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Auto-ReID+: Searching for a multi-branch ConvNet for person re-identification

机译:自动REID +:搜索人员重新识别的多分支机构

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In the field of person re-identification (ReID), multi-branch models are more effective in learning robust features than single-branch models. The current popular multi-branch models are based on ResNet or GoogleNet. These networks are designed initially to solve classification problems. There is an essential difference between ReID and classification problems, so it is particularly important to find a corresponding multi-branch backbone for ReID tasks. We propose to automatically search for a multi-branch convolutional neural network (CNN) for ReID tasks utilizing neural architecture search (NAS). First, we designed a multi-resolution, multi-branch macro search architecture that can extract more abundant scale information. Then in the searching process, the early stopping mechanism is proposed to improve the effectiveness and efficiency of the entire searching process. Finally, we experimentally prove on four mainstream datasets that the searched model can achieve state-of-the-art performance with only 5.7 million parameters.(c) 2021 Elsevier B.V. All rights reserved.In the field of person re-identification (ReID), multi-branch models are more effective in learning robust features than single-branch models. The current popular multi-branch models are based on ResNet or GoogleNet. These networks are designed initially to solve classification problems. There is an essential difference between ReID and classification problems, so it is particularly important to find a corresponding multi-branch backbone for ReID tasks. We propose to automatically search for a multi-branch convolutional neural network (CNN) for ReID tasks utilizing neural architecture search (NAS). First, we designed a multi-resolution, multi-branch macro search architecture that can extract more abundant scale information. Then in the searching process, the early stopping mechanism is proposed to improve the effectiveness and efficiency of the entire searching process. Finally, we experimentally prove on four mainstream datasets that the searched model can achieve state-of-the-art performance with only 5.7 million parameters.
机译:在人的重新识别(Reid)领域中,多分支模型在学习鲁棒特征方面比单分支模型更有效。当前流行的多分支模型基于Reset或Googlenet。这些网络最初设计用于解决分类问题。 Reid和分类问题之间存在重要区别,因此找到用于REID任务的相应多分支骨干件尤为重要。我们建议自动搜索利用神经结构搜索(NAS)的REID任务的多分支卷积神经网络(CNN)。首先,我们设计了一种多分辨率,多分支宏搜索体系结构,可以提取更多丰富的尺度信息。然后在搜索过程中,提出了早期停止机制来提高整个搜索过程的有效性和效率。最后,我们在实验上证明了四个主流数据集,搜索的模型可以实现最先进的性能,只有570万个参数。(c)2021 Elsevier BV保留所有权利。在人员重新识别(Reid)领域,多分支模型在学习鲁棒特性方面比单分支模型更有效。当前流行的多分支模型基于Reset或Googlenet。这些网络最初设计用于解决分类问题。 Reid和分类问题之间存在重要区别,因此找到用于REID任务的相应多分支骨干件尤为重要。我们建议自动搜索利用神经结构搜索(NAS)的REID任务的多分支卷积神经网络(CNN)。首先,我们设计了一种多分辨率,多分支宏搜索体系结构,可以提取更多丰富的尺度信息。然后在搜索过程中,提出了早期停止机制来提高整个搜索过程的有效性和效率。最后,我们在实验上证明了四个主流数据集,所以搜索的模型可以实现最先进的性能,只有570万参数。

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