Visual Saliency Improves Autonomous Visual Search

Amir Rasouli, John K. Tsotsos
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引用次数: 12

Abstract

Visual search for a specific object in an unknown environment by autonomous robots is a complex task. The key challenge is to locate the object of interest while minimizing the cost of search in terms of time or energy consumption. Given the impracticality of examining all possible views of the search environment, recent studies suggest the use of attentive processes to optimize visual search. In this paper, we describe a method of visual search that exploits the use of attention in the form of a saliency map. This map is used to update the probability distribution of which areas to examine next, increasing the utility of spatial volumes where objects consistent with the target's visual saliency are observed. We present experimental results on a mobile robot and conclude that our method improves the process of visual search in terms of reducing the time and number of actions to be performed to complete the process.
视觉显著性提高自主视觉搜索
自主机器人在未知环境中对特定物体进行视觉搜索是一项复杂的任务。关键的挑战是定位感兴趣的对象,同时最小化搜索的时间或能量消耗。考虑到检查搜索环境的所有可能的观点是不切实际的,最近的研究建议使用细心的过程来优化视觉搜索。在本文中,我们描述了一种视觉搜索方法,该方法以显著性图的形式利用注意力。该地图用于更新接下来要检查的区域的概率分布,增加空间体积的效用,其中观察到与目标视觉显著性一致的物体。我们在移动机器人上展示了实验结果,并得出结论,我们的方法在减少完成该过程所需执行的时间和数量方面改进了视觉搜索过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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