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Grid Based Path Planning Using CNN & Artificial Potential Field Method

Shamina Akter, Deok Jin Lee, Shin Taek Lim, Kil To Chong

发表年份
2013
引用次数
3

摘要

This proposed path planning method combines cellular neural network (CNN) with artificial potential field approach. The fundamental operation based on CNN gray scale image processing and artificial potential is the additional approach for global path-planning. Every point of the environment has a potential value with respect to start and destination position. In the trajectory planning process, a minimum search of potential value of every surrounding neighbor points around a point is done and the neighbor point with the least minimum value is selected as the next location. This procedure is repeated until the goal point is reached. The advantage of using CNN based image processing with artificial potential field function in a vision system is its effectiveness in robot localization while the use of minimum potential value gives a simple yet efficient path planning method. Their feedback criterion is similar to a procedure in filtering the image and it frequently updates the information about obstacles and free path. The parallel processing properties of CNN makes the proposed method robust for real time application.

关键词

Motion planningComputer scienceArtificial intelligencePath (computing)Potential fieldGridField (mathematics)Artificial neural networkPoint (geometry)Grid method multiplication

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