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Robot Perceptual Classification Method Based on Mixed Features of Decision Tree and Random Forest

机译:基于决策树和随机林的混合特征的机器人感知分类方法

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Under the background of the booming development of big data and the robot industry, the existing navigation technology has a certain delay in the identification of robot drive form and the unstructured surface physical environment. In this paper, by processing the statistical data of the robot foot sensor, the hybrid features of the robot in different environments are constructed in the two dimensions of time domain and frequency domain (fast Fourier transform and continuous wavelet transform). Finally, by combining decision tree and random forest algorithm, the mixed features are fully learned, and the high-precision classification results are obtained.
机译:在大数据和机器人行业的蓬勃发展的背景下,现有的导航技术在识别机器人驱动形式和非结构化表面物理环境方面具有一定的延迟。在本文中,通过处理机器人足传感器的统计数据,在不同环境中的机器人的混合特征是在时域和频域的两个维度(快速傅里叶变换和连续小波变换)中构建。最后,通过组合决策树和随机林算法,完全学习混合特征,获得高精度分类结果。

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