资源论文Real-time No-Reference Image Quality Assessment based on Filter Learning

Real-time No-Reference Image Quality Assessment based on Filter Learning

2019-12-10 | |  64 |   50 |   0

Abstract

This paper addresses the problem of general-purpose No-Reference Image Quality Assessment (NR-IQA) with the goal of developing a real-time, cross-domain model that can predict the quality of distorted images without prior knowledge of non-distorted reference images and types of distortions present in these images. The contributions of our work are two-fold: fifirst, the proposed method is highly effificient. NR-IQA measures are often used in real-time imaging or communication systems, therefore it is important to have a fast NR-IQA algorithm that can be used in these real-time applications. Second, the proposed method has the potential to be used in multiple image domains. Previous work on NR-IQA focus primarily on predicting quality of natural scene image with respect to human perception, yet, in other image domains, the fifinal receiver of a digital image may not be a human. The proposed method consists of the following components: (1) a local feature extractor; (2) a global feature extractor and (3) a regression model. While previous approaches usually treat local feature extraction and regression model training independently, we propose a supervised method based on back-projection, which links the two steps by learning a compact set of fifilters which can be applied to local image patches to obtain discriminative local features. Using a small set of fifilters, the proposed method is extremely fast. We have tested this method on various natural scene and document image datasets and obtained stateof-the-art results

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