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Large-scale gaussian process multi-class classification for semantic segmentation and facade recognition

机译:大规模高斯过程多类分类用于语义分割和门面识别

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This paper deals with the task of semantic segmentation, which aims to provide a complete description of an image by inferring a pixelwise labeling. While pixelwise classification is a suitable approach to achieve this goal, state-of-the-art kernel methods are generally not applicable since training and testing phase involve large amounts of data. We address this problem by presenting a method for large-scale inference with Gaussian processes. Standard limitations of Gaussian process classifiers in terms of speed and memory are overcome by pre-clustering the data using decision trees. This leads to a breakdown of the entire problem into several independent classification tasks whose complexity is controlled by the maximum number of training examples allowed in the tree leaves. We additionally propose a technique which allows for computing multi-class probabilities by incorporating uncertainties of the classifier estimates. The approach provides pixelwise semantics for a wide range of applications and different image types such as those from scene understanding, defect localization, and remote sensing. Our experiments are performed with a facade recognition application that shows the significant performance gain achieved by our method compared to previous approaches.
机译:本文涉及语义分割的任务,其目的是通过推断像素标记来提供图像的完整描述。尽管按像素分类是实现此目标的合适方法,但由于训练和测试阶段涉及大量数据,因此,最新的内核方法通常不适用。我们通过提出一种利用高斯过程进行大规模推理的方法来解决这个问题。通过使用决策树对数据进行预聚类,可以克服高斯过程分类器在速度和内存方面的标准限制。这导致将整个问题分解为几个独立的分类任务,其复杂度由树叶中允许的最大训练示例数控制。我们另外提出一种技术,该技术可以通过合并分类器估计值的不确定性来计算多类概率。该方法为广泛的应用程序和不同的图像类型提供了逐像素语义,例如来自场景理解,缺陷定位和遥感的图像类型。我们的实验是使用外观识别应用程序执行的,该应用程序显示了与以前的方法相比,我们的方法可实现的显着性能提升。

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