Vargas Edwin, Espitia Oscar, Arguello Henry, Tourneret Jean-Yves
IEEE Trans Image Process. 2018 Nov 29. doi: 10.1109/TIP.2018.2884081.
Compressive spectral imagers reduce the number of sampled pixels by coding and combining the spectral information. However, sampling compressed information with simultaneous high spatial and high spectral resolution demands expensive high-resolution sensors. This work introduces a model allowing data from high spatial/low spectral and low spatial/high spectral resolution compressive sensors to be fused. Based on this model, the compressive fusion process is formulated as an inverse problem that minimizes an objective function defined as the sum of a quadratic data fidelity term and smoothness and sparsity regularization penalties. The parameters of the different sensors are optimized and the choice of an appropriate regularization is studied in order to improve the quality of the high resolution reconstructed images. Simulation results conducted on synthetic and real data, with different CS imagers, allow the quality of the proposed fusion method to be appreciated.
压缩光谱成像仪通过对光谱信息进行编码和组合来减少采样像素的数量。然而,要同时以高空间分辨率和高光谱分辨率对压缩信息进行采样,需要昂贵的高分辨率传感器。这项工作引入了一个模型,该模型允许融合来自高空间/低光谱分辨率和低空间/高光谱分辨率压缩传感器的数据。基于该模型,压缩融合过程被表述为一个反问题,该反问题使一个目标函数最小化,该目标函数被定义为二次数据保真项与平滑度和稀疏性正则化惩罚项之和。对不同传感器的参数进行了优化,并研究了合适正则化的选择,以提高高分辨率重建图像的质量。在合成数据和真实数据上使用不同的压缩感知成像仪进行的模拟结果,使我们能够评估所提出的融合方法的质量。