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Visual Scene Analysis Using Relaxation Labeling and Embedded Hidden Markov Models for Map-Based Robot Navigation

机译:使用放松标签和嵌入​​式隐马尔可夫模型的视觉场景分析,用于基于地图的机器人导航

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摘要

A scheme for extracting environment features and performing their interpretation from visual data for mobile robot navigation is presented. Each frame of the low rate image stream acquired by the robot is processed as a separate image. Segmentation of the image is done using a graph-based approach in order to select the Regions Of Interest (ROIs) of the visual scene. ROIs are processed to extract the edges of the objects using relaxation labeling. The obtained image is analyzed using a machine learning approach based on Embedded HMMs. Experimental results are presented for an office environment.
机译:提出了一种提取环境特征和从用于移动机器人导航的可视数据执行解释的方案。由机器人获取的低速率图像流的每个帧被处理为单独的图像。使用基于图形的方法来完成图像的分割,以便选择视觉场景的感兴趣区域(ROI)。 ROI被处理以利用松弛标签提取物体的边缘。使用基于嵌入式HMMS的机器学习方法分析所获得的图像。实验结果呈现出办公环境。

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