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    Generalized Tensor Summation Compressive Sensing Network (GTSNET): An Easy to Learn Compressive Sensing Operation

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    Generalized_Tensor_Summation_Compressive_Sensing_Network_GTSNET_An_Easy_to_Learn_Compressive_Sensing_Operation.pdf (4.454Mb)
    Date
    2023
    Author
    Yamaç, Mehmet
    Akpinar, Ugur
    Sahin, Erdem
    Kiranyaz, Serkan
    Gabbouj, Moncef
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    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.
    DOI/handle
    http://dx.doi.org/10.1109/TIP.2023.3318946
    http://hdl.handle.net/10576/68729
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    • Electrical Engineering [‎2871‎ items ]

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