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Research of terrain recognition for off-road robot based on extreme learning theory

机译:基于极限学习理论的越野机器人地形识别研究

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Feature extraction and classification algorithm is the key to classification accuracy. Terrain recognition for off-road robot need higher real-time classification algorithm, while the traditional neural network training method is difficult to meet the requirements. Extreme learning machine is used to classify the terrain pictures collected by robot in real time. Experimental results show that the accuracy of ELM terrain classification is slightly higher than the traditional neural network algorithm, but algorithm efficiency is raised more than a dozen times for the small sample size of 150, which meets the requirements for accuracy, especially for real time.
机译:特征提取和分类算法是分类精度的关键。越野机器人的地形识别需要更高的实时分类算法,而传统的神经网络训练方法难以满足要求。极限学习机用于对机器人实时采集的地形图片进行分类。实验结果表明,ELM地形分类的精度比传统的神经网络算法略高,但是对于150个小样本量,算法效率提高了十几倍,满足了精度要求,尤其是实时性。

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