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Joint Learning of Single-Image and Cross-Image Representations for Person Re-identification

机译:联合学习单图像和跨图像表示以重新识别人

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Person re-identification has been usually solved as either the matching of single-image representation (SIR) or the classification of cross-image representation (CIR). In this work, we exploit the connection between these two categories of methods, and propose a joint learning frame-work to unify SIR and CIR using convolutional neural network (CNN). Specifically, our deep architecture contains one shared sub-network together with two sub-networks that extract the SIRs of given images and the CIRs of given image pairs, respectively. The SIR sub-network is required to be computed once for each image (in both the probe and gallery sets), and the depth of the CIR sub-network is required to be minimal to reduce computational burden. Therefore, the two types of representation can be jointly optimized for pursuing better matching accuracy with moderate computational cost. Furthermore, the representations learned with pairwise comparison and triplet comparison objectives can be combined to improve matching performance. Experiments on the CUHK03, CUHK01 and VIPeR datasets show that the proposed method can achieve favorable accuracy while compared with state-of-the-arts.
机译:人员重新识别通常已解决为单图像表示(SIR)的匹配或跨图像表示(CIR)的分类。在这项工作中,我们利用了这两种方法之间的联系,并提出了一种联合学习框架,以使用卷积神经网络(CNN)来统一SIR和CIR。具体来说,我们的深度架构包含一个共享的子网以及两个分别提取给定图像的SIR和给定图像对的CIR的子网。 SIR子网需要为每个图像(在探针和画廊集中)计算一次,并且CIR子网的深度必须最小以减少计算负担。因此,可以共同优化这两种表示形式,以追求较高的匹配精度和适度的计算成本。此外,可以将通过成对比较和三元组比较目标学习的表示形式进行组合,以提高匹配性能。在CUHK03,CUHK01和VIPeR数据集上的实验表明,与最新技术相比,该方法可以达到良好的精度。

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