文章作者:Tyan
博客:noahsnail.com | CSDN | 简书
非极大值抑制,简称为NMS算法,英文为Non-Maximum Suppression。其思想是搜素局部最大值,抑制极大值。NMS算法在不同应用中的具体实现不太一样,但思想是一样的。非极大值抑制,在计算机视觉任务中得到了广泛的应用,例如边缘检测、人脸检测、目标检测(DPM,YOLO,SSD,Faster R-CNN)等。
以目标检测为例:目标检测的过程中在同一目标的位置上会产生大量的候选框,这些候选框相互之间可能会有重叠,此时我们需要利用非极大值抑制找到最佳的目标边界框,消除冗余的边界框。Demo如下图:
左图是人脸检测的候选框结果,每个边界框有一个置信度得分(confidence score),如果不使用非极大值抑制,就会有多个候选框出现。右图是使用非极大值抑制之后的结果,符合我们人脸检测的预期结果。
前提:目标边界框列表及其对应的置信度得分列表,设定阈值,阈值用来删除重叠较大的边界框。
IoU:intersection-over-union,即两个边界框的交集部分除以它们的并集。
非极大值抑制的流程如下:
Python代码如下:
#!/usr/bin/env python# _*_ coding: utf-8 _*_ import cv2import numpy as np """ Non-max Suppression Algorithm @param list Object candidate bounding boxes @param list Confidence score of bounding boxes @param float IoU threshold @return Rest boxes after nms operation"""def nms(bounding_boxes, confidence_score, threshold): # If no bounding boxes, return empty list if len(bounding_boxes) == 0: return [], [] # Bounding boxes boxes = np.array(bounding_boxes) # coordinates of bounding boxes start_x = boxes[:, 0] start_y = boxes[:, 1] end_x = boxes[:, 2] end_y = boxes[:, 3] # Confidence scores of bounding boxes score = np.array(confidence_score) # Picked bounding boxes picked_boxes = [] picked_score = [] # Compute areas of bounding boxes areas = (end_x - start_x + 1) * (end_y - start_y + 1) # Sort by confidence score of bounding boxes order = np.argsort(score) # Iterate bounding boxes while order.size > 0: # The index of largest confidence score index = order[-1] # Pick the bounding box with largest confidence score picked_boxes.append(bounding_boxes[index]) picked_score.append(confidence_score[index]) # Compute ordinates of intersection-over-union(IOU) x1 = np.maximum(start_x[index], start_x[order[:-1]]) x2 = np.minimum(end_x[index], end_x[order[:-1]]) y1 = np.maximum(start_y[index], start_y[order[:-1]]) y2 = np.minimum(end_y[index], end_y[order[:-1]]) # Compute areas of intersection-over-union w = np.maximum(0.0, x2 - x1 + 1) h = np.maximum(0.0, y2 - y1 + 1) intersection = w * h # Compute the ratio between intersection and union ratio = intersection / (areas[index] + areas[order[:-1]] - intersection) left = np.where(ratio < threshold) order = order[left] return picked_boxes, picked_score # Image nameimage_name = 'nms.jpg' # Bounding boxesbounding_boxes = [(187, 82, 337, 317), (150, 67, 305, 282), (246, 121, 368, 304)]confidence_score = [0.9, 0.75, 0.8] # Read imageimage = cv2.imread(image_name) # Copy image as originalorg = image.copy() # Draw parametersfont = cv2.FONT_HERSHEY_SIMPLEXfont_scale = 1thickness = 2 # IoU thresholdthreshold = 0.4 # Draw bounding boxes and confidence scorefor (start_x, start_y, end_x, end_y), confidence in zip(bounding_boxes, confidence_score): (w, h), baseline = cv2.getTextSize(str(confidence), font, font_scale, thickness) cv2.rectangle(org, (start_x, start_y - (2 * baseline + 5)), (start_x + w, start_y), (0, 255, 255), -1) cv2.rectangle(org, (start_x, start_y), (end_x, end_y), (0, 255, 255), 2) cv2.putText(org, str(confidence), (start_x, start_y), font, font_scale, (0, 0, 0), thickness) # Run non-max suppression algorithmpicked_boxes, picked_score = nms(bounding_boxes, confidence_score, threshold) # Draw bounding boxes and confidence score after non-maximum supressionfor (start_x, start_y, end_x, end_y), confidence in zip(picked_boxes, picked_score): (w, h), baseline = cv2.getTextSize(str(confidence), font, font_scale, thickness) cv2.rectangle(image, (start_x, start_y - (2 * baseline + 5)), (start_x + w, start_y), (0, 255, 255), -1) cv2.rectangle(image, (start_x, start_y), (end_x, end_y), (0, 255, 255), 2) cv2.putText(image, str(confidence), (start_x, start_y), font, font_scale, (0, 0, 0), thickness) # Show imagecv2.imshow('Original', org)cv2.imshow('NMS', image)cv2.waitKey(0)
源码下载地址:https://github.com/SnailTyan/deep-learning-tools/blob/master/nms.py
记得给个Star。Demo原图在README.md
里。
实验结果: