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Identify Visual Human Signature in community via wearable camera

机译:通过可穿戴式摄像头识别社区中的视觉人类签名

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With the increasing popularity of wearable devices, information becomes much easily available. However, personal information sharing still poses great challenges because of privacy issues. We propose an idea of Visual Human Signature (VHS) which can represent each person uniquely even captured in different views/poses by wearable cameras. We evaluate the performance of multiple effective modalities for recognizing an identity, including facial appearance, visual patches, facial attributes and clothing attributes. We propose to emphasize significant dimensions and do weighted voting fusion for incorporating the modalities to improve the VHS recognition. By jointly considering multiple modalities, the VHS recognition rate can reach by 51% in frontal images and 48% in the more challenging environment and our approach can surpass the baseline with average fusion by 25% and 16%. We also introduce Multiview Celebrity Identity Dataset (MCID), a new dataset containing hundreds of identities with different view and clothing for comprehensive evaluation.
机译:随着可穿戴设备的日益普及,信息变得更加容易获得。但是,由于隐私问题,个人信息共享仍然构成巨大挑战。我们提出了一种视觉人类签名(VHS)的构想,该构想甚至可以通过可穿戴式摄像头以不同的视图/姿势捕捉到的每个人都可以唯一地代表每个人。我们评估用于识别身份的多种有效方式的性能,包括面部外观,视觉补丁,面部属性和衣服属性。我们建议强调重要的方面,并进行加权投票融合,以纳入改进VHS识别的方式。通过共同考虑多种模式,在正面图像中VHS识别率可以达到51%,在更具挑战性的环境中可以达到48%,我们的方法可以超过基线,平均融合率分别达到25%和16%。我们还将介绍多视图名人身份数据集(MCID),这是一个新数据集,其中包含数百个具有不同视图和服装的身份,以进行综合评估。

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