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首页> 外文期刊>International Journal of Hybrid Intelligent Systems >An interval Type-2 Fuzzy Subtractive Clustering approach to obstacle detection of robot vision using RGB-D camera
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An interval Type-2 Fuzzy Subtractive Clustering approach to obstacle detection of robot vision using RGB-D camera

机译:基于间隔2型模糊减法聚类的RGB-D摄像机机器人视觉障碍检测

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摘要

Obstacle detection is a fundamental issue of robot navigation and there have been several proposed methods for this problem. In this paper, we propose a new approach to find out obstacles on Depth Camera streams. The proposed approach consists of three stages. First, preprocessing stage is for noise removal. Second, different depths in a frame are clustered based on the Interval Type-2 Fuzzy Subtractive Clustering algorithm. Third, the objects of interest are detected from the obtained clusters. Beside that, it gives an improvement in the Interval Type-2 Fuzzy Subtractive Clustering algorithm to reduce the time consuming. In theory, it is at least 3700 times better than the original one, and approximate 980100 in practice on our depth frames. The results conducted on frames demonstrate that the distance from the camera to objects retrieved is exact enough for indoor robot navigation problems.
机译:障碍物检测是机器人导航的基本问题,并且已经针对该问题提出了几种建议的方法。在本文中,我们提出了一种新方法来找出深度相机流上的障碍物。提议的方法包括三个阶段。首先,预处理阶段用于去除噪音。其次,基于区间2型模糊减法聚类算法对帧中的不同深度进行聚类。第三,从获得的聚类中检测感兴趣的对象。除此之外,它还对间隔2型模糊减法聚类算法进行了改进,以减少耗时。从理论上讲,它比原始模型至少好3700倍,在我们的深度框架上,实际操作中约为980100。在框架上进行的结果表明,从相机到检索到的物体的距离对于室内机器人导航问题而言足够精确。

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