Cssnet: A Learning Algorithm For The Segmentation Of Compressed Hyperspectral Images
2022 12th Workshop on Hyperspectral Imaging and Signal Processing: Evolution in Remote Sensing (WHISPERS)(2022)
摘要
The paper presents a semantic segmentation method which is directly applicable to compressed hyperspectral images acquired with a dual-disperser CASSI instrument. It intro-duses an algorithm based on a shallow neural network that exploits the spectral filtering performed by the optical system and the compressed hyperspectral images measured by the detector. Encouraging results that exploit 50 to 100 less data than the whole hyperspectral datacube on PaviaU and IndianPines datasets are presented.
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关键词
Compressed hyperspectral imaging,DualDisperser CASSI,Compressed images segmentation
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