Application of Deep Learning and Speech Recognition Technology for Pedestrian Face Recognition in health sectors

Shuang Shi
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引用次数: 0

Abstract

Aiming at the problems of traditional face recognition methods, this paper proposes the application of deep learning and speech recognition technology in pedestrian face recognition. Firstly, the pedestrian face image information is collected, and the face image is decomposed by wavelet scale. The improved detail enhanced face image is obtained, and Harris adaptive threshold corner detection is performed on the enhanced face image. The feature points of pedestrian face image is extracted and matched, and the local radial transformation of points and lines and the Epipolar constraint between multiple planes are adopted. Combined with the constraints of the angle and gray approximation measure of the line features of the face image, the line matching of the face close range image is completed. The 3D line features of the pedestrian face image are extracted and fitted by using the principle of face to face intersection. Combined with the pedestrian face image recognition algorithm, the pedestrian face recognition is realized. The experimental results show that the pedestrian face recognition method based on deep learning and speech recognition technology has better performance.
深度学习与语音识别技术在行人人脸识别中的应用
针对传统人脸识别方法存在的问题,提出了深度学习与语音识别技术在行人人脸识别中的应用。首先,采集行人人脸图像信息,对人脸图像进行小波尺度分解;得到改进的细节增强人脸图像,并对增强后的人脸图像进行哈里斯自适应阈值角点检测。对行人人脸图像的特征点进行提取和匹配,采用点线局部径向变换和多平面间的Epipolar约束。结合人脸图像线条特征的角度约束和灰度逼近测度约束,完成人脸近距离图像的线条匹配。利用人脸与人脸相交的原理提取行人人脸图像的三维线特征并进行拟合。结合行人人脸图像识别算法,实现了行人人脸识别。实验结果表明,基于深度学习和语音识别技术的行人人脸识别方法具有较好的性能。
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