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Reinforced Sample Re-weighting for Pedestrian Attribute Recognition

机译:行人属性识别的增强样本重加权

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Pedestrian Attribute Recognition aims to recognise person attributes including age, gender, clothing and accessories in a given image. It is challenging due to the high variance in sample quality and attribute content. Many network structures have been proposed to better capture the fine-grained details in an image. However, how to learn from each training sample based on their importance to the model still remains to be addressed. In this paper, we propose Reinforced Sample Re-weighting (RSR), a novel approach to re-weight samples in a batch during back-propagation through reinforcement learning. RSR agents are proposed to assign sample weights based on both the sample itself and the recognition model status. The agent learns in an on-policy manner, where it learns together with the attribute recognition model and no additional training is required. The proposed approach achieves state-of-the-art performance against other existing methods on three large scale pedestrian attribute datasets PETA, PA-100K and RAP, which demonstrates the effectiveness of our method.
机译:行人属性识别旨在识别给定图像中的人的属性,包括年龄,性别,衣服和配件。由于样品质量和属性含量差异很大,因此具有挑战性。已经提出了许多网络结构以更好地捕获图像中的细粒度细节。但是,如何基于每个培训样本对模型的重要性来学习仍然有待解决。在本文中,我们提出了强化样本重新加权(RSR),一种通过强化学习在反向传播过程中对批次中的样本重新加权的新方法。建议RSR代理根据样本本身和识别模型状态来分配样本权重。代理以一种按策略的方式学习,可以与属性识别模型一起学习,而无需其他培训。在三个大型行人属性数据集PETA,PA-100K和RAP上,所提出的方法相对于其他现有方法具有最先进的性能,这证明了我们方法的有效性。

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