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Frontier-based Exploration on Continuous Radial Basis Function Neural Network Map

机译:连续径向基函数神经网络图的前沿探索

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We present a frontier-driven autonomous robotic exploration method on a continuous representation of environment. The approach utilizes radial basis function neural network to build continuous occupancy grid map. Parametric frontiers are calculated directly by gradient field of occupancy probability distribution, which clear show division between free and unexplored space. Besides, the resulting frontiers provide a measure of quality automatically. Simulation is present to show the performance of the proposed technique.
机译:我们提出了对环境的连续表示的边界驱动的自主机器人探索方法。该方法利用径向基函数神经网络来构建连续的占用网格图。参数边界是通过占用概率分布的梯度场直接计算的,这清楚地表明了自由空间与未开发空间之间的划分。此外,由此产生的边界会自动提供质量度量。仿真表明了所提出技术的性能。

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