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Trading off salience and uncertainty in sampling a visual scene

机译:在视觉场景采样中权衡显着性和不确定性

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When faced with a complicated visual scene many animals including humans attend to important regions in a systematic serial manner. The ability to orient rapidly towards an important region in a scene allows an organism to accomplish activities, such as navigation, foraging and detecting possible prey/mates. Developing a computational model of visual attention has long been of interest as such models enable artificial systems to acquire information efficiently from complex and cluttered environments. Current computational models attend to an important region (usually one which is maximally different from its immediate neighbours) and then inhibits future viewing of that region in order to facilitate distribution of visual attention. In this work we introduce the idea of an `uncertainty map', which works in conjunction with the existing idea of `saliency map' to drive the system's attention. We demonstrate the distribution of visual attention by our model in simulation. We show that despite its simplicity, our system distributes visual attention in a context-dependent manner which can be easily tuned to different environments.
机译:当面对复杂的视觉场景时,包括人类在内的许多动物都以系统的方式关注重要区域。快速面向场景中重要区域的能力使生物体能够完成各种活动,例如导航,觅食和检测可能的猎物/伴侣。长期以来,人们一直关注开发视觉注意力的计算模型,因为这种模型使人工系统能够从复杂而混乱的环境中高效地获取信息。当前的计算模型涉及到一个重要区域(通常是一个与其邻域最大不同的区域),然后禁止将来对该区域的查看,以促进视觉注意力的分布。在这项工作中,我们介绍了“不确定性图”的概念,该概念与现有的“显着性图”概念一起工作以引起系统的注意。我们通过仿真模型演示了视觉注意力的分布。我们表明,尽管它很简单,但是我们的系统以上下文相关的方式分发视觉注意力,可以轻松地将其调整到不同的环境。

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