I am trying to detect foreground motion using opencv2 by removing static (mostly) BG elements. The method I am using is based on taking the mean of a series of images - representing the background. Then calculating one Standard deviation above and below that mean. Using that as a window to detect foreground motion.
This mechanism reportedly works well for moderately noisy environments like waving trees in the BG.
The desired output is a mask that can be used in a subsequent operation so as to minimise further processing. Specifically I am going to use optical flow detection within that region.
cv2 has made this much easier and the code is much simpler to read and understand. Thanks cv2 and numpy.
But I am having difficulty doing the correct FG detection.
Ideally I also want to erode/dilate the BG mean so as to eleminate 1 pixel noise.
The code is all togethr so you have a number of frames at the start (BGsample) to gather the BG data before FG detection starts. the only dependencies are opencv2 (> 2.3.1 ) and numpy (which should be included in > opencv 2.3.1 )
import cv2 import numpy as np if __name__ == '__main__': cap = cv2.VideoCapture(0) # webcam cv2.namedWindow("input") cv2.namedWindow("sig2") cv2.namedWindow("detect") BGsample = 20 # number of frames to gather BG samples from at start of capture success, img = cap.read() width = cap.get(3) height = cap.get(4) # can use img.shape(:-1) # cut off extra channels if success: acc = np.zeros((height, width), np.float32) # 32 bit accumulator sqacc = np.zeros((height, width), np.float32) # 32 bit accumulator for i in range(20): a = cap.read() # dummy to warm up sensor # gather BG samples for i in range(BGsample): success, img = cap.read() frame = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) cv2.accumulate(frame, acc) cv2.accumulateSquare(frame, sqacc) # M = acc/float(BGsample) sqaccM = sqacc/float(BGsample) M2 = M*M sig2 = sqaccM-M2 # have BG samples now # start FG detection key = -1 while(key < 0): success, img = cap.read() frame = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) #Ideally we create a mask for future use that is B/W for FG objects # (using erode or dilate to remove noise) # this isn't quite right level = M+sig2-frame grey = cv2.morphologyEx(level, cv2.MORPH_DILATE, cv2.getStructuringElement(cv2.MORPH_ELLIPSE, (3,3)), iterations=2) cv2.imshow("input", frame) cv2.imshow("sig2", sig2/60) cv2.imshow("detect", grey/20) key = cv2.waitKey(1) cv2.destroyAllWindows()