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基于主动推理的盲图像质量评估。

Blind Image Quality Assessment With Active Inference.

出版信息

IEEE Trans Image Process. 2021;30:3650-3663. doi: 10.1109/TIP.2021.3064195. Epub 2021 Mar 17.

DOI:10.1109/TIP.2021.3064195
PMID:33705313
Abstract

Blind image quality assessment (BIQA) is a useful but challenging task. It is a promising idea to design BIQA methods by mimicking the working mechanism of human visual system (HVS). The internal generative mechanism (IGM) indicates that the HVS actively infers the primary content (i.e., meaningful information) of an image for better understanding. Inspired by that, this paper presents a novel BIQA metric by mimicking the active inference process of IGM. Firstly, an active inference module based on the generative adversarial network (GAN) is established to predict the primary content, in which the semantic similarity and the structural dissimilarity (i.e., semantic consistency and structural completeness) are both considered during the optimization. Then, the image quality is measured on the basis of its primary content. Generally, the image quality is highly related to three aspects, i.e., the scene information (content-dependency), the distortion type (distortion-dependency), and the content degradation (degradation-dependency). According to the correlation between the distorted image and its primary content, the three aspects are analyzed and calculated respectively with a multi-stream convolutional neural network (CNN) based quality evaluator. As a result, with the help of the primary content obtained from the active inference and the comprehensive quality degradation measurement from the multi-stream CNN, our method achieves competitive performance on five popular IQA databases. Especially in cross-database evaluations, our method achieves significant improvements.

摘要

盲图像质量评估(BIQA)是一项非常有用但具有挑战性的任务。通过模拟人类视觉系统(HVS)的工作机制来设计 BIQA 方法是一个很有前景的想法。内部生成机制(IGM)表明,HVS 会主动推断图像的主要内容(即有意义的信息),以实现更好的理解。受此启发,本文提出了一种新的 BIQA 指标,通过模拟 IGM 的主动推断过程来实现。首先,建立了一个基于生成对抗网络(GAN)的主动推断模块来预测主要内容,在优化过程中同时考虑语义相似性和结构差异(即语义一致性和结构完整性)。然后,根据主要内容来衡量图像质量。通常,图像质量与三个方面高度相关,即场景信息(内容相关性)、失真类型(失真相关性)和内容降级(降级相关性)。根据失真图像与其主要内容之间的相关性,我们使用基于多流卷积神经网络(CNN)的质量评估器分别对这三个方面进行分析和计算。结果表明,通过主动推断得到的主要内容和多流 CNN 进行的综合质量降级测量的帮助下,我们的方法在五个流行的 IQA 数据库上取得了有竞争力的性能。特别是在跨数据库评估中,我们的方法取得了显著的改进。

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