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Centralized multi-scale singular value decomposition for feature construction in LIDAR image classification problems

机译:LIDAR图像分类问题中特征构建的集中式多尺度奇异值分解

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Creation and selection of relevant features for machine learning applications (including image classification) is typically a process requiring significant involvement of domain knowledge. It is thus desirable to cover at least part of that process with semi-automated techniques capable of discovering and visualizing those geometric characteristics of images that are potentially relevant to the classification objective. In this work, we propose to utilize multi-scale singular value decomposition (MSVD) along with approximate nearest neighbors algorithm: both have been recently realized using the randomized approach, and can be efficiently run on large, high-dimensional datasets (sparse or dense). We apply this technique to create a multi-scale view of every point in a publicly available set of LIDAR data of riparian images, with classification objective being separating ground from vegetation. We perform “centralized MSVD” for every point and its neighborhood generated by an approximate nearest neighbor algorithm. After completion of this procedure, the original set of 3-dimensional data is augmented by 36 dimensions generated by MSVD (in three different scales), which is then processed using a novel discretization pre-processing method and the SVM classification algorithm with RBF kernel. The result is two times better that the one previously obtained (in terms of its classification error level). The generic nature of the MSVD mechanism and standard mechanisms used for classification (SVM) suggest a wider utility of the proposed approach for other problems as well.
机译:用于机器学习应用的相关特征(包括图像分类)的创建和选择通常是需要显着参与域知识的过程。因此,希望覆盖该过程的至少一部分,其具有能够发现和可视化与分类目标可能相关的图像的那些几何特征的半自动技术。在这项工作中,我们建议利用多尺度奇异值分解(MSVD)以及近似最近的邻居算法:两者最近使用随机方法实现,并且可以在大型高维数据集上有效运行(稀疏或密集)。我们应用这种技术,以在河岸图像的公共可用LIDAR数据集中创建各个点的多尺度视图,分类目标与植被分离。我们为每个点及其邻域执行“集中式MSVD”,由近似最近的邻邻算法生成。完成此过程后,原始的三维数据集由MSVD(三个不同尺度)产生的36个维度,然后使用具有RBF内核的新颖的离散化预处理方法和SVM分类算法进行处理。结果是先前获得的两个时间(在其分类错误级别方面)。用于分类(SVM)的MSVD机制和标准机制的通用性表明提出了拟议方法对其他问题的较广泛效用。

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