Compressive spectral imaging (CSI) has emerged as an attractive compression and sensing technique, primarily to sense spectral regions where traditional systems result in highly costly such as in the near-infrared spectrum. Recently, it has been shown that spectral classification can be performed directly in the compressive domain, considering the amount of spectral information embedded in the measurements, skipping the reconstruction step. Consequently, the classification quality directly depends on the set of coding patterns employed in the sensing step. Therefore, this work proposes an end-to-end approach to jointly design the coding patterns used in CSI and the network parameters to perform spectral classification directly from the embedded near-infrared compressive measurements. Extensive simulation on the three-dimensional coded aperture snapshot spectral imaging (3D-CASSI) system validates that the proposed design outperforms traditional and random design in up to 10% of classification accuracy.
翻译:压缩光谱成像(CSI)已成为一种有吸引力的压缩和感测技术,主要用于感测光谱区域,在这些区域,传统系统导致诸如近红外频谱等高成本;最近,考虑到测量中嵌入的光谱信息数量,可以直接在压缩领域进行光谱分类,跳过重建步骤;因此,分类质量直接取决于在感测步骤中使用的一套编码模式;因此,这项工作建议采取端到端办法,共同设计CSI使用的编码模式和网络参数,直接从嵌入的近红外压缩测量进行光谱分类;对三维编码孔径光学光谱成像(3D-CASSI)系统进行广泛模拟,证实拟议的设计在分类精确度达到10%的情况下超越了传统和随机设计。