一种寻找视频数据中主题周期性的有效方法

Pushplata Mishra, S. Samantaray, A. Bist
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引用次数: 1

摘要

基于视频的人脸识别是近年来备受关注的新兴研究课题。在本研究中,提出了一种计算视频数据流中主题周期性的有效方法,即主题在不同时间的精确出现。该系统是人脸检测和人脸识别两项研究的结合。人脸检测是对视频帧进行的。对(4,0.5)、(8,1)、(8,2)、(16,2)和(24,3)算子的局部二值模式进行了研究和实现,其中第一个值定义相邻像素,第二个值表示中心像素到相邻像素的半径。LBP, HOG和Gradientface方法用于比较结果,也用于比较这些方法如何处理表情,姿势和照明的变化。最后提出了一种有效的方法,在考虑的情况下,使用LBP(24,3)获得了92.3%的结果,使用HOG获得了97%的结果,使用Gradientface方法获得了100%的结果。对于有噪声的图像,Gradientface的检测结果达到95.7%,与LBP和HOG相比,该方法对噪声具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An effective approach for finding periodicity of a subject in video data
Video based Face Recognition is an emerging research issue which has received much attention during the recent years. In this research, an effective approach for calculating the periodicity of a subject i.e. exact appearance of a subject in different time in video data stream is presented. The system is the combination of two studies: face detection and face recognition. The face detection is performed on video frames. There is a study and implementation of Local Binary Pattern for (4,.5), (8,1), (8,2), (16,2) and (24,3) operators where first value defines neighboring pixels and second denotes radius from centre pixel to neighbor pixels. LBP, HOG and Gradientface methods are implemented for comparing the results and also to compare to show how well these methods can handle variations in expression, pose and illumination. Finally the efficient approach evolved that gives the most effective results 92.3 % result using LBP(24,3), 97 % result using HOG and 100% results by using Gradientface method for captured videos under considerations. For noisy images, Gradientface has achieved 95.7 % result which shows that the method is robust to noise in comparison to LBP and HOG.
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