No-Reference Deep Compressed-Based Video Quality Assessment

M. Alizadeh, A. Mohammadi, M. Sharifkhani
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引用次数: 3

Abstract

A novel No-Reference Video Quality Assessment (NR-VQA), based on Convolutional Neural Network (CNN) for High Efficiency Video Codec (HEVC) is presented. Deep Compressed-domain Video Quality (DCVQ) measures the video quality, with compressed domain features such as motion vector, bit allocation, partitioning and quantization parameter. For the training of the network, P-MOS is used due to the limitation of existing datasets. The evaluation of the proposed method shows that it has “96%” correlation to subjective quality assessment (MOS). The method can work simultaneously with the decoding process and measures the quality in different resolutions.
无参考深度压缩视频质量评估
提出了一种基于卷积神经网络(CNN)的无参考视频质量评估(NR-VQA)的高效视频编解码器。深度压缩域视频质量(Deep compression -domain Video Quality, DCVQ)利用压缩域的运动矢量、位分配、分区和量化参数等特征来衡量视频质量。对于网络的训练,由于现有数据集的限制,使用了P-MOS。对该方法的评价表明,该方法与主观质量评价(MOS)的相关性为96%。该方法可以与解码过程同时工作,并在不同分辨率下测量质量。
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