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Attentive Fashion Grammar Network for Fashion Landmark Detection and Clothing Category Classification

机译:专注于时尚地标检测和服装类别分类的时尚语法网络

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This paper proposes a knowledge-guided fashion network to solve the problem of visual fashion analysis, e.g., fashion landmark localization and clothing category classification. The suggested fashion model is leveraged with high-level human knowledge in this domain. We propose two important fashion grammars: (i) dependency grammar capturing kinematics-like relation, and (ii) symmetry grammar accounting for the bilateral symmetry of clothes. We introduce Bidirectional Convolutional Recurrent Neural Networks (BCRNNs) for efficiently approaching message passing over grammar topologies, and producing regularized landmark layouts. For enhancing clothing category classification, our fashion network is encoded with two novel attention mechanisms, i.e., landmark-aware attention and category-driven attention. The former enforces our network to focus on the functional parts of clothes, and learns domain-knowledge centered representations, leading to a supervised attention mechanism. The latter is goal-driven, which directly enhances task-related features and can be learned in an implicit, top-down manner. Experimental results on large-scale fashion datasets demonstrate the superior performance of our fashion grammar network.
机译:本文提出了一个知识导向的时装网络来解决视觉时装分析的问题,例如时装界标定位和服装类别分类。所建议的时装模特在该领域中具有较高水平的人类知识。我们提出两个重要的时尚语法:(i)依赖语法捕获类似运动学的关系,(ii)对称语法说明衣服的双边对称性。我们引入双向卷积递归神经网络(BCRNN),以有效地处理通过语法拓扑传递的消息,并生成规则化的界标布局。为了加强服装类别的分类,我们的时尚网络采用两种新颖的注意力机制进行编码,即具有里程碑意义的注意力和类别驱动的注意力。前者迫使我们的网络专注于衣服的功能部分,并学习以领域知识为中心的表示形式,从而形成一种受监督的注意力机制。后者是目标驱动的,可以直接增强与任务相关的功能,并且可以隐式,自上而下的方式学习。在大规模时尚数据集上的实验结果证明了我们的时尚语法网络的卓越性能。

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