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Face Hallucination by Attentive Sequence Optimization with Reinforcement Learning

机译:通过钢筋学习的细节序列优化面临幻觉

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摘要

Face hallucination is a domain-specific super-resolution problem that aims to generate a high-resolution (HR) face image from a low-resolution (LR) input. In contrast to the existing patch-wise super-resolution models that divide a face image into regular patches and independently apply LR to HR mapping to each patch, we implement deep reinforcement learning and develop a novel attention-aware face hallucination (Attention-FH) framework, which recurrently learns to attend a sequence of patches and performs facial part enhancement by fully exploiting the global interdependency of the image. Specifically, our proposed framework incorporates two components: a recurrent policy network for dynamically specifying a new attended region at each time step based on the status of the super-resolved image and the past attended region sequence, and a local enhancement network for selected patch hallucination and global state updating. The Attention-FH model jointly learns the recurrent policy network and local enhancement network through maximizing a long-term reward that reflects the hallucination result with respect to the whole HR image. Extensive experiments demonstrate that our Attention-FH significantly outperforms the state-of-the-art methods on in-the-wild face images with large pose and illumination variations.
机译:面部幻觉是一个特定于域的超分辨率问题,其旨在从低分辨率(LR)输入产生高分辨率(HR)面部图像。与现有的补丁设计超分辨率模型相比,将面部图像分成常规贴片并独立地将LR应用于每个贴剂的人力资源映射,我们实施深度增强学习,开发了一种新的注意力幻觉(注意力 - FH)框架,常规学习参加一系列补丁并通过充分利用图像的全局相互依赖性来执行面部部分增强。具体而言,我们的建议框架包括两个组件:经常性策略网络,用于根据超分辨率和过去的出席区域序列的状态在每个时间步骤动态指定新的出席区域,以及用于所选补丁幻觉的本地增强网络和全球州更新。注意-FH模型通过最大化反映整个HR图像的长期奖励来共同了解经常性策略网络和本地增强网络。广泛的实验表明,我们的注意力大幅优于具有大姿势和照明变化的野外面部图像上的最先进的方法。

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