A gait recognition based on link model of infrared thermal imaging

Zhan-ying Lu, Yichen Xu, Zuoxiao Dai, Bei Ma
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引用次数: 5

Abstract

In the environment of complex background, load and night, the correct gait recognition rate is greatly affected in visible image, in order to solve this problem, this paper use thermal infrared imager to capture image in different body, different scene and different angle, then image threshold, frame-difference and contour auto adjustment method are used to extract human body outline, the feature vector of each joints are extracted by modified five link model, after that the extracted feature vector of each joint is passed to the SVM classifier to identify the characters. Leave-one-out method is used to calculate the correct rate of recognition, the final recognition correct rate is between 71-92%, in the night, load and other complex background scenes, the correct recognition rate is much better than visible light.
基于红外热成像链路模型的步态识别
在复杂的背景、负载和夜间环境下,可见光图像中步态的正确识别率受到很大影响,为了解决这一问题,本文利用热红外成像仪采集不同身体、不同场景和不同角度的图像,然后采用图像阈值、帧差和轮廓自动调整的方法提取人体轮廓,通过改进的五连杆模型提取各关节的特征向量。然后将提取的每个关节的特征向量传递给SVM分类器进行特征识别。采用留一法计算识别正确率,最终识别正确率在71-92%之间,在夜间、负载等复杂背景场景下,正确识别率远优于可见光。
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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