A New Hyperspectral Compressed Sensing Method for Efficient Satellite Communications

Chia-Hsiang Lin, J. Bioucas-Dias, Tzu-Hsuan Lin, Yen-Cheng Lin, Chao-Yuan Kao
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引用次数: 4

Abstract

Directly transmitting the huge amount of typical hyperspectral data acquired on satellite to the ground station is inefficient. This paper proposes a new compressed sensing strategy for hyperspectral imagery on spaceborne sensors systems. As the onboard computing/storage resources are limited, e.g., on CubeSat, the measurement strategy should be computationally very light. Furthermore, considering the limited communication bandwidth, a very low sampling rate is desired. Our encoder accounts for these requirements by separately recording the spatial details and the spectral information, both of which essentially require only simple averaging operators. Our measurement strategy naturally induces a reconstruction criterion that can be elegantly interpreted as a well-known fusion problem in satellite remote sensing, allowing the adoption of a convex optimization method for simple and fast decoding. Our method, termed spatial/spectral compressed encoder (SPACE), is experimentally evaluated on real hyperspectral data, showing superior efficacy in terms of both sampling rate and reconstruction accuracy.
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一种高效卫星通信的高光谱压缩感知新方法
将卫星上采集到的大量典型高光谱数据直接传输到地面站是低效的。提出了一种新的星载高光谱图像压缩感知策略。由于机载计算/存储资源有限,例如在CubeSat上,测量策略的计算量应该非常轻。此外,考虑到有限的通信带宽,需要非常低的采样率。我们的编码器通过分别记录空间细节和光谱信息来满足这些要求,这两者本质上只需要简单的平均算子。我们的测量策略自然地引出了一个重建标准,可以优雅地解释为卫星遥感中众所周知的融合问题,允许采用凸优化方法进行简单快速的解码。我们的方法被称为空间/光谱压缩编码器(SPACE),在真实的高光谱数据上进行了实验评估,在采样率和重建精度方面都显示出优越的效果。
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