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Anchor-supported multi-modality hashing embedding for person re-identification

机译:锚锚支持的多模态散列,用于人员重新识别

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Person re-identification is a challenging problem in multi-camera surveillance systems. Most existing methods focus on metric learning which aims to match images from different cameras in a common metric space. Boosted hashing projection provides a new way of identifying instances based on pairwise similarity. However, both of these approaches ignore the underlying fact that images captured by two cameras should be seen as in different modalities. To address this drawback, we formulate person re-identification as an Anchor-supported Multi-Modality Hashing Embedding (AMMHE) problem, in which different projections are used to map data from different cameras into a common Hamming space. The data are projected to binary bits by using boosted hash projections, making the weighted Hamming distance of intra-class data pairs minimized and simultaneously those of inter-class data pairs maximized. We also introduce an anchor-supported dimension reduction method to avoid the computational burden of high feature dimensionality. Our approach obtains competitive performance compared with state-of-the-art methods on publicly available benchmarks.
机译:人重新鉴定是多摄像头监控系统一个具有挑战性的问题。大多数现有的方法集中在度量学习,目的是在一个共同的度量空间匹配来自不同摄像机的图像。升压散列投影提供了鉴定基于配对相似实例的新的途径。然而,这两种方法忽略了基本的事实,即由两个摄像机拍摄的图像应被视为在不同的模式。为了解决这个缺点,我们制定人重新鉴定为锚支持的多模态散列嵌入(AMMHE)的问题,其中不同的投影被用于从不同相机的数据映射到一个共同的汉明空间。的数据是通过使用升压散列突起,使得类内数据对加权汉明距离最小化,并且同时这些级间数据对最大化投影到二进制位。我们还引入了一个锚支降维的方法来避免高功能维度的计算负担。我们的方法取得竞争力的性能与可公开获得的基准状态的最先进的方法相比。

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