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Person Transfer GAN to Bridge Domain Gap for Person Re-identification

机译:人员转移GAN到桥接域差距以重新识别人员

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Although the performance of person Re-Identification (ReID) has been significantly boosted, many challenging issues in real scenarios have not been fully investigated, e.g., the complex scenes and lighting variations, viewpoint and pose changes, and the large number of identities in a camera network. To facilitate the research towards conquering those issues, this paper contributes a new dataset called MSMT171 with many important features, e.g., 1) the raw videos are taken by an 15-camera network deployed in both indoor and outdoor scenes, 2) the videos cover a long period of time and present complex lighting variations, and 3) it contains currently the largest number of annotated identities, i.e., 4,101 identities and 126,441 bounding boxes. We also observe that, domain gap commonly exists between datasets, which essentially causes severe performance drop when training and testing on different datasets. This results in that available training data cannot be effectively leveraged for new testing domains. To relieve the expensive costs of annotating new training samples, we propose a Person Transfer Generative Adversarial Network (PTGAN) to bridge the domain gap. Comprehensive experiments show that the domain gap could be substantially narrowed-down by the PTGAN.
机译:尽管人员重新识别(ReID)的性能得到了显着提高,但尚未对真实场景中的许多具有挑战性的问题进行充分研究,例如,复杂的场景和照明变化,视点和姿势变化以及一个场景中的大量身份。摄像头网络。为了帮助研究解决这些问题,本文提供了一个名为MSMT171的新数据集,该数据集具有许多重要功能,例如:1)原始视频由部署在室内和室外场景中的15个摄像机网络拍摄; 2)视频涵盖长时间且呈现复杂的照明变化,并且3)它包含当前数量最多的带注释的标识,即4,101个标识和126,441个边界框。我们还观察到,数据集之间通常存在域间隙,这在对不同数据集进行训练和测试时实质上会导致严重的性能下降。这导致无法将可用的训练数据有效地用于新的测试域。为了减轻注释新训练样本的昂贵成本,我们提出了人员转移生成对抗网络(PTGAN),以弥合领域差距。全面的实验表明,PTGAN可以大大缩小域间隙。

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