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首页> 外文期刊>Journal of electronic imaging >Deep neural network classification in the compressively sensed spectral image domain
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Deep neural network classification in the compressively sensed spectral image domain

机译:压缩感光谱图像域中的深度神经网络分类

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摘要

Hyperspectral (HS) images hold both spatial and spectral information of an imaged scene. This allows one to take advantage of the distinct spectral signatures of materials to perform classification tasks. Since HS data are also typically very large and redundant, it is appealing to utilize compressive sensing (CS) techniques for HS acquisition. CS avoids the need for postacquisition digital compression, as the compression is inherently performed electrooptically during acquisition. We research the performance of deep learning classification applied directly on the compressive measurements. We show that by using a spectral CS technique we previously developed, it is possible to reduce the captured data by an order of magnitude without significant loss in the classification performance. (c) 2021 SPIE and IS&T [DOI: 10.1117/1.JEI.30.4 .041406]
机译:高光谱(HS)图像保持成像场景的空间和光谱信息。 这允许人们利用材料的不同光谱签名来执行分类任务。 由于HS数据通常非常大而冗余,因此利用用于HS采集的压缩感测(CS)技术是吸引力的。 CS避免了对Postacquisition数字压缩的需求,因为在采集期间固有地进行压缩。 我们研究了直接应用于压缩测量的深度学习分类的性能。 我们表明,通过使用先前开发的频谱CS技术,可以通过在分类性能中的显着损失,从大幅度减小捕获的数据。 (c)2021 SPIE和IS&T [DOI:10.1117 / 1.JEI.30.4 .041406]

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