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Feature preserving GAN and multi-scale feature enhancement for domain adaption person Re-identification

机译:保留特征的GAN和多尺度特征增强,用于领域适应者重新识别

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摘要

The performance of person Re-identification (Re-ID) model depends much on its training dataset, and drops significantly when the detector is applied to a new scene due to the large variations between the source training dataset and the target scene. In this paper, we proposed multi-scale Feature Enhancement(MFE) Re-ID model and Feature Preserving Generative Adversarial Network (FPGAN) for cross-domain person Re-ID task. Here, MFE Re-ID model provides a strong baseline model for cross-domain person Re-ID task, and FPGAN bridges the domain gap to improve the performance of Re-ID on target scene. In the MFE Re-ID model, person semantic feaure maps, extracted from backbone of segmentation model, enhance person body region's multi-scale feature responce. This operation could capture multiscale robust discriminative visual factors related to person. In FPGAN, we translate the labeled images from source to target domain in an unsupervised manner, and learn a transfer function to preserve the person perceptual information of source images and ensure the transferred person images show similar styles with the target dataset. Extensive experiments demonstrate that combining FPGAN and MFE Re-ID model could achieve state-of-the-art results in cross-domain Re-ID task on DukeMTMC-reID and Market-1501 datasets. Besides, MFE Re-ID model could achieve state-of-the-art results in supervised Re-ID task. All source codes and models will be released for comparative study. (C) 2019 Elsevier B.V. All rights reserved.
机译:人员重新识别(Re-ID)模型的性能在很大程度上取决于其训练数据集,并且由于源训练数据集和目标场景之间的巨大差异,当将检测器应用于新场景时,其性能会显着下降。本文针对跨域人员Re-ID任务,提出了多尺度特征增强(MFE)Re-ID模型和特征保留生成对抗网络(FPGAN)。在这里,MFE Re-ID模型为跨域人员Re-ID任务提供了强大的基线模型,FPGAN桥接了域间隙以提高Re-ID在目标场景上的性能。在MFE Re-ID模型中,从分割模型的主干中提取人的语义特征图,可以增强人的身体区域的多尺度特征响应。该操作可以捕获与人有关的多尺度鲁棒性判别视觉因素。在FPGAN中,我们以无监督的方式将标记的图像从源域转换到目标域,并学习传递函数以保留源图像的人的感知信息,并确保所传递的人图像与目标数据集显示相似的样式。大量实验表明,结合FPGAN和MFE Re-ID模型可以在DukeMTMC-reID和Market-1501数据集的跨域Re-ID任务中实现最新结果。此外,MFE Re-ID模型可以在有监督的Re-ID任务中取得最新的成果。所有源代码和模型都将发布以进行比较研究。 (C)2019 Elsevier B.V.保留所有权利。

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