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Unsupervised land cover classification in multispectral imagery with sparse representations on learned dictionaries

机译:多光谱图像中无监督的土地覆盖分类,其中学习词典的表示稀疏

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Techniques for automated feature extraction, including neuroscience-inspired machine vision, are of current interest in the areas of climate change monitoring, change detection, and Land Use/Land Cover classification using satellite image data. We describe an approach for automatic classification of land cover in multispectral satellite imagery of the Arctic using sparse representations over learned dictionaries. We demonstrate our method using DigitalGlobe Worldview-2 visibleear infrared high spatial resolution imagery. We use a Hebbian learning rule to build spectral-textural dictionaries that are adapted to the data. We learn our dictionaries from millions of overlapping image patches and then use a pursuit search to generate sparse classification features. These sparse representations of pixel patches are used to perform unsupervised k-means clustering into land-cover categories. Our approach combines spectral and spatial textural characteristics to detect geologic, vegetative, and hydrologic features. We compare our technique to standard remote sensing classification algorithms. Our results suggest that neuroscience-based models are a promising approach to practical pattern recognition problems in remote sensing, even for datasets using spectral bands not found in natural visual systems.
机译:自动特征提取技术,包括神经科学灵感机器视觉,具有当前利益在使用卫星图像数据的气候变化监测,变更检测和土地使用/陆地覆盖分类领域的兴趣。我们描述了一种使用稀疏表示在学习词典中的稀疏表示自动分类北极的多光谱卫星图像中的陆地覆盖的方法。我们使用DigitalGlobe WorldView-2可见/近红外高空间分辨率图像展示了我们的方法。我们使用Hebbian学习规则来构建适应数据的谱 - 纹理字典。我们从数百万重叠的图像修补程序中了解我们的词典,然后使用追踪搜索来生成稀疏分类功能。这些像素补丁的稀疏表示用于将无监督的K-means群集成陆地覆盖类别。我们的方法结合了光谱和空间纹理特征来检测地质,营养和水文特征。我们将技术与标准遥感分类算法进行比较。我们的结果表明,基于神经科学的模型是遥感中实际模式识别问题的有希望的方法,即使使用自然视觉系统中未发现的光谱带的数据集。

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