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首页> 外文期刊>Journal of electronic imaging >Multishot person reidentification using joint group sparse representation
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Multishot person reidentification using joint group sparse representation

机译:使用联合组稀疏表示的多重镜头人识别

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摘要

Sparse representation (SR) has shown great potential in multishot person reidentification. However, conventional SR methods usually encode each probe image individually, which ignores the prior knowledge shared by similar probe images with the same identity. Considering that probe images with the same identity are similar and can be complementary to each other, we propose a joint group sparse representation (JGSR) method to simultaneously encode a set of probe person images with the same identity. Additionally, we consider the fact that prior knowledge is also contained in the set of images with the same identity in the gallery. In JGSR, probe images with the same identity are coded on the same dictionary atoms and shared similar coefficients. Furthermore, the person reidentification performance is also improved by incorporating JGSR with k-means clustering and kernel local Fisher discriminant analysis into a unified framework. Extensive experiments on three publicly available iLIDS-VID, PRID 2011, and SAIVT-SoftBio multishot benchmark datasets were conducted and demonstrated the superior performance of the JGSR method in comparison with current state-of-the-art methods. (C) 2018 SPIE and IS&T
机译:稀疏表示(SR)在多人识别中已显示出巨大的潜力。然而,常规的SR方法通常单独编码每个探针图像,而忽略了具有相同标识的相似探针图像共享的先验知识。考虑到具有相同身份的探测图像是相似的并且可以彼此互补,我们提出了联合组稀疏表示(JGSR)方法来同时编码一组具有相同身份的探测人图像。此外,我们考虑到以下事实:画廊中具有相同标识的图像集中也包含先验知识。在JGSR中,具有相同标识的探测图像被编码在相同的词典原子上,并共享相似的系数。此外,通过将JGSR与k-means聚类和内核局部Fisher判别分析结合到一个统一的框架中,人的识别性能也得到了提高。在三个可公开获得的iLIDS-VID,PRID 2011和SAIVT-SoftBio多重基准数据集上进行了广泛的实验,并证明了JGSR方法与当前的最新方法相比具有优越的性能。 (C)2018 SPIE和IS&T

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