Adaptive and Cascaded Compressive Sensing
- URL: http://arxiv.org/abs/2203.10779v1
- Date: Mon, 21 Mar 2022 07:50:24 GMT
- Title: Adaptive and Cascaded Compressive Sensing
- Authors: Chenxi Qiu, Tao Yue, Xuemei Hu
- Abstract summary: Scene-dependent adaptive compressive sensing (CS) has been a long pursuing goal which has huge potential in significantly improving the performance of CS.
We propose a restricted isometry property (RIP) condition based error clamping, which could directly predict the reconstruction error.
We also propose a cascaded feature fusion reconstruction network that could efficiently utilize the information derived from different adaptive sampling stages.
- Score: 10.162966219929887
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Scene-dependent adaptive compressive sensing (CS) has been a long pursuing
goal which has huge potential in significantly improving the performance of CS.
However, without accessing to the ground truth image, how to design the
scene-dependent adaptive strategy is still an open-problem and the improvement
in sampling efficiency is still quite limited. In this paper, a restricted
isometry property (RIP) condition based error clamping is proposed, which could
directly predict the reconstruction error, i.e. the difference between the
currently-stage reconstructed image and the ground truth image, and adaptively
allocate samples to different regions at the successive sampling stage.
Furthermore, we propose a cascaded feature fusion reconstruction network that
could efficiently utilize the information derived from different adaptive
sampling stages. The effectiveness of the proposed adaptive and cascaded CS
method is demonstrated with extensive quantitative and qualitative results,
compared with the state-of-the-art CS algorithms.
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