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Spectral-spatial hyperspectral image classification using super-pixel-based spatial pyramid representation

机译:基于超像素的空间金字塔表示的光谱 - 空间高光谱图像分类

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Spatial pyramid matching has demonstrated its power for image recognition task by pooling features from spatially increasingly fine sub-regions. Motivated by the concept of feature pooling at multiple pyramid levels, we propose a novel spectral-spatial hyperspectral image classification approach using superpixel-based spatial pyramid representation. This technique first generates multiple superpixel maps by decreasing the superpixel number gradually along with the increased spatial regions for labelled samples. By using every superpixel map, sparse representation of pixels within every spatial region is then computed through local max pooling. Finally, features learned from training samples are aggregated and trained by a support vector machine (SVM) classifier. The proposed spectral-spatial hyperspectral image classification technique has been evaluated on two public hyperspectral datasets, including the Indian Pines image containing 16 different agricultural scene categories with a 20m resolution acquired by AVIRIS and the University of Pavia image containing 9 land-use categories with a 1.3m spatial resolution acquired by the ROSIS-03 sensor. Experimental results show significantly improved performance compared with the state-of-the-art works. The major contributions of this proposed technique include (1) a new spectral-spatial classification approach to generate feature representation for hyperspectral image, (2) a complementary yet effective feature pooling approach, i.e. the superpixel-based spatial pyramid representation that is used for the spatial correlation study, (3) evaluation on two public hyperspectral image datasets with superior image classification performance.
机译:空间金字塔匹配已经通过空间越来越精细的子区域汇集特征来证明了其用于图像识别任务的动力。通过多个金字塔水平的特征池的概念激励,我们提出了一种使用基于超像素的空间金字塔表示的新型光谱空间高光谱图像分类方法。该技术首先通过逐渐减小超像素数以及标记样本的增加的空间区域来产生多个超像素映射。通过使用每个SuperPixel映射,然后通过局部最大池计算每个空间区域内的像素内的稀疏表示。最后,通过支持向量机(SVM)分类器聚集和训练从训练样本中学到的功能。已经在两个公共超光谱数据集中评估了所提出的光谱空间高光谱图像分类技术,包括印度松树图像,其中包含16种不同的农业场景类别,由Aviris和帕维亚大学包含9个土地使用类别1.3M rosis-03传感器获得的空间分辨率。实验结果表明,与最先进的工作相比,性能显着提高。该提出的技术的主要贡献包括(1)新的频谱空间分类方法,用于生成高光谱图像的特征表示,(2)互补但有效的特征池方法,即用于用于的超顶链的空间金字塔表示空间相关研究,(3)对具有卓越图像分类性能的两个公共超光照图像数据集的评估。

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