基于模式分类的MPEG监控视频质量评估

T. Shanableh, F. Ishtiaq
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引用次数: 3

摘要

本文提出用无参考客观质量评价方法对压缩监控视频的质量进行分类。提出一种基于模式分类技术的宏块(MB)级无参考目标峰值信噪比(PSNR)分类。在该系统中,从MPEG编码视频和重构图像中提取特征向量。所提出的特征提取方案是基于编码mb的预测误差及其预测源。使用多元多项式分类器、支持向量机和贝叶斯分类器对特征进行建模。据报道,该方法的分类准确率高达94%。
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Pattern classification for assessing the quality of MPEG surveillance video
In this paper we propose the use of no-reference objective quality assessment to classify the quality of compressed surveillance video. The paper proposes a Macro-Block (MB) level no-reference objective Peak Signal to Noise Ratio (PSNR) classification based on pattern classification techniques. In the proposed system, the feature vectors are extracted from both MPEG coded videos and reconstructed images. The proposed feature extraction scheme is based on both the prediction errors of coded MBs and their prediction sources. The features are modeled using reduced multivariate polynomial classifiers, support vector machines and Bayes classifiers. The paper reports classification accuracy rates up 94%.
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