A Novel Rate-Scalable Multimedia Service for E-Learning Videos using Content Based Wavelet Compression

A. Sood, D. Sarthi, A. Pande, A. Mittal
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引用次数: 13

Abstract

In this paper, we address the problem of delivery of multimedia services on bandwidth deficient wireless networks for E-learning. We propose a modified continuous rate-scalable wavelet based video compression technique for E-learning lecture videos. The algorithm eradicates spatial and temporal redundancies and exploits the virtues of content based classification for compression. Some of the distinguished features of our algorithm are its excellent subjective performance due to its adaptive behavior to the network conditions and excellent compression due to the classification of the objects in the E-learning lecture video. Also, the compression mechanism maintains high PSNR for prime objects present in the lecture video which further facilitates zooming operations. In this paper, we introduce a noble concept of even and odd frame distinction (EODist). A significant reduction in number of retransmissions of data packets has been observed after integrating EODist with conventional mechanism, which is also a potential advantage of our algorithm in bandwidth deficient wireless network environment. The algorithm exhibits high asymmetry between compressor and de-compressor. The compressor is designed to achieve optimum content based compression using content based wavelet transform and is computationally more complex whereas the decompressor is intentionally designed procedurally simple to support real time de-compression of the compressed data at the client side. The performance of our algorithm is analyzed and its advantages are justified with the help of experimental results
基于内容的小波压缩的在线学习视频多媒体服务
在本文中,我们解决了在带宽不足的无线网络上提供多媒体服务的问题。我们提出了一种改进的基于连续速率可伸缩小波的视频压缩技术。该算法消除了空间和时间冗余,并利用基于内容的分类的优点进行压缩。我们算法的一些显著特征是由于其对网络条件的自适应行为而具有优异的主观性能,以及由于对E-learning讲座视频中的对象进行分类而具有优异的压缩性能。此外,压缩机制为讲座视频中的主要对象保持高PSNR,这进一步促进了缩放操作。在本文中,我们引入了奇偶帧区分(EODist)这个高贵的概念。将EODist与传统机制结合后,数据包的重传次数显著减少,这也是我们的算法在带宽不足的无线网络环境下的潜在优势。该算法在压缩和解压之间具有高度的不对称性。压缩器的设计是为了使用基于内容的小波变换实现基于内容的最佳压缩,并且在计算上更复杂,而解压缩器的设计是为了在客户端支持压缩数据的实时解压缩。分析了算法的性能,并结合实验结果验证了算法的优越性
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