Matte based generation of land cover maps

K. Bahirat, S. Chaudhuri
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引用次数: 2

Abstract

A novel supervised technique for the generation of spatially consistent land cover maps based on class-matting is presented in this paper. This method takes advantage of both standard supervised classification technique and natural image matting. It adaptively exploits the spatial contextual information contained in the neighborhood of each pixel through the use of image matting to reduce the incongruence inherent in pixel-wise, radiometric classification of multi-spectral remote sensing data, providing a more spatially homogeneous land-cover map besides yielding a better accuracy. In order to make image matting possible for N-class land cover map generation, we extend the basic alpha matting problem into N independent matting problems, each conforming to one particular class. The user input required for the alpha matting algorithm in terms of initially identifying a few sample regions belonging to a particular class (known as the foreground object in matting) is obtained automatically using the supervised ML classifier. Experimental results obtained on multispectral data sets confirm the effectiveness of the proposed system.
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基于亚光的土地覆盖地图生成
提出了一种基于类抠图的有监督生成空间一致性土地覆盖图的新方法。该方法结合了标准监督分类技术和自然图像抠图技术。它通过使用图像抠图自适应地利用包含在每个像素附近的空间上下文信息,以减少多光谱遥感数据在像素方面固有的不一致,辐射分类,提供一个空间上更均匀的土地覆盖地图,除了产生更好的精度。为了使生成N类土地覆盖图的图像抠图成为可能,我们将基本的alpha抠图问题扩展为N个独立的抠图问题,每个问题符合一个特定的类别。alpha抠图算法所需的用户输入,在最初识别属于特定类的几个样本区域(称为抠图中的前景对象)方面,使用有监督的ML分类器自动获得。在多光谱数据集上的实验结果证实了该系统的有效性。
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