Recurrent Neural Networks for Snapshot Compressive Imaging

IEEE Transactions on Pattern Analysis and Machine Intelligence(2023)

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摘要
Conventional high-speed and spectral imaging systems are expensive and they usually consume a significant amount of memory and bandwidth to save and transmit the high-dimensional data. By contrast, snapshot compressive imaging (SCI), where multiple sequential frames are coded by different masks and then summed to a single measurement, is a promising idea to use a 2-dimensional camera to capture 3-dimensional scenes. In this paper, we consider the reconstruction problem in SCI, i.e., recovering a series of scenes from a compressed measurement. Specifically, the measurement and modulation masks are fed into our proposed network, dubbed BI directional R ecurrent N eural networks with A dversarial T raining (BIRNAT) to reconstruct the desired frames. BIRNAT employs a deep convolutional neural network with residual blocks and self-attention to reconstruct the first frame, based on which a bidirectional recurrent neural network is utilized to sequentially reconstruct the following frames. Moreover, we build an extended BIRNAT-color algorithm for color videos aiming at joint reconstruction and demosaicing. Extensive results on both video and spectral, simulation and real data from three SCI cameras demonstrate the superior performance of BIRNAT.
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关键词
Snapshot compressive imaging,compressive sensing,deep learning,convolutional neural networks,recurrent neural network,attention,adversarial training,coded aperture compressive temporal imaging (CACTI),coded aperture snapshot spectral imaging (CASSI)
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