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首页> 外文期刊>Journal of visual communication & image representation >Person Re-identification with Global-Local Background_bias Net
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Person Re-identification with Global-Local Background_bias Net

机译:用全球本地Background_bias网重新识别

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摘要

Person Re-identification (Re-ID) is an important technique in intelligent video surveillance. Because of the variations on camera viewpoints and body poses, there are some problems such as body misalignment, the diverse background clutters and partial bodies occlusion, etc. To address these problems, we propose the Global-Local Background_bias Net (GLBN), a novel network architecture that consists of Foreground Partial Segmentation Net (FPSN), Global Aligned Supervision Net (GASN) and Background_bias Constraint Net (BCN) modules. Firstly, to enhance the adaptability of foreground features and reduce the interference of the background, FPSN is applied to perform local segmentation on the foreground image. Secondly, global features generated by GASN are purposed to supervise the learning of local features. Finally, BCN constrains the background information to reduce the impact of background information again. Extensive experiments implemented on the mainstream evaluation datasets including Market1501, DukeMTMC-reID and CLIFIK03 indicate that our method is efficient and robust.
机译:人重新识别(RE-ID)是智能视频监控中的重要技术。由于相机观点和身体姿势的变化,身体未对准,多样化的背景夹斗和部分体闭塞等问题,我们提出了全球局部Background_bias网(GLBN),一部小说由前景部分分割网(FPSN),全局对齐的监控(GARNN)和Background_Bias约束网络(BCN)模块组成的网络架构。首先,为了增强前景特征的适应性并降低背景的干扰,应用FPSN在前台图像上执行局部分段。其次,瓦恩产生的全球特征被用来监督局部特征的学习。最后,BCN约束背景信息以再次减少背景信息的影响。在包括Market1501,Dukemtmc-Reid和Clifik03的主流评估数据集上实施的广泛实验表明我们的方法是高效且稳健的。

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