Real-time detection of faces in video streams

M. C. Santana, O. Déniz-Suárez, Cayetano Guerra, M. Hernández-Tejera
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引用次数: 18

Abstract

This paper describes a face detection system which goes beyond traditional approaches normally designed for still images. First the video stream context is considered to apply the detector, and therefore, the resulting system is designed taking into consideration a main feature available in a video stream, i.e. temporal coherence. The resulting system builds a feature based model for each detected face, and searches them using various model information in the next frame. The results achieved for video stream processing outperform Rowley-Kanade's and Viola-Jones' solutions providing eye and face data in a reduced time with a notable correct detection rate.
实时检测视频流中的人脸
本文介绍了一种超越传统静态图像检测方法的人脸检测系统。首先考虑视频流上下文来应用检测器,因此,最终系统的设计考虑了视频流中可用的主要特征,即时间相干性。结果系统为每个检测到的人脸建立一个基于特征的模型,并在下一帧中使用各种模型信息进行搜索。视频流处理的结果优于Rowley-Kanade和Viola-Jones的解决方案,在更短的时间内提供眼睛和面部数据,并具有显著的正确检测率。
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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