基于图像处理的障碍物识别和概率模型提高机器人定位性能

Yoo. DongHa, Min. InJoon, Ahn. MinSung, Han. Jeakweon
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引用次数: 0

摘要

在本文中,我们提出了一种有效的定位方法,仅在具有障碍物的立体相机上使用粒子滤波。当采用流规划而非机器人扫描地图进行定位时,存在障碍物时定位误差增大。为了解决这一问题,首先,我们通过Opencv轮廓函数对图像进行处理,提出了“图像分割障碍”和“图像中障碍”两种障碍物识别方法。然后,我们通过一种新的间隔角感知模型解决了粒子滤波权值计算过程中出现的问题。此外,我们提出了两种概率模型,可以解决机器人的地标数量与粒子数量不一致的问题。在此基础上,提出了一种考虑障碍物的概率模型,提出了一种有效的机器人定位方法。结果表明,与不考虑障碍物的概率模型相比,考虑障碍物的概率模型错误率降低了45%左右。
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Improving Localization Performance of Robot Using Obstacle Recognition and Probability Model through Image Processing
In this paper, we propose an effective localization method with only a stereo camera that has obstacles using particle filter. When localization with flow planning rather than robot scanned map, the error of localization increases when there is an obstacle. To solve this problem, First, we propose two types of obstacle recognition method: "Image Split Obstacle" and "Obstacle In Image" through image processing using the Opencv contour function. Afterwards, we solve the problems caused by the particle filter weight calculation process through a new sensing model using interval angle. In addition, we propose two probability models that can solve the problem of inconsistency between the number of landmarks of robots and particles. After that, we suggest an effective robot localization method by presenting a probability model that considers obstacles. As a result, the probability model considering obstacles showed an error rate reduction of about 45% compared to the existing model that does not considering obstacles.
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