Subjective image quality evaluation in security imaging systems

M. Klima, P. Páta, K. Fliegel, P. Hanzlik
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引用次数: 13

Abstract

The subjective image quality of image or video information is a crucial item in security imaging systems. During last five years our lab has tested and verified various approaches to the image compression for security purposes and the evaluation of subjective image quality. In the paper, we have discussed selected important facts related to the subjective image quality evaluation and we have presented some anomalous experimental behavior of image compression techniques. An object-defined approach is investigated and advantageous characteristics of chosen methods are deployed to achieve the optimal performance of the surveillance video coder. Among others, we propose to use the artificial neural network (ANN) to predict resulting image quality rating scores. The proposed quality assessment model has been trained and tested using a set of grayscale images distorted by selected image compression algorithms.
安防成像系统的主观图像质量评价
在安防成像系统中,图像或视频信息的主观图像质量是一个至关重要的项目。在过去的五年中,我们的实验室已经测试和验证了用于安全目的和主观图像质量评估的各种图像压缩方法。本文讨论了与主观图像质量评价有关的一些重要事实,并介绍了图像压缩技术的一些异常实验行为。研究了一种对象定义的方法,并利用所选方法的优势特性来实现监控视频编码器的最佳性能。其中,我们建议使用人工神经网络(ANN)来预测最终的图像质量评级分数。所提出的质量评估模型已被训练并使用一组被选定的图像压缩算法扭曲的灰度图像进行测试。
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