EFFICIENT HIGH QUALITY VIDEO ASSESSMENT USING SALIENT FEATURES

K. Rekha, A. Kumar
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Abstract

High Definition (HD) devices requires HD-videos for the effective uses of HD devices. However, it consists of some issues such as high storage capacity, limited battery power of high definition devices, long encoding time, and high computational complexity when it comes to the transmission, broadcasting and internet traffic. Many existing techniques consists these above-mentioned issues. Therefore, there is a need of an efficient technique, which reduces unnecessary amount of space, provides high compression rate and requires low bandwidth spectrum. Therefore, in the paper we have introduced an efficient video compression technique as modified HEVC coding based on saliency features to counter these existing drawbacks. We highlight first, on extracting features on the raw data and then compressed it largely. This technique makes our model powerful and provides effective performance in terms of compression. Our experiment results proves that our model provide better efficiency in terms of average PSNR, MSE and bitrate. Our experimental results outperforms all the existing techniques in terms of saliency map detection, AUC, NSS, KLD and JSD. The average AUC, NSS and KLD value by our proposed method are 0.846, 1.702 and 0.532 respectively which is very high compare to other existing technique.
使用显著特征的高效高质量视频评估
高清(High Definition)设备需要高清视频才能有效地利用高清设备。然而,在传输、广播和互联网流量方面存在存储容量大、高清设备电池电量有限、编码时间长、计算复杂度高等问题。现有的许多技术都包含上述问题。因此,需要一种高效的技术,既能减少不必要的空间,又能提供高压缩率,对频谱带宽要求低。因此,在本文中,我们引入了一种有效的视频压缩技术,即基于显著性特征的改进HEVC编码,以克服这些现有的缺点。我们首先强调提取原始数据的特征,然后对其进行大量压缩。这种技术使我们的模型功能强大,并在压缩方面提供了有效的性能。实验结果表明,该模型在平均PSNR、MSE和比特率方面具有较好的效率。我们的实验结果在显著性图检测、AUC、NSS、KLD和JSD方面优于所有现有技术。该方法的平均AUC、NSS和KLD值分别为0.846、1.702和0.532,与其他现有技术相比,该方法的AUC、NSS和KLD值都很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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