一种新的人脸检测与识别混合方法

Saloni Dwivedi, Nitika Gupta
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引用次数: 3

摘要

当我们考虑基于生物特征的系统时,人脸检测和识别是一个重要的范例。在各种生物特征元素中,人脸是最可靠的,即使在远处也可以很容易地观察到,而虹膜或指纹需要近距离观察才能用于任何类型的检测和识别。人脸检测算法面临的挑战通常涉及胡须、胡须和眼镜等面部特征的存在、面部表情以及惊讶或哭泣等面部遮挡。另一个问题是照明和照明条件差,如视频监控摄像机的图像质量和图像大小,如护照控制或签证控制。复杂的背景也使得人脸检测极其困难。在本研究工作中,对人脸检测与识别的一些方法和研究范式进行了详细的研究,并对各种人脸检测与识别方法进行了评估,为基于图像的人脸检测与识别提供了一个完整的解决方案,具有更高的精度,更好的响应率,作为视频监控的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Hybrid Approach on Face Detection and Recognition
Face detection and recognition is an important paradigm when we consider the biometric based systems. Among various biometric elements, the face is the most reliable one and can be easily observed even from a distance as compared to iris or fingerprint which needs to be closely observed to use them for any kind of detection and recognition. Challenges faced by face detection algorithms often involve the presence of facial features such as beards, mustaches, and glasses, facial expressions, and occlusion of faces like surprised or crying. Another problem is illumination and poor lighting conditions such as in video surveillance cameras image quality and size of an image as in passport control or visa control. Complex backgrounds also make it extremely hard to detect faces. In this research work, a number of methods and research paradigms pertaining to face detection and recognition is studied at length and evaluate various face detection and recognition methods, provide a complete solution for image-based face detection and recognition with higher accuracy, a better response rate as an initial step for video surveillance.
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