Binary Sensing Matrix Design for Compressive Imaging Measurements
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چکیده
We design a binary sensing matrix in compressive imaging to reduce the capture time while maintaining image reconstruction performance, by minimizing the distance between the binary matrix and a modified principal component analysis sensing matrix. OCIS codes: (110.1758) Computational imaging, (100.3010) Image reconstruction technique.
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تاریخ انتشار 2014