Paper
19 December 2021 MSANet: multi-scale attention guided deep neural network for blind image quality assessment
Xiaoyu Ma, Jiaojiao Wang
Author Affiliations +
Proceedings Volume 12128, Second International Conference on Industrial IoT, Big Data, and Supply Chain; 121280Z (2021) https://doi.org/10.1117/12.2624147
Event: 2nd International Conference on Industrial IoT, Big Data, and Supply Chain, 2021, Macao, China
Abstract
This work explores how to efficiently incorporate both the multi-scale features and attention mechanism into blind image quality assessment modules and proposes an end-to-end multi-scale attention guided deep neural network for perceptual quality assessment. Our method is established on a hierarchical learning framework in which two learning stages including coarse learning upon single-scale and quality refinement upon multi-scale, by which the quality-aware features could effectively extracted and aggregated into quality prediction scores. The proposed MSANet is based on the observation that multi-scale features could provide more flexible and robust features for BIQA whilst attention mechanism are beneficial for quality-aware feature aggregating. Through performance comparison with the state-of-theart approaches, our proposed mothed shows promising potential for blindly measuring the perceptual quality of distorted images.
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Xiaoyu Ma and Jiaojiao Wang "MSANet: multi-scale attention guided deep neural network for blind image quality assessment", Proc. SPIE 12128, Second International Conference on Industrial IoT, Big Data, and Supply Chain, 121280Z (19 December 2021); https://doi.org/10.1117/12.2624147
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KEYWORDS
Image quality

Feature extraction

Neural networks

Databases

Digital imaging

Distortion

Visual system

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