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Topic Modelling for Object-Based Unsupervised Classification of VHR Panchromatic Satellite Images Based on Multiscale Image Segmentation

机译:基于多尺度图像分割的VHR全色卫星图像基于对象的无监督分类的主题建模

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Image segmentation is a key prerequisite for object-based classification. However, it is often difficult, or even impossible, to determine a unique optimal segmentation scale due to the fact that various geo-objects, and even an identical geo-object, present at multiple scales in very high resolution (VHR) satellite images. To address this problem, this paper presents a novel unsupervised object-based classification for VHR panchromatic satellite images using multiple segmentations via the latent Dirichlet allocation (LDA) model. Firstly, multiple segmentation maps of the original satellite image are produced by means of a common multiscale segmentation technique. Then, the LDA model is utilized to learn the grayscale histogram distribution for each geo-object and the mixture distribution of geo-objects within each segment. Thirdly, the histogram distribution of each segment is compared with that of each geo-object using the Kullback-Leibler (KL) divergence measure, which is weighted with a constraint specified by the mixture distribution of geo-objects. Each segment is allocated a geo-object category label with the minimum KL divergence. Finally, the final classification map is achieved by integrating the multiple classification results at different scales. Extensive experimental evaluations are designed to compare the performance of our method with those of some state-of-the-art methods for three different types of images. The experimental results over three different types of VHR panchromatic satellite images demonstrate the proposed method is able to achieve scale-adaptive classification results, and improve the ability to differentiate the geo-objects with spectral overlap, such as water and grass, and water and shadow, in terms of both spatial consistency and semantic consistency.
机译:图像分割是基于对象分类的关键前提。但是,由于不同的地理对象,甚至同一地理对象在高分辨率(VHR)卫星图像中都以多个比例存在,因此确定唯一的最佳分割比例通常是困难的,甚至是不可能的。为了解决这个问题,本文提出了一种新的基于无监督对象的VHR全色卫星图像分类方法,该方法通过潜在Dirichlet分配(LDA)模型使用多个分割方法。首先,借助于通用的多尺度分割技术,产生了原始卫星图像的多个分割图。然后,利用LDA模型学习每个地理对象的灰度直方图分布以及每个段内地理对象的混合分布。第三,使用Kullback-Leibler(KL)散度度量将每个段的直方图分布与每个地理对象的直方图分布进行比较,该度量使用由地理对象的混合分布指定的约束进行加权。每个细分都分配有一个KL差异最小的地理对象类别标签。最后,通过整合不同比例的多个分类结果来获得最终的分类图。设计了广泛的实验评估,以针对三种不同类型的图像将我们的方法的性能与某些最新方法的性能进行比较。在三种不同类型的VHR全色卫星图像上的实验结果表明,该方法能够实现尺度自适应的分类结果,并提高了区分具有光谱重叠的水文,水草和阴影等地理对象的能力。就空间一致性和语义一致性而言。

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