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Reinforcement learning based visual attention with application to face detection

机译:基于强化学习的视觉注意力在面部检测中的应用

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摘要

Visual attention is the cognitive process of directing our gaze on one aspect of the visual field while ignoring others. The mainstream approach to modeling focal visual attention involves identifying saliencies in the image and applying a search process to the salient regions. However, such inference schemes commonly fail to accurately capture perceptual attractors, require massive computational effort and, generally speaking, are not biologically plausible. This paper introduces a novel approach to the problem of visual search by framing it as an adaptive learning process. In particular, we devise an approximate optimal control framework, based on reinforcement learning, for actively searching a visual field. We apply the method to the problem of face detection and demonstrate that the technique is both accurate and scalable. Moreover, the foundations proposed here pave the way for extending the approach to other large-scale visual perception problems.
机译:视觉注意力是将我们的视线引导到视野的一个方面而忽略其他方面的认知过程。对焦点视觉注意力进行建模的主流方法包括识别图像中的显着性并将搜索过程应用于显着区域。但是,这样的推理方案通常不能准确地捕获感知吸引子,需要大量的计算工作,并且通常来说在生物学上是不合理的。本文通过将其视为自适应学习过程,介绍了一种针对视觉搜索问题的新颖方法。特别是,我们基于强化学习设计了一种近似的最优控制框架,用于主动搜索视野。我们将该方法应用于人脸检测问题,并证明该技术既准确又可扩展。此外,这里提出的基础为将方法扩展到其他大规模视觉感知问题铺平了道路。

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