From Event: SPIE Optical Engineering + Applications, 2019
We investigate deep neural networks to reconstruct and classify hyperspectral images from compressive sensing measurements. Hyperspectral sensors provide detailed spectral information to differentiate materials. However, traditional imagers require scanning to acquire spatial and spectral information, which increases collection time. Compressive sensing is a technique to encode signals into fewer measurements. It can speed acquisition time, but the reconstruction can be computationally intensive. First we describe multilayer perceptrons to reconstruct compressive hyperspectral images. Then we compare two different inputs to machine learning classifiers: compressive sensing measurements and the reconstructed hyperspectral image. The classifiers include support vector machines, K nearest neighbors, and three neural networks (3D convolutional neural networks and recurrent neural networks). The results show that deep neural networks can speed up the time for the acquisition, reconstruction, and classification of compressive hyperspectral images.
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Dennis J. Lee, "Deep neural networks for compressive hyperspectral imaging," Proc. SPIE 11130, Imaging Spectrometry XXIII: Applications, Sensors, and Processing, 1113006 (Presented at SPIE Optical Engineering + Applications: August 11, 2019; Published: 6 September 2019); https://doi.org/10.1117/12.2528048.