Deep neural networks have established themselves as the dominant approach for image restoration problems such as deblurring and denoising. However, the high computational complexity of state-of-the-art designs prevents their effective use in resource-constrained scenarios such as edge devices, where power-efficient inference is key. In this paper, we present a state-of-the-art backbone neural network design for image restoration, called MuFIR (Multiplication-Free Image Restoration), that is entirely devoid of multiplication operations. When coupled with suitable hardware implementations, the proposed concept enables fast and low-complexity inference by requiring only integer additions and bitshifts. This is made possible by several ingredients proposed in this work, namely ternary weight quantization to eliminate multiplications in the main network layers, careful use of novel normalizations to ensure stability of the ternarized architecture, and quantization of specific parameters and activations to combinations of powers of two, to remove the remaining multiplications. This is coupled with an annealed training procedure which progressively transforms a conventional network into our multiplication-free design. We experimentally show that, despite the all-integer operations and the lack of multiplications, MuFIR achieves performance close to that of full-precision models in terms of deblurring and denoising quality. • Fully multiplication-free neural network backbone for image restoration. • Novel LayerNorm avoiding multiplications via average absolute deviation. • Annealed training progressively adapts model from full-precision to quantized. • Combinations of bitshift operations fully replace multiplications. • Achieves competitive performance with only addition and bitwise operations.
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Luca Dordoni
Diego Valsesia
Enrico Magli
Neurocomputing
Polytechnic University of Turin
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Dordoni et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69d892886c1944d70ce03ee0 — DOI: https://doi.org/10.1016/j.neucom.2026.133579
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