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An End-to-End Perceptual Quality Assessment Method via Score Distribution Prediction

机译:通过得分分布预测,端到端感知质量评估方法

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摘要

Image quality assessment (IQA) has become a rapidly growing field of technology as it automatically predicts the perceptual quality, which is of vital importance for consumer-centric services. However, most existing IQA algorithms focus on predicting the mean opinion score regardless of the inevitable opinion diversity. To address this shortcoming, in this paper, we propose to predict the distribution of opinion scores via an end-to-end convolutional neural network. The network is based on a pre-trained ResNet with 50 layers and a novel Statistical Region-of-Interest (ROI) Pooling layer is introduced for lower model complexity, which enables effective training with few datum. Meanwhile, instead of using traditional mean-square-error as loss function, our model is trained with cross-entropy loss, which is more suitable for probability distribution learning. Extensive experiments have been carried out on ESPL-LIVE HDR datasets with highly diverse opinion scores. It is shown that the statistical ROI Pooling is more efficient than traditional ROI Pooling layers and classical dimensionality reduction of principle component analysis. And the proposed algorithm achieves superior performance than state-of-the-art label distribution learning methods in terms of six representative evaluation metrics.
机译:图像质量评估(IQA)已成为一种快速增长的技术领域,因为它自动预测了对消费者为中心的重要性至关重要。然而,大多数现有的IQA算法侧重于预测平均意见分数,无论不可避免的意见多样性如何。为了解决这一缺点,在本文中,我们建议通过端到端卷积神经网络预测意见分数。该网络基于具有50层的预先训练的RESET,引入了一种新颖的统计区域 - 汇集层,用于较低的模型复杂性,这使得能够用几个基准训练。同时,由于跨熵损失,我们的模型培训,而不是使用传统的平均方误差作为损耗功能,而不是使用传统的平均方误差作为损耗功能。在ESPL-Live HDR数据集上进行了广泛的实验,具有高度不同的意见分数。结果表明,统计投资回报率汇集比传统的ROI汇集层和原理成分分析的经典维度降低更有效。所提出的算法比六种代表性评估指标在六种代表性评估度量方面实现了比最先进的标签分布学习方法更优越的性能。

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