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Cross-modal Pedestrian Re-identification Based on Generative Confrontation Network

机译:基于生成对抗网络的跨模型行人重新识别

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Pedestrian re-recognition is a very important research direction in video surveillance. With the emphasis on night video surveillance, pedestrian re-recognition is also being studied from a single mode to a cross-mode direction. Since the images taken by the camera at night are generally divided into two types, thermal imaging and infrared images, corresponding to the RegDB data set and the SYSU-MM01 data set respectively. In order to make the trained model have good performance in both data sets, GAN network is used in this article. The visible light image is generated by CycleGAN to generate the corresponding infrared image, and then the infrared image is generated by PTGAN to generate a thermal imaging style image. Then input the image into the single-stream network for training and learning, and finally optimize the network in an end-to-end manner.
机译:行人重新认识是视频监控中的一个非常重要的研究方向。 随着强调夜间视频监控,还在从单一模式到跨模式方向研究行人重新识别。 由于夜间拍摄的图像通常分为两种类型,热成像和红外图像,分别对应于REGDB数据集和SYSU-MM01数据集。 为了使训练的模型在两个数据集中具有良好的性能,在本文中使用了GaN网络。 通过CycleanGaN生成可见光图像以产生相应的红外图像,然后通过PTANGAN生成红外图像以产生热成像样式图像。 然后将图像输入到单流网络中以进行培训和学习,最后以端到端的方式优化网络。

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