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EIGENENTROPY BASED CONVOLUTIONAL NEURAL NETWORK BASED ALS POINT CLOUDS CLASSIFICATION METHOD

机译:基于特征熵的卷积神经网络的ALS点云分类方法

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The classification of point clouds is the first step in the extraction of various types of geo-information form point clouds. Recently the ISPRS WG II/4 provides a benchmark on 3D semantic labelling, a convolutional neural network based method achieves the best overall accuracy performance in all participants who only use the geometrical and waveform based features extracted from the ALS data. Features of the point are calculated in different scales to achieve the best performance. It is not efficiency for the future use. In this paper, we use an eigenentropy based scale selection strategy to improve this method. The scale selection strategy improves the average F1 score and makes the classification method more simple and efficient.
机译:点云的分类是提取各种类型的地理信息形式点云的第一步。最近,ISPRS WG II / 4提供了3D语义标记的基准,基于卷积神经网络的方法在仅使用从ALS数据中提取的基于几何和波形特征的所有参与者中实现了最佳的总体准确性。该点的特征以不同的比例进行计算以获得最佳性能。这不是将来使用的效率。在本文中,我们使用基于特征熵的尺度选择策略来改进此方法。量表选择策略提高了F1的平均得分,并使分类方法更加简单有效。

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