
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# leave good correspondences only
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prevPoints = []
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currPoints = []
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for i in range(len(status)):
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if status[i]:
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prevPoints.append(self.prevKeyPoints[i])
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currPoints.append(matchedKeypoints[i])
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prevPoints = np.array(prevPoints)
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currPoints = np.array(currPoints)
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# Find rigid matrix
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if (np.size(prevPoints, 0) > 4) and (np.size(prevPoints, 0) == np.size(prevPoints, 0)):
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H, inliesrs = cv2.estimateAffinePartial2D(prevPoints, currPoints, cv2.RANSAC)
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# Handle downscale
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if self.downscale > 1.0:
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H[0, 2] *= self.downscale
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H[1, 2] *= self.downscale
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else:
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print('Warning: not enough matching points')
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# Store to next iteration
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self.prevFrame = frame.copy()
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self.prevKeyPoints = copy.copy(keypoints)
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# gmc_line = str(1000 * (time.time() - t0)) + "\t" + str(H[0, 0]) + "\t" + str(H[0, 1]) + "\t" + str(
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# H[0, 2]) + "\t" + str(H[1, 0]) + "\t" + str(H[1, 1]) + "\t" + str(H[1, 2]) + "\n"
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# self.gmc_file.write(gmc_line)
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return H
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def applyFile(self, raw_frame, detections=None):
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line = self.gmcFile.readline()
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tokens = line.split('\t')
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H = np.eye(2, 3, dtype=np.float_)
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H[0, 0] = float(tokens[1])
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H[0, 1] = float(tokens[2])
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H[0, 2] = float(tokens[3])
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H[1, 0] = float(tokens[4])
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H[1, 1] = float(tokens[5])
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H[1, 2] = float(tokens[6])
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return H
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