室内环境中的视觉场所分类

E. F. Ersi, John K. Tsotsos
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引用次数: 1

摘要

本文解决了视觉位置分类的问题,其目的是用与人类可理解的概念相关的信息来增强自主机器人所访问的环境的不同位置。我们从能量最小化的角度来阐述视觉场所分类的问题。为了用地点类别标记视觉观察,我们提出了一种全局图像表示,该表示对动态环境中的常见变化不变,对类内变化具有鲁棒性。为了满足时间一致性,提出了一种包含统计线索的通用解决方案,不受恒定和小的邻域半径的限制,也不依赖于机器人所遵循的实际路径。一组公开可用数据库的实验证明了所提出的系统的优点,并显示出比现有方法的显著改进。
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Visual Place Categorization in Indoor Environments
This paper addresses the problem of visual place categorization, which aims at augmenting different locations of the environment visited by an autonomous robot with information that relates them to human-understandable concepts. We formulate the problem of visual place categorization in terms of energy minimization. To label visual observations with place categories we present a global image representation that is invariant to common changes in dynamic environments and robust against intra-class variations. To satisfy temporal consistency, a general solution is presented that incorporates statistical cues, without being restricted by constant and small neighbourhood radii, or being dependent on the actual path followed by the robot. A set of experiments on publicly available databases demonstrates the advantages of the presented system and show a significant improvement over available methods.
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