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Cross-Dataset Person Re-identification Using Similarity Preserved Generative Adversarial Networks

机译:使用相似性保留的生成对抗网络对跨数据集人员进行重新识别

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Person re-identification (Re-ID) aims to match the image frames which contain the same person in the surveillance videos. Most of the Re-ID algorithms conduct supervised training in some small labeled datasets, so directly deploying these trained models to the real-world large camera networks may lead to a poor performance due to underfit-ting. The significant difference between the source training dataset and the target testing dataset makes it challenging to incrementally optimize the model. To address this challenge, we propose a novel solution by transforming the unlabeled images in the target domain to fit the original classifier by using our proposed similarity preserved generative adversarial networks model, SimPGAN. Specifically, SimPGAN adopts the generative adversarial networks with the cycle consistency constraint to transform the unlabeled images in the target domain to the style of the source domain. Meanwhile, SimPGAN uses the similarity consistency loss, which is measured by a Siamese deep convolutional neural network, to preserve the similarity of the transformed images of the same person. Comprehensive experiments based on multiple real surveillance datasets are conducted, and the results show that our algorithm is better than the state-of-the-art cross-dataset unsupervised person Re-ID algorithms.
机译:人员重新识别(Re-ID)旨在匹配监视视频中包含同一个人的图像帧。大多数Re-ID算法在一些小的标签数据集上进行监督训练,因此由于拟合不足,将这些训练后的模型直接部署到现实世界的大型摄像机网络可能会导致性能不佳。源训练数据集和目标测试数据集之间的显着差异使得逐步优化模型具有挑战性。为了解决这一挑战,我们提出了一种新颖的解决方案,即通过使用我们提出的相似性保留的生成对抗网络模型SimPGAN来转换目标域中未标记的图像以适合原始分类器。具体来说,SimPGAN采用具有周期一致性约束的生成对抗网络,将目标域中未标记的图像转换为源域的样式。同时,SimPGAN使用由暹罗深度卷积神经网络测量的相似度一致性损失来保留同一个人的变换图像的相似度。进行了基于多个真实监视数据集的综合实验,结果表明,我们的算法优于最新的跨数据集无监督人员Re-ID算法。

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