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Human attribute recognition by refining attention heat map

机译:通过完善关注热点图来识别人的属性

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Most existing methods of human attribute recognition are part-based, where features are extracted at human body parts corresponding to each human attribute and the part-based features are then fed to classifiers individually or together for recognizing human attributes. The performance of these methods is highly dependent on the accuracy of body-part detection, which is a well known challenging problem in computer vision. Different from these part-based methods, we propose to recognize human attributes by using CAM (Class Activation Map) network and further improve the recognition by refining the attention heat map, which is an intermediate result in CAM and reflects relevant image regions for each attribute. The proposed method does not require the detection of body parts and the prior correspondence between body parts and attributes. In particular, we define a new exponential loss function to measure the appropriateness of the attention heat map. The attribute classifiers are further trained in terms of both the original classification loss function and this new exponential loss function. The proposed method is developed on an end-to-end CNN network with CAM, by adding a new component for refining attention heat map. We conduct experiments on Berkeley Attributes of Human People Dataset and WIDER Attribute Dataset. The proposed methods achieve comparable performance of attribute recognition to the current state-of-the-art methods. (C) 2017 Elsevier B.V. All rights reserved.
机译:大多数现有的人类属性识别方法都是基于零件的,其中在对应于每个人类属性的人体部位提取特征,然后将基于零件的特征单独或一起馈入分类器以识别人类属性。这些方法的性能高度依赖于身体部位检测的准确性,这是计算机视觉中众所周知的难题。与这些基于部分的方法不同,我们建议通过使用CAM(类激活图)网络来识别人的属性,并通过细化注意力热图来进一步提高识别能力,这是CAM的中间结果,它反映了每个属性的相关图像区域。所提出的方法不需要检测身体部位以及身体部位与属性之间的先验对应关系。特别是,我们定义了一个新的指数损失函数来衡量注意热点图的适当性。在原始分类损失函数和新的指数损失函数方面对属性分类器进行进一步训练。通过在端到端CNN网络上使用CAM来开发该方法,方法是添加了一个新的组件来完善注意力热图。我们对人类数据集和WIDER属性数据集的伯克利属性进行了实验。所提出的方法在属性识别方面的性能可与当前的最新方法相媲美。 (C)2017 Elsevier B.V.保留所有权利。

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