2023
DOI: 10.48550/arxiv.2301.12332
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Towards Vision Transformer Unrolling Fixed-Point Algorithm: a Case Study on Image Restoration

Abstract: The great success of Deep Neural Networks (DNNs) has inspired the algorithmic development of DNN-based Fixed-Point (DNN-FP) for computer vision tasks. DNN-FP methods, trained by Back-Propagation Through Time or computing the inaccurate inversion of the Jacobian, suffer from inferior representation ability. Motivated by the representation power of the Transformer, we propose a framework to unroll the FP and approximate each unrolled process via Transformer blocks, called FPformer. To reduce the high consumption… Show more

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