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5 November 2015Compressive optical remote sensing via fractal classification
High resolution and large field of view are two major development trends in optical remote sensing imaging. But these trends will cause the difficult problem of mass data processing and remote sensor design under the limitation of conventional sampling method. Therefore, we will propose a novel optical remote sensing imaging method based on compressed sensing theory and fractal feature extraction in this study. We could utilize the result of fractal classification to realize the selectable partitioned image recovery with undersampling measurement. The two experiments illustrate the availability and feasibility of this new method.
Quan-sen Sun andJi-xin Liu
"Compressive optical remote sensing via fractal classification", Proc. SPIE 9795, Selected Papers of the Photoelectronic Technology Committee Conferences held June–July 2015, 97950S (5 November 2015); https://doi.org/10.1117/12.2211605
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Quan-sen Sun, Ji-xin Liu, "Compressive optical remote sensing via fractal classification," Proc. SPIE 9795, Selected Papers of the Photoelectronic Technology Committee Conferences held June–July 2015, 97950S (5 November 2015); https://doi.org/10.1117/12.2211605