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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Person Attribute Recognition by Sequence Contextual Relation Learning
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Person Attribute Recognition by Sequence Contextual Relation Learning

机译:序列上下文关系学习的人属性识别

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摘要

Person attribute recognition aims to identify the attribute labels from the pedestrian images. Extracting contextual relation from the images and attributes, including the spatial-semantic relations, the spatial context and the semantic correlation, is beneficial to enhance the discrimination of the features for recognizing the attributes. Thus, this work proposes a sequence contextual relation learning (SCRL) method to capture these relations. It first embeds the images and attributes into sequences in two branches. Then SCRL flexibly learns the contextual relation from the sequences with the parallel attention model structure, which integrates the inter-attention and intra-attention models. The inter-attention module is utilized to extract the spatial-semantic relations, while the intra-attention is designed to gain the spatial context and the semantic correlation. Both attention modules are comprised of several parallel attention units and each unit can obtain the pairwise relations in one subspace. Therefore, they obtain the relations in multiple subspaces, which can improve the comprehensiveness of the relation learning. Additionally, for the sake of better extraction of spatial-semantic relations, this paper employs connectionist temporal classification (CTC) loss which is capable of driving the network to enforce monotonic alignment between the image and attribute. It can also accelerate the convergence of the network by the algorithm in it. Extensive experiments on five public datasets, i.e., Market-1501 attribute, Duke attribute, PETA, RAP and PA-100K datasets, demonstrate the effectiveness of the proposed method.
机译:人物属性识别旨在识别行人图像的属性标签。从图像和属性中提取上下文关系,包括空间 - 语义关系,空间上下文和语义关联是有益的,可以增强用于识别属性的特征的辨别。因此,这项工作提出了序列上下文关系学习(SCRL)方法来捕获这些关系。它首先将图像和属性嵌入两个分支中的序列。然后,SCRL灵活地了解与并行关注模型结构的序列中的上下文关系,这集成了关注和内部型号。关注间模块用于提取空间语义关系,而局部关注旨在获得空间上下文和语义相关性。关注模块都包括几个平行的注意单元,每个单元可以在一个子空间中获得成对关系。因此,他们获得多个子空间中的关系,这可以提高关系学习的全面性。此外,为了更好地提取空间 - 语义关系,本文采用了能够驱动网络来强制映像和属性之间的单调对齐来实现的连接主义时间分类(CTC)丢失。它还可以通过算法加速网络的收敛性。关于五个公共数据集的大量实验,即Market-1501属性,Duke属性,PETA,RAP和PA-100K数据集,证明了该方法的有效性。

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