#!/usr/bin/env python # import the necessary packages from __future__ import print_function from imutils.object_detection import non_max_suppression from imutils import paths import numpy as np import argparse import imutils import cv2 # construct the argument parse and parse the arguments ap = argparse.ArgumentParser() ap.add_argument("-i", "--images", required=True, help="path to images directory") args = vars(ap.parse_args()) # initialize the HOG descriptor/person detector hog = cv2.HOGDescriptor() hog.setSVMDetector(cv2.HOGDescriptor_getDefaultPeopleDetector()) # loop over the image paths for imagePath in paths.list_images(args["images"]): # load the image and resize it to (1) reduce detection time # and (2) improve detection accuracy image = cv2.imread(imagePath) image = imutils.resize(image, width=min(400, image.shape[1])) orig = image.copy() # detect people in the image (rects, weights) = hog.detectMultiScale(image, winStride=(4, 4), padding=(8, 8), scale=1.05) # draw the original bounding boxes for (x, y, w, h) in rects: cv2.rectangle(orig, (x, y), (x + w, y + h), (0, 0, 255), 2) # apply non-maxima suppression to the bounding boxes using a # fairly large overlap threshold to try to maintain overlapping # boxes that are still people rects = np.array([[x, y, x + w, y + h] for (x, y, w, h) in rects]) pick = non_max_suppression(rects, probs=None, overlapThresh=0.65) # draw the final bounding boxes for (xA, yA, xB, yB) in pick: cv2.rectangle(image, (xA, yA), (xB, yB), (0, 255, 0), 2) # show some information on the number of bounding boxes filename = imagePath[imagePath.rfind("/") + 1:] print("[INFO] {}: {} original boxes, {} after suppression".format(filename, len(rects), len(pick))) # show the output images if len(pick): #cv2.imshow("Before NMS", orig) cv2.imshow("After NMS", image) cv2.waitKey(0)