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Contribution of non-negative matrix factorization to the classification of remote sensing images

机译:非负矩阵分解对遥感图像分类的贡献

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Remote sensing has become an unavoidable tool for better managing our environment, generally by realizing maps of land cover using classification techniques. The classification process requires some pre-processing, especially for data size reduction. The most usual technique is Principal Component Analysis. Another approach consists in regarding each pixel of the multispectral image as a mixture of pure elements contained in the observed area. Using Blind Source Separation (BSS) methods, one can hope to unmix each pixel and to perform the recognition of the classes constituting the observed scene. Our contribution consists in using Non-negative Matrix Factorization (NMF) combined with sparse coding as a solution to BSS, in order to generate new images (which are at least partly separated images) using HRV SPOT images from Oran area (Algeria). These images are then used as inputs of a supervised classifier integrating textural information. The results of classifications of these "separated" images show a clear improvement (correct pixel classification rate improved by more than 20%) compared to classification of initial (i.e. non separated) images. These results show the contribution of NMF as an attractive pre-processing for classification of multispectral remote sensing imagery.
机译:遥感已成为一种不可避免的工具,可更好地管理环境,通常通过使用分类技术实现陆地覆盖的地图。分类过程需要一些预处理,尤其是减少数据大小。最常见的技术是主要成分分析。另一种方法包括关于多光谱图像的每个像素作为观察区域中包含的纯元素的混合物。使用盲源分离(BSS)方法,可以希望对每个像素进行密封,并执行构成观察到的场景的类的识别。我们的贡献在于使用非负矩阵分解(NMF)与稀疏编码作为解决BSS相结合,以产生使用HRV SPOT图片来自奥兰区域(阿尔及利亚)新的图像(其至少部分地分离的图像)。然后将这些图像用作集成纹理信息的监督分类器的输入。这些“分离”分类的结果的图像显示了明显的改进相比的初始分类(由20%以上的改善正确的像素分类率)(即,非分离的)图像。这些结果显示了NMF作为多光谱遥感图像分类的有吸引力预处理的贡献。

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