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A New Scheme for Land Cover Classification in Aerial Images: Combining Extended Dependency Tree-HMM and Unsupervised Segmentation

机译:航空影像土地覆盖分类的新方案:结合扩展相依树-HMM和无监督分割

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An important challenge to any image pixels classification system is to correctly assign each pixel to its proper class without blurring edges delimiting neighboring regions.rnIn this paper, we present an aerial image mapping approach that advantageously combines unsupervised segmentation with a supervised Markov model based recognition. The originality of the proposed system carries on three concepts: the introduction of an auto-adaptive circular-like window size while applying our stochastic classification to preserve region edges, the extension of the Dependency Tree-HMM to permit the computation of likelihood probability on windows of different shapes and sizes and a mechanism that checks the coherence of the indexing by integrating both segmentations results: from unsupervised over segmentation, regions are assigned to the predominating class with a focus on inner region pixels. To validate our approach, we achieved experiments on real world high resolution aerial images. The obtained results outperform those obtained by supervised classification alone.
机译:任何图像像素分类系统的一个重要挑战是正确地将每个像素分配给其适当的类别,而不会模糊界定相邻区域的边缘。在本文中,我们提出了一种航空图像映射方法,该方法有利地将无监督分割与基于监督马尔可夫模型的识别相结合。所提出系统的独创性包含三个概念:引入自适应圆形窗口大小,同时应用我们的随机分类来保留区域边缘,对依赖树HMM进行扩展以允许计算窗口上的似然率具有不同形状和大小的特征,以及通过整合两个分割结果来检查索引一致性的机制:从无监督过度分割开始,将区域分配给主要类别,重点放在内部区域像素上。为了验证我们的方法,我们在现实世界的高分辨率航拍图像上进行了实验。获得的结果优于仅通过监督分类获得的结果。

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