PTM-VQA: Efficient Video Quality Assessment Leveraging Diverse PreTrained Models from the Wild
Kun Yuan, Hongbo Liu, Mading Li, Muyi Sun, Ming Sun, Jiachao Gong,, Jinhua Hao, Chao Zhou, Yansong Tang

TL;DR
PTM-VQA introduces a novel approach that leverages diverse pretrained models and a specialized loss function to improve video quality assessment without extensive labeled data.
Contribution
The paper proposes a new VQA method that utilizes features from multiple pretrained models and introduces ICID loss for better feature alignment and separation.
Findings
Effective integration of multiple pretrained models for VQA.
ICID loss improves feature consistency and discriminability.
Model selection scheme enhances performance.
Abstract
Video quality assessment (VQA) is a challenging problem due to the numerous factors that can affect the perceptual quality of a video, \eg, content attractiveness, distortion type, motion pattern, and level. However, annotating the Mean opinion score (MOS) for videos is expensive and time-consuming, which limits the scale of VQA datasets, and poses a significant obstacle for deep learning-based methods. In this paper, we propose a VQA method named PTM-VQA, which leverages PreTrained Models to transfer knowledge from models pretrained on various pre-tasks, enabling benefits for VQA from different aspects. Specifically, we extract features of videos from different pretrained models with frozen weights and integrate them to generate representation. Since these models possess various fields of knowledge and are often trained with labels irrelevant to quality, we propose an…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Processing Techniques · Image and Signal Denoising Methods
