基于互信息的高光谱成像小波变换学习

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
S. Gehlot, Naushad Ansari, Anubha Gupta
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引用次数: 1

摘要

高光谱成像(HSI)在许多应用中都很有用,包括医疗保健、地球科学和远程监视。一般来说,恒生指数的数据集很大。使用压缩感知可以大大减少这些数据,只要有一个强大的方法来重建完整的图像数据的质量。本文提出了一种基于互信息的小波变换学习方法,即WTL-I,用于压缩感知三维高光谱图像数据的重建。在这里,通过利用光谱波段间的互信息和光谱波段内的空间信息,从压缩感测的三维HSI数据中学习小波变换。这个学习到的小波基随后被用作恢复完整的恒生指数数据的稀疏化基础。在三个基准恒生指数数据集上进行了详细的实验。除了对重构HSI数据的定量和定性结果进行评估外,该方法的性能还在使用深度学习分类器进行HSI数据分类的应用中得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WTL-I: Mutual Information-Based Wavelet Transform Learning for Hyperspectral Imaging
Hyperspectral imaging (HSI) is useful in many applications, including healthcare, geosciences, and remote surveillance. In general, the HSI data set is large. The use of compressive sensing can reduce these data considerably, provided there is a robust methodology to reconstruct the full image data with quality. This article proposes a method, namely, WTL-I, that is mutual information-based wavelet transform learning for the reconstruction of compressively sensed three-dimensional (3D) hyperspectral image data. Here, wavelet transform is learned from the compressively sensed HSI data in 3D by exploiting mutual information across spectral bands and spatial information within the spectral bands. This learned wavelet basis is subsequently used as the sparsifying basis for the recovery of full HSI data. Elaborate experiments have been conducted on three benchmark HSI data sets. In addition to evaluating the quantitative and qualitative results on the reconstructed HSI data, performance of the proposed method has also been validated in the application of HSI data classification using a deep learning classifier.
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