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Indoor scene recognition via probabilistic semantic map

机译:通过概率语义地图室内场景识别

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A domestic robot must recognize its current place accurately and interact with human beings effectively, thus we desire efficient and semantically meaningful scene representation. In this article, we introduce weighted component pooling to analyze indoor scenes, and probabilistic semantic mapping to represent them based on interactive robot learning. We test this algorithm with 10 scene types from an indoor scene recognition image set and 5 scene types with a humanoid robot in domestic settings. Our result shows that the robot can learn and find desired place according to our verbal commands accurately.
机译:国内机器人必须准确地识别其当前位置并有效地与人类互动,因此我们渴望有效和语义有意义的场景表示。在本文中,我们介绍了加权分量汇编来分析室内场景,以及基于交互式机器人学习来表示它们的概率语义映射。我们用来自室内场景识别图像集和5种场景类型的10种场景类型测试该算法,在家庭环境中具有5种场景机器人。我们的结果表明,机器人可以根据我们的口头命令准确地学习和找到所需的地方。

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