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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >Hyperspectral image classification using wavelet transform-based smooth ordering
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Hyperspectral image classification using wavelet transform-based smooth ordering

机译:使用基于小波变换的平滑排序的高光谱图像分类

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To efficiently improve the accuracy of hyperspectral image (HSI) classification, the spatial information is usually fused with spectral information so that the classification performance can be enhanced. In this paper, we propose a new classification method called wavelet transform-based smooth ordering (WTSO). WTSO consists of three main components: wavelet transform for feature extraction, spectral-spatial based similarity measurement, smooth ordering based 1D embedding, and construction of final classifier using interpolation scheme. Specifically, wavelet transform is first imposed to decompose the HSI signal into approximate coefficients (ACs) and details coefficients (DCs). Then, to measure the similar level of pairwise samples, a novel metric is defined on the ACs, where the spatial information serves as the prior knowledge. Next, according to the measurement results, smooth ordering is applied so that the samples are aligned in a 1D space (called 1D embedding). Finally, since the reordering samples are smooth, the labels of test samples can be recovered using the simple 1D interpolation method. In the last step, in order to reduce the bias and improve accuracy, the final classifier is constructed using multiple 1D embeddings. The use of wavelet transform in WTSO can also reduce the high dimensionality of HSI data. By converting the hight-dimensional samples into a 1D ordering sequence, WTSO can reduce the computational cost, and simultaneously perform classification for the test samples. Note that in WTSO, the smooth ordering based 1D embedding and interpolation are executed in an iterative manner. And they will be terminated after finite steps. The proposed method is experimentally demonstrated on two real HSI datasets: IndianPines and University of Pavia, achieving promising results.
机译:为了有效地提高高光谱图像(HSI)分类的准确性,空间信息通常与光谱信息融合,从而可以增强分类性能。在本文中,我们提出了一种新的分类方法,称为基于小波变换的平滑排序(WTSO)。 WTSO由三个主要组件组成:小波变换,用于特征提取,基于光谱空间的相似度测量,基于光滑的排序的1D嵌入,以及使用插值方案的最终分类器的构建。具体地,首先施加小波变换以将HSI信号分解成近似系数(ACS)和细节系数(DCS)。然后,为了测量类似水平的成对样本,在ACS上定义了一种新的度量,其中空间信息用作先验知识。接下来,根据测量结果,施加平滑的排序,使得样品在1D空间(称为1D嵌入)中对齐。最后,由于重新排序的样品光滑,因此可以使用简单的1D插值方法回收测试样品标记。在最后一步中,为了降低偏差并提高精度,最终分类器使用多个1D嵌入式构建。 WTSO中的小波变换也可以降低HSI数据的高维度。通过将Hight维样本转换为1D订购序列,WTSO可以降低计算成本,并同时对测试样本进行分类。注意,在WTSO中,以迭代方式执行基于平滑的排序的1D嵌入和插值。他们将在有限步骤后终止。该方法在实验上展示了两个真正的HSI数据集:印第安人州和帕维亚大学,实现了有希望的结果。

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