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DeepGender: Occlusion and Low Resolution Robust Facial Gender Classification via Progressively Trained Convolutional Neural Networks with Attention

机译:DeepGender:通过渐进训练的卷积神经网络关注度的遮挡和低分辨率鲁棒性面部性别分类

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In this work, we have undertaken the task of occlusion and low-resolution robust facial gender classification. Inspired by the trainable attention model via deep architecture, and the fact that the periocular region is proven to be the most salient region for gender classification purposes, we are able to design a progressive convolutional neural network training paradigm to enforce the attention shift during the learning process. The hope is to enable the network to attend to particular high-profile regions (e.g. the periocular region) without the need to change the network architecture itself. The network benefits from this attention shift and becomes more robust towards occlusions and low-resolution degradations. With the progressively trained CNN models, we have achieved better gender classification results on the large-scale PCSO mugshot database with 400K images under occlusion and low-resolution settings, compared to the one undergone traditional training. In addition, our progressively trained network is sufficiently generalized so that it can be robust to occlusions of arbitrary types and at arbitrary locations, as well as low resolution.
机译:在这项工作中,我们承担了遮挡和低分辨率稳健的面部性别分类的任务。受到深层结构的可训练注意力模型的启发,事实证明,眼周区域是性别分类目的最突出的区域,我们能够设计一种渐进式卷积神经网络训练范例,以在学习过程中实施注意力转移过程。希望使网络能够参与特定的高端区域(例如眼周区域),而无需更改网络体系结构本身。网络得益于这种注意力转移,并在遮挡和低分辨率降级方面变得更加强大。与经过传统训练的CNN模型相比,通过逐步训练的CNN模型,我们在具有遮挡和低分辨率设置的400K图像的大型PCSO面部照片数据库上获得了更好的性别分类结果。此外,我们的训练有素的网络已被充分概括,因此对于任意类型的遮挡和在任意位置的遮挡以及较低的分辨率,它都具有较强的鲁棒性。

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