首页> 外文会议>Intelligent Robots and Systems 95. 'Human Robot Interaction and Cooperative Robots', Proceedings. 1995 IEEE/RSJ International Conference on >Global self-localization for autonomous mobile robots using self-organizing Kohonen neural networks
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Global self-localization for autonomous mobile robots using self-organizing Kohonen neural networks

机译:使用自组织Kohonen神经网络的自主移动机器人的全局自定位

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An approach to global self-localization for autonomous mobile robots has been developed using self-organizing Kohonen neural networks. This approach categorizes discrete regions of space using mapped sonar data corrupted by noise of varied sources and ranges. Our approach is similar to optical character recognition (OCR) in that the mapped sonar data can, over time, assume the form of a character unique to that room. Hence, it is believed that an autonomous vehicle can be capable of determining which room it is in based on mapped sensory data ascertained by wandering through and exploring that room. With some pre-processing and a robust explore routine, the solution becomes time-, translation- and rotation-invariant.
机译:已经使用自组织Kohonen神经网络开发了一种用于自动移动机器人的全局自定位方法。这种方法使用映射的声纳数据对空间的离散区域进行分类,该映射的声纳数据受各种源和范围的噪声破坏。我们的方法类似于光学字符识别(OCR),因为随着时间的推移,映射的声纳数据可以采用该房间唯一的字符形式。因此,相信自动驾驶车辆能够基于通过漫游并探索那个房间而确定的映射的感测数据来确定它位于哪个房间。通过一些预处理和强大的探索例程,解决方案将变为时间,平移和旋转不变。

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