首页> 外文会议>International Conference on Audio- and Video-Based Biometric Person Authentication(AVBPA 2005); 20050720-22; Hilton Rye Town,NY(US) >Headprint - Person Reacquisition Using Visual Features of Hair in Overhead Surveillance Video
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Headprint - Person Reacquisition Using Visual Features of Hair in Overhead Surveillance Video

机译:头印-在头顶监控视频中使用头发的视觉特征进行人员重新采集

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In this paper, we present the results of our investigation of the use of the visual characteristics of human hair as a primary recognition attribute for human ID in indoor video imagery. The emerging need for unobtrusive biometrics has led to recent research interest in using the features of the face, gait, voice, and clothes, among others, for human authentication. However, the characteristics of hair have been almost completely excluded as a recognition attribute from state-of-the-art authentication methods. We contend that people often use hair as a principal visual biometric. Furthermore, hair is the part of the human body most likely to be visible to overhead surveillance cameras free of occlusion. Although hair can hardly be trusted to be a reliable long-term indicator of human identity, we show that the visual characteristics of hair can be effectively used to unobtrusively re-establish human ID in the task of short-term recognition and reac-quisition in a video-based multiple-person continuous tracking application. We propose new pixel-based and line-segment-based features designed specifically to characterize hair, and recognition schemes that use just a few training images per subject. Our results demonstrate the feasibility of this approach, which we hope can form a basis for further research in this area.
机译:在本文中,我们介绍了我们对使用人类头发的视觉特性作为室内视频图像中人类ID的主要识别属性的调查结果。对非侵入式生物识别技术的新兴需求引起了最近的研究兴趣,即使用面部,步态,声音和衣服等特征进行人类认证。然而,头发的特性几乎已被完全排除在最新的身份验证方法中,作为一种识别属性。我们认为人们经常将头发用作主要的视觉生物特征。此外,头发是人体的一部分,最容易被无遮挡的高架监视摄像机看到。尽管很难相信头发可以作为人类身份的可靠长期指标,但我们表明,在视觉识别和重新获取中,可以有效地利用头发的视觉特征来毫不干扰地重新建立人的ID。基于视频的多人连续跟踪应用程序。我们提出了专门设计用于表征头发的基于像素和基于线段的新功能,以及针对每个主题仅使用少量训练图像的识别方案。我们的结果证明了这种方法的可行性,我们希望可以为该领域的进一步研究奠定基础。

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