Generalized Tensor Summation Compressive Sensing Network (GTSNET): An Easy to Learn Compressive Sensing Operation
| Author | Yamaç, Mehmet |
| Author | Akpinar, Ugur |
| Author | Sahin, Erdem |
| Author | Kiranyaz, Serkan |
| Author | Gabbouj, Moncef |
| Available date | 2025-11-20T10:54:34Z |
| Publication Date | 2023 |
| Publication Name | IEEE Transactions on Image Processing |
| Resource | Scopus |
| Identifier | http://dx.doi.org/10.1109/TIP.2023.3318946 |
| Citation | M. Yamaç,, U. Akpinar, E. Sahin, S. Kiranyaz and M. Gabbouj, "Generalized Tensor Summation Compressive Sensing Network (GTSNET): An Easy to Learn Compressive Sensing Operation," in IEEE Transactions on Image Processing, vol. 32, pp. 5637-5651, 2023, doi: 10.1109/TIP.2023.3318946. |
| Citation | en |
| ISSN | 10577149 |
| Abstract | The efforts in compressive sensing (CS) literature can be divided into two groups: finding a measurement matrix that preserves the compressed information at its maximum level, and finding a robust reconstruction algorithm. In the traditional CS setup, the measurement matrices are selected as random matrices, and optimization-based iterative solutions are used to recover the signals. Using random matrices when handling large or multi-dimensional signals is cumbersome especially when it comes to iterative optimizations. Recent deep learning-based solutions increase reconstruction accuracy while speeding up recovery, but jointly learning the whole measurement matrix remains challenging. For this reason, state-of-the-art deep learning CS solutions such as convolutional compressive sensing network (CSNET) use block-wise CS schemes to facilitate learning. In this work, we introduce a separable multi-linear learning of the CS matrix by representing the measurement signal as the summation of the arbitrary number of tensors. As compared to block-wise CS, tensorial learning eases blocking artifacts and improves performance, especially at low measurement rates (MRs), such as {MRs} < 0.1. The software implementation of the proposed network is publicly shared at https://github.com/mehmetyamac/GTSNET. |
| Sponsor | This work was supported in part by the EU H2020 OpenDR, in part by the Academy of Finland AWcHA, and in part by Business Finland AMALIA. The associate editor coordinating the review of this manuscript and approving it for publication was Prof. Xiaolin Wu |
| Publisher | Institute of Electrical and Electronics Engineers Inc. |
| Subject | Compressive sensing deep reconstruction separable compressive learning tensorial compressive learning |
| Type | Article |
| Pagination | 5637-5651 |
| Volume Number | 32 |
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