Abstract

This paper proposes a vision-based pedestrian detection in crowded situations based on a single camera. The main idea behind our work is to fuse multiple cues so that the major challenges, such as occlusion and complex background facing in the topic of crowd detection can be successfully overcome. Based on the assumption that human heads are visible, circle Hough transform (CHT) is applied to detect all circular regions and each of which is considered as the head candidate of a pedestrian. After that, the false candidates resulting from complex background are firstly removed by using template matching algorithm. Two proposed cues called head foreground contrast (HFC) and block color relation (BCR) are incorporated for further verification. The rectangular region of every detected human is determined by the geometric relationships as well as foreground mask extracted through background subtraction process. Three videos are used to validate the proposed approach and the experimental results show that the proposed method effectively lowers the false positives at the expense of little detection rate.

Highlights

  • As wide deployment of cameras in public environment, such as airports, parting lots, and mass-transit stations, accurate estimating the number of people and locating each individual is an important issue in automation of video surveillance system

  • This paper proposes a vision-based pedestrian detection in crowded situations based on a single camera

  • Based on the assumption that human heads are visible, circle Hough transform (CHT) is applied to detect all circular regions and each of which is considered as the head candidate of a pedestrian

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Summary

Introduction

As wide deployment of cameras in public environment, such as airports, parting lots, and mass-transit stations, accurate estimating the number of people and locating each individual is an important issue in automation of video surveillance system. A normal way to use global feature is based on template matching, which constructs the human templates from different viewing angles and views. It detects human by comparing the extracted shape with the constructed templates [9, 10]. Based on the assumptions that the camera is stationary and the pedestrians are in upright standing, this paper proposes a method for detecting pedestrians in crowded situations by combining multiple features. We validate the proposed method by using three videos and give some discussion

Foreground Segmentation
Circular Hough Transform
Candidate Verification
Template Matching
Experiment
Findings
Conclusions
Full Text
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