Weakly Supervised Learning for Blind Image Quality Assessment

Weiquan He, Xinbo Gao, Wen Lu, R. Guan
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引用次数: 1

Abstract

The blind image quality assessment (BIQA) metric based on deep neural network (DNN) achieves the best evaluation accuracy at present, and the depth of neural networks plays a crucial role for deep learning-based BIQA metric. However, training a DNN for quality assessment is known to be hard because of the lack of labeled data, and getting quality labels for a large number of images is very time consuming and costly. Therefore, training a deep BIQA metric directly will lead to over-fitting in all likelihood. In order to solve this problem, we introduced a weakly supervised approach for learning a deep BIQA metric. First, we pre-trained a novel encoder-decoder architecture by using the training data with weak quality annotations. The annotation is the error map between the distorted image and its undistorted version, which can roughly describes the distribution of distortion and can be easily acquired for training. Next, we fine-tuned the pre-trained encoder on the quality labeled data set. Moreover, we used the group convolution to reduce the parameters of the proposed metric and further reduce the risk of over-fitting. These training strategies, which reducing the risk of over-fitting, enable us to build a very deep neural network for BIQA to have a better performance. Experimental results showed that the proposed model had the state-of-art performance for various images with different distortion types.
用于盲图像质量评估的弱监督学习
基于深度神经网络(DNN)的盲图像质量评价(BIQA)指标是目前评价精度最好的方法,而神经网络的深度对基于深度学习的盲图像质量评价(BIQA)指标起着至关重要的作用。然而,由于缺乏标记数据,训练DNN进行质量评估是很困难的,并且为大量图像获得高质量的标签非常耗时和昂贵。因此,直接训练深度BIQA度量将导致所有可能性的过度拟合。为了解决这个问题,我们引入了一种弱监督的方法来学习深度BIQA度量。首先,我们利用带有弱质量注释的训练数据预训练了一种新的编码器-解码器架构。标注是扭曲图像与未扭曲图像之间的误差映射,它可以粗略地描述扭曲的分布,并且易于获得用于训练。接下来,我们在质量标记数据集上微调预训练编码器。此外,我们使用群体卷积来减少所提出度量的参数,并进一步降低过拟合的风险。这些训练策略降低了过度拟合的风险,使我们能够为BIQA构建一个非常深的神经网络,从而获得更好的性能。实验结果表明,该模型对不同畸变类型的图像具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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