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首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Autonomous Salient Feature Detection through Salient Cues in an HSV Color Space for Visual Indoor Simultaneous Localization and Mapping
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Autonomous Salient Feature Detection through Salient Cues in an HSV Color Space for Visual Indoor Simultaneous Localization and Mapping

机译:通过HSV颜色空间中的显着线索进行自主显着特征检测,以实现可视化室内同时定位和制图

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摘要

For successful simultaneous localization and mapping (SLAM), perception of the environment is important. This paper proposes a scheme to autonomously detect visual features that can be used as natural landmarks for indoor SLAM. First, features are roughly selected from the camera image through entropy maps that measure the level of randomness of pixel information. Then, the saliency of each pixel is computed by measuring the level of similarity between the selected features and the given image. In the saliency map, it is possible to distinguish the salient features from the background. The robot estimates its pose by using the detected features and builds a grid map of the unknown environment by using a range sensor. The feature positions are stored in the grid map. Experimental results show that the feature detection method proposed in this paper can autonomously detect features in unknown environments reasonably well.
机译:对于成功的同时定位和制图(SLAM),对环境的感知很重要。本文提出了一种自动检测视觉特征的方案,该方案可用作室内SLAM的自然标志。首先,通过测量像素信息随机性级别的熵图从相机图像中大致选择特征。然后,通过测量所选特征与给定图像之间的相似度来计算每个像素的显着性。在显着图中,可以将显着特征与背景区分开。机器人通过使用检测到的特征来估计其姿势,并通过使用距离传感器构建未知环境的网格图。特征位置存储在网格图中。实验结果表明,本文提出的特征检测方法可以较好地自主检测未知环境中的特征。

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