Pedestrian detection method based on self-learning

Tong Liu, Jianghua Cheng, Mingsheng Yang, Xiangyu Du, Xiaobing Luo, Liang Zhang
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引用次数: 1

Abstract

Vision-based pedestrian detection technology is widely used in security surveillance, such as transportation, prisons, and important places. Security monitoring requires pedestrian detection not only to be accurate and reliable, but also to meet the needs of real-time monitoring, and the false alarm rate is low. The existing pedestrian learning method based on deep learning has high reliability, but the timeliness cannot meet the monitoring requirements. Traditional pedestrian detection methods are time-sensitive, but false alarm rates tend to be higher. This paper proposes a self-learning pedestrian detection method, combined with motion detection, HOG feature extraction, and SVM classification for preliminary pedestrian detection. The false alarms caused during the pedestrian detection process are manually confirmed, and then the system automatically detects the false alarm image at a specific time. Self-learning, retraining the classifier, so as to continuously reduce the pedestrian detection false alarm rate and improve the pedestrian detection performance index through self-learning during the system operation, and the timeliness can meet the needs of video surveillance. Experiments show that the false alarm rate of this method is low, timeliness is high, and the recognition rate is also high.
基于自学习的行人检测方法
基于视觉的行人检测技术广泛应用于交通、监狱、重要场所等安防监控中。安防监控要求行人检测不仅要准确可靠,而且要满足实时监控的需要,虚警率要低。现有基于深度学习的行人学习方法可靠性高,但实时性不能满足监控要求。传统的行人检测方法对时间敏感,但虚警率往往较高。本文提出了一种自学习行人检测方法,结合运动检测、HOG特征提取和SVM分类对行人进行初步检测。对行人检测过程中产生的虚警进行人工确认,然后系统在特定时间自动检测出虚警图像。自学习,对分类器进行再训练,从而在系统运行过程中通过自学习不断降低行人检测虚警率,提高行人检测性能指标,及时性能够满足视频监控的需求。实验表明,该方法的虚警率低,及时性高,识别率也高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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