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Semantic classification by covariance descriptors within a randomized forest

机译:随机森林中协方差描述符的语义分类

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This paper investigates an approach to perform semantic classification in aerial imagery by compactly integrating multiple feature cues, like appearance and 3D height information. We therefore propose a novel technique to incorporate powerful covariance region descriptors into the decision nodes of a randomized forest framework efficiently. The concept of finding reliable binary splits is based on repeated random sampling of distributions that are specified by mean vectors and covariance matrices. The sampling strategy is related to Monte Carlo simulations and perfectly fits the learning strategy of randomized decision trees, while the covariance descriptors are exploited to perform a plausible feature cue integration. To show state-of-the-art performance, we first evaluate our proposed approach on the MSRC dataset including 21 object classes. Then, we illustrate how an additional integration of 3D information improves the classification accuracy in real world aerial images taken from Dallas, San Francisco, and Graz. In addition, we use the available camera data and 3D information to combine the overlapping per-image classifications into a large-scale semantic description map that is directly applicable to virtual or procedural 3D modeling of urban environments.
机译:本文研究了一种通过紧密集成外观和3D高度信息等多个特征线索来在航空影像中执行语义分类的方法。因此,我们提出了一种将强大的协方差区域描述符有效地合并到随机森林框架的决策节点中的新颖技术。查找可靠的二元分割的概念基于对分布的重复随机采样,这些采样由均值向量和协方差矩阵指定。采样策略与蒙特卡洛模拟有关,非常适合随机决策树的学习策略,而协方差描述符则用于执行合理的特征提示集成。为了显示最先进的性能,我们首先在包含21个对象类的MSRC数据集上评估了我们提出的方法。然后,我们说明了3D信息的附加集成如何提高从达拉斯,旧金山和格拉茨拍摄的现实世界航空图像中的分类准确性。此外,我们使用可用的相机数据和3D信息将重叠的每幅图像分类组合成一个大规模的语义描述图,该图可直接应用于城市环境的虚拟或过程3D建模。

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