Hyperspectral image (HSI) contains both spatial pattern and spectral information which has been widely used in food safety, remote sensing, and medical detection. However, the acquisition of hyperspectral images is usually costly due to the complicated apparatus for the acquisition of optical spectrum. Recently, it has been reported that HSI can be reconstructed from single RGB image using convolution neural network (CNN) algorithms. Compared with the traditional hyperspectral cameras, the method based on CNN algorithms is simple, portable and low cost. In this study, we focused on the influence of the RGB camera spectral sensitivity (CSS) on the HSI. A Xenon lamp incorporated with a monochromator were used as the standard light source to calibrate the CSS. And the experimental results show that the CSS plays a significant role in the reconstruction accuracy of an HSI. In addition, we proposed a new HSI reconstruction network where the dimensional structure of the original hyperspectral datacube was modified by 3D matrix transpose to improve the reconstruction accuracy.
翻译:超光谱图像(HSI)包含空间模式和光谱信息,广泛用于食品安全、遥感和医学探测,然而,获取超光谱图像通常费用昂贵,因为获取光谱的仪器复杂。最近,据报告,HSI可以使用卷发神经网络算法从单一 RGB 图像中重建。与传统的超光谱相机相比,基于CNN算法的方法简单、便携和低成本。在本研究中,我们侧重于RGB相机光谱敏感度(CSS)对HSI的影响。与单色板结合的Xenon 灯被用作校准CSS的标准光源。实验结果显示,CSS在重建HSI的精度方面起着重要作用。此外,我们提议建立一个新的HSI重建网络,通过3D矩阵转换对原超光谱数据管的维度结构进行修改,以提高重建精度。