Video-based framework for face recognition in video

D. Gorodnichy
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引用次数: 120

Abstract

This paper presents a number of new views and techniques claimed to be very important for the problem of face recognition in video (FRiV). First, a clear differentiation is made between photographic facial data and video-acquired facial data as being two different modalities: one providing hard biometrics, the other providing softer biometrics. Second, faces which have the resolution of at least 12 pixels between the eyes are shown to be recognizable by computers just as they are by humans. As a way to deal with low resolution and quality of each individual video frame, the paper offers to use the neuro-associative principle employed by human brain, according to which both memorization and recognition of data are done based on a flow of frames rather than on one frame: synaptic plasticity provides a way to memorize from a sequence, while the collective decision making over time is very suitable for recognition of a sequence. As a benchmark for FRiV approaches, the paper introduces the IIT-NRC video-based database of faces which consists of pairs of low-resolution video clips of unconstrained facial motions. The recognition rate of over 95%, which we achieve on this database, as well as the results obtained on real-time annotation of people on TV allow us to believe that the proposed framework brings us closer to the ultimate benchmark for the FRiV approaches, which is "if you are able to recognize a person, so should the computer".
基于视频的人脸识别框架
本文提出了一些新的观点和技术,声称对视频中的人脸识别问题非常重要。首先,照片面部数据和视频面部数据作为两种不同的模式进行了明确的区分:一种提供硬生物识别,另一种提供软生物识别。其次,两眼之间至少有12像素分辨率的人脸被证明可以被计算机识别,就像人类一样。为了解决单个视频帧的低分辨率和低质量问题,本文提出使用人脑的神经联想原理,根据该原理,数据的记忆和识别都是基于帧流而不是一帧完成的;突触可塑性提供了一种从序列中记忆的方法,而随着时间的推移的集体决策非常适合于序列的识别。作为FRiV方法的基准,本文介绍了基于IIT-NRC视频的人脸数据库,该数据库由对无约束面部运动的低分辨率视频片段组成。我们在这个数据库上达到95%以上的识别率,以及在电视上的人物实时注释上获得的结果,让我们相信所提出的框架使我们更接近FRiV方法的最终基准,即“如果你能够识别一个人,那么计算机也应该”。
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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