论文标题
通过双分辨率压缩测量矩阵分析进行光谱图像分类的特征融合
Feature Fusion via Dual-resolution Compressive Measurement Matrix Analysis For Spectral Image Classification
论文作者
论文摘要
在压缩光谱成像(CSI)框架中,已经提出了不同的体系结构以从压缩测量中恢复高分辨率光谱图像。由于CSI体系结构紧凑地捕获光谱图像的相关信息,因此最近提出了各种从压缩样品中提取分类特征的方法。但是,这些技术需要一个功能提取过程,该过程使用嵌入编码的孔径模式中的信息来重新测量测量。在本文中,提出了一种直接从双分辨率压缩测量值融合特征的方法进行光谱图像分类。更确切地说,融合方法是作为一个反问题配制的,该问题从压缩测量值估算了高空间分辨率和低维特征带。为此,使用嵌入在编码的孔径模式中的信息对融合特征的降级版本描述为熔融特征的降级版本的分解矩阵。此外,我们既包括刺激性促进性,又包括对融合问题的总变化(TV)正则化术语,以便考虑邻居像素之间的相关性,从而提高基于像素的分类器的准确性。为了解决融合问题,我们根据乘数的交替方向方法(Accelerated-ADMM)的加速变体描述了一种算法。此外,引入了包括开发的融合方法和多层神经网络的分类方法。最后,在三个遥感光谱图像和实验室中捕获的一组压缩测量值上评估了所提出的方法。广泛的模拟表明,所提出的分类方法在各种绩效指标下的其他方法都优于其他方法。
In the compressive spectral imaging (CSI) framework, different architectures have been proposed to recover high-resolution spectral images from compressive measurements. Since CSI architectures compactly capture the relevant information of the spectral image, various methods that extract classification features from compressive samples have been recently proposed. However, these techniques require a feature extraction procedure that reorders measurements using the information embedded in the coded aperture patterns. In this paper, a method that fuses features directly from dual-resolution compressive measurements is proposed for spectral image classification. More precisely, the fusion method is formulated as an inverse problem that estimates high-spatial-resolution and low-dimensional feature bands from compressive measurements. To this end, the decimation matrices that describe the compressive measurements as degraded versions of the fused features are mathematically modeled using the information embedded in the coded aperture patterns. Furthermore, we include both a sparsity-promoting and a total-variation (TV) regularization terms to the fusion problem in order to consider the correlations between neighbor pixels, and therefore, improve the accuracy of pixel-based classifiers. To solve the fusion problem, we describe an algorithm based on the accelerated variant of the alternating direction method of multipliers (accelerated-ADMM). Additionally, a classification approach that includes the developed fusion method and a multilayer neural network is introduced. Finally, the proposed approach is evaluated on three remote sensing spectral images and a set of compressive measurements captured in the laboratory. Extensive simulations show that the proposed classification approach outperforms other approaches under various performance metrics.