基于长短期记忆神经网络的无参考光场图像质量评价方法

Sana Alamgeer, Mylène C. Q. Farias
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引用次数: 0

摘要

光场(LF)相机捕获角度和空间信息,因此需要大量的内存和带宽资源。为了减少这些需求,LF内容通常需要经过压缩和传输协议。由于这些技术可能会引入失真,光场图像质量评估(LFI- iqa)方法的设计对于监测用户侧LFI内容的质量非常重要。在这项工作中,我们提出了一种基于长短期记忆的深度神经网络(LSTM-DNN)的无参考(NR) LFIIQA方法。该方法由两个流组成。第一流提取水平极平面图像的长期依赖畸变相关特征,第二流处理微透镜图像的瓶颈特征。两个流的输出被融合,并提供给一个回归操作,该操作生成一个标量值作为预测的质量分数。结果表明,该方法具有鲁棒性和准确性,优于几种最先进的LF-IQA方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
No-Reference Light Field Image Quality Assessment Method Based on a Long-Short Term Memory Neural Network
Light Field (LF) cameras capture angular and spatial information and, consequently, require a large amount of resources in memory and bandwidth. To reduce these requirements, LF contents generally need to undergo compression and transmission protocols. Since these techniques may introduce distortions, the design of Light-Field Image Quality Assessment (LFI-IQA) methods are important to monitor the quality of the LFI content at the user side. In this work, we present a No-Reference (NR) LFIIQA method that is based on a Long Short-Term Memory based Deep Neural Network (LSTM-DNN). The method is composed of two streams. The first stream extracts long-term dependent distortion related features from horizontal epipolar plane images, while the second stream processes bottleneck features of micro-lens images. The outputs of both streams are fused, and supplied to a regression operation that generates a scalar value as a predicted quality score. Results show that the proposed method is robust and accurate, outperforming several state-of-the-art LF-IQA methods.
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