Learning with Noisy Low-Cost MOS for Image Quality Assessment via Dual-Bias Calibration
Lei Wang, Qingbo Wu, Desen Yuan, King Ngi Ngan, Hongliang Li, Fanman, Meng, and Linfeng Xu

TL;DR
This paper introduces a novel dual-bias calibration method to learn robust image quality assessment models from low-cost, noisy subjective labels, reducing annotation costs while maintaining high performance.
Contribution
It proposes the first approach to effectively learn IQA models from noisy, low-cost MOS by modeling and calibrating dual biases via EM-based optimization.
Findings
Outperforms existing models using only low-cost MOS.
Robust against different bias rates and annotation quantities.
Achieves comparable results to models trained with reliable MOS.
Abstract
Learning based image quality assessment (IQA) models have obtained impressive performance with the help of reliable subjective quality labels, where mean opinion score (MOS) is the most popular choice. However, in view of the subjective bias of individual annotators, the labor-abundant MOS (LA-MOS) typically requires a large collection of opinion scores from multiple annotators for each image, which significantly increases the learning cost. In this paper, we aim to learn robust IQA models from low-cost MOS (LC-MOS), which only requires very few opinion scores or even a single opinion score for each image. More specifically, we consider the LC-MOS as the noisy observation of LA-MOS and enforce the IQA model learned from LC-MOS to approach the unbiased estimation of LA-MOS. In this way, we represent the subjective bias between LC-MOS and LA-MOS, and the model bias between IQA predictions…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Fusion Techniques · Visual Attention and Saliency Detection
