IVCVNov 9, 2020

PAMS: Quantized Super-Resolution via Parameterized Max Scale

arXiv:2011.04212v1101 citations
AI Analysis

This work addresses the memory and computation overhead of super-resolution models for practical deployment, representing an incremental improvement in quantization methods.

The paper tackles the problem of deploying super-resolution models on resource-limited devices by proposing a quantization scheme called PAMS, which adaptively explores the quantization range and achieves a 2.42× compression ratio with a PSNR improvement from 32.095dB to 32.124dB on the Set5 benchmark.

Deep convolutional neural networks (DCNNs) have shown dominant performance in the task of super-resolution (SR). However, their heavy memory cost and computation overhead significantly restrict their practical deployments on resource-limited devices, which mainly arise from the floating-point storage and operations between weights and activations. Although previous endeavors mainly resort to fixed-point operations, quantizing both weights and activations with fixed coding lengths may cause significant performance drop, especially on low bits. Specifically, most state-of-the-art SR models without batch normalization have a large dynamic quantization range, which also serves as another cause of performance drop. To address these two issues, we propose a new quantization scheme termed PArameterized Max Scale (PAMS), which applies the trainable truncated parameter to explore the upper bound of the quantization range adaptively. Finally, a structured knowledge transfer (SKT) loss is introduced to fine-tune the quantized network. Extensive experiments demonstrate that the proposed PAMS scheme can well compress and accelerate the existing SR models such as EDSR and RDN. Notably, 8-bit PAMS-EDSR improves PSNR on Set5 benchmark from 32.095dB to 32.124dB with 2.42$\times$ compression ratio, which achieves a new state-of-the-art.

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