基于高斯过程和小波特征的人工结构分割

Hang Zhou, D. Suter
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引用次数: 0

摘要

我们将高斯过程分类(GPC)应用于人造结构分割,并将其作为一个两类问题来处理。GPC是一种判别方法,因此侧重于直接对后验进行建模。它放松了对观测数据的条件独立性的强假设(通常用于生成模型)。此外,在特征向量中加入了有效描述纹理方向的小波变换特征。取得了满意的结果,表明了该方法的有效性。
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Man-Made Structure Segmentation using Gaussian Processes and Wavelet Features
We apply Gaussian process classification (GPC) to man-made structure segmentation, treated as a two class problem. GPC is a discriminative approach, and thus focuses on modelling the posterior directly. It relaxes the strong assumption of conditional independence of the observed data (generally used in a generative model). In addition, wavelet transform features, which are effective in describing directional textures, are incorporated in the feature vector. Satisfactory results have been obtained which show the effectiveness of our approach.
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