Volume 32 Issue 1
Jan.  2023
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LI Hongliang, DAI Feng, ZHAO Qiang, et al., “Non-uniform Compressive Sensing Imaging Based on Image Saliency,” Chinese Journal of Electronics, vol. 32, no. 1, pp. 159-165, 2023, doi: 10.23919/cje.2019.00.028
Citation: LI Hongliang, DAI Feng, ZHAO Qiang, et al., “Non-uniform Compressive Sensing Imaging Based on Image Saliency,” Chinese Journal of Electronics, vol. 32, no. 1, pp. 159-165, 2023, doi: 10.23919/cje.2019.00.028

Non-uniform Compressive Sensing Imaging Based on Image Saliency

doi: 10.23919/cje.2019.00.028
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  • Author Bio:

    Hongliang LI reveived the B.S. degree in computer science and technology from the Xidian University, China, in 2011, and the M.S. degree in the Institute of Computing Technology, Chinese Academy of Sciences (CAS), in 2014. He is currently pursuing the Ph.D. degree with the Institute of Computing Technology, CAS. His current research interests include the compressive sensing, computational imaging, machine learning, and neural network. (Email: lihongliang@ict.ac.cn)

    Feng DAI (corresponding author) received the Ph.D. degree in the Institute of Computing Technology, CAS, Beijing, China, in 2008. He is currently working as an Associate Professor in the Multimedia Computing Group, Advanced Research Lab, Institute of Computing Technology, CAS. His research interests include image/video processing, computational imaging, and computer vision. (Email: fdai@ict.ac.cn)

  • Received Date: 2019-01-18
  • Accepted Date: 2019-05-24
  • Available Online: 2022-06-09
  • Publish Date: 2023-01-05
  • For more effective image sampling, compressive sensing (CS) imaging methods based on image saliency have been proposed in recent years. Those methods assign higher measurement rates to salient regions, but lower measurement rate to non-salient regions to improve the performance of CS imaging. However, those methods are block-based, which are difficult to apply to actual CS sampling, as each photodiode should strictly correspond to a block of the scene. In our work, we propose a non-uniform CS imaging method based on image saliency, which assigns higher measurement density to salient regions and lower density to non-salient regions, where measurement density is the number of pixels measured in a unit size. As the dimension of the signal is reduced, the quality of reconstructed image will be improved theoretically, which is confirmed by our experiments. Since the scene is sampled as a whole, our method can be easily applied to actual CS sampling. To verify the feasibility of our approach, we design and implement a hardware sampling system, which can apply our non-uniform sampling method to obtain measurements and reconstruct the images. To our best knowledge, this is the first CS hardware sampling system based on image saliency.
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