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No-Reference Stereoscopic Image Quality Assessment Based on Binocular Statistical Features and Machine Learning

机译:基于双目统计特征和机器学习的无参考立体图像质量评估

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Learning a deep structure representation for complex information networks is a vital research area, and assessing the quality of stereoscopic images or videos is challenging due to complex 3D quality factors. In this paper, we explore how to extract effective features to enhance the prediction accuracy of perceptual quality assessment. Inspired by the structure representation of the human visual system and the machine learning technique, we propose a no-reference quality assessment scheme for stereoscopic images. More specifically, the statistical features of the gradient magnitude and Laplacian of Gaussian responses are extracted to form binocular quality-predictive features. After feature extraction, these features of distorted stereoscopic image and its human perceptual score are used to construct a statistical regression model with the machine learning technique. Experimental results on the benchmark databases show that the proposed model generates image quality prediction well correlated with the human visual perception and delivers highly competitive performance with the typical and representative methods. The proposed scheme can be further applied to the real-world applications on video broadcasting and 3D multimedia industry.
机译:学习复杂信息网络的深层结构表示是一个重要的研究领域,并且评估立体图像或视频的质量由于复杂的3D质量因素而挑战。在本文中,我们探讨如何提取有效特征,以提高感知质量评估的预测准确性。灵感来自人类视觉系统的结构表示和机器学习技术,为立体图像提出了一个没有参考质量评估方案。更具体地,提取高斯反应的梯度幅度和拉普拉安的统计特征以形成双目质量预测特征。在特征提取之后,使用扭曲的立体图像及其人的感知分数来构造具有机器学习技术的统计回归模型。基准数据库上的实验结果表明,所提出的模型产生与人类视觉感知相关的图像质量预测,并通过典型和代表方法提供高竞争性能。拟议方案可以进一步应用于视频广播和3D多媒体行业的现实世界应用。

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