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Low-dimensional enhanced superpixel representation with homogeneity testing for unmixing of hyperspectral imagery

机译:低尺寸增强的超像素表示,具有均匀性测试,对高光谱图像的突出性测试

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Recently superpixel-based approaches have been proposed for dimensionality reduction (DR) in hyperspectral images. The basic assumption of this approach is that the superpixel over-segmentation segments the image into small homogeneous areas. A low-dimensional (LD) image representation is obtained by using the average of the superpixels, which are then used in other image processing tasks up the processing chain. Due to superpixel-segmentation algorithm limitations, the region inside a superpixel may not be homogeneous. Therefore, the average may not be an adequate representation for the superpixel, leading to inaccuracies in the low dimensional representation resulting in errors in the image processing tasks or analysis. Here we present an enhanced superpixel-based dimensionality reduction approach that incorporates homogeneity testing of superpixels. Homogeneous superpixels are represented by their mean but heterogeneous superpixels are represented by multiple representative signatures selected using the SVDSS column subset selection algorithm. The representative signatures for the homogeneous and heterogeneous superpixels provide an improved low-dimensional representation for the hyperspectral image that better captures the image structure. We present experiments applying the proposed enhanced and the conventional superpixel dimensionality reduction approaches to unmixing using the constrained non-negative matrix factorization (cNMF). A subset of data from the Washington DC Mall HYDICE image is utilized. In the experiments, the enhanced superpixel-based dimensionality-reduction approach results in better unmixing results compared to the conventional approach and to unmixing using the full data set.
机译:最近,已经提出了基于超顶链的方法,用于高光谱图像中的维数减少(DR)。这种方法的基本假设是超像素过度分割将图像分成小均匀区域。通过使用超像素的平均值获得低维(LD)图像表示,然后在其他图像处理中使用的超像素来获得处理链。由于超顶旋塞分割算法限制,超像素内的区域可能不是均匀的。因此,平均值可能不是超像素的足够表示,导致低维表示中的不准确性,导致图像处理任务或分析中的错误。在这里,我们提出了一种增强的基于超像素的维度减少方法,该方法包括超像素的均匀性测试。均匀的超像极限由它们的平均值而是异构的超像素由使用SVDS列子集选择算法选择的多个代表性签名表示。均匀和异构超顶链的代表性签名为高光谱图像提供了更好的低维表示,其更好地捕获图像结构。我们使用受约束的非负矩阵分解(CNMF)来提出提高增强和传统的超像素维度降低方法的实验。利用来自华盛顿特区MALL IDECY图像的数据子集。在实验中,与传统方法和使用完整数据集的传统方法相比,增强的基于超像素的维度减少方法导致更好的解密结果。

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