1 research outputs found

    A prediction-based dynamic content adaptation framework for enterprise documents applied to collaborative mobile web conferencing

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    Enterprise documents, created in applications such as PowerPoint and Word, can be used and shared using ubiquitousWeb-enabled terminals connected to the Internet. In the context ofWeb conferencing, enterprise documents, particularly presentation slides, are hosted on the server and presented to the meeting participants synchronously. When mobile devices are involved in such meeting conferencing applications, the content (e.g.: presentation slides) should be adapted to meet the target mobile terminal constraints, but more importantly, to provide the end-user with the best experience possible. Globally, two major trends in content adaptation have been studied: static and dynamic. In static content adaptation, the content is adapted into a set of versions using different transcoding parameter combinations. At runtime, when the content is requested, the optimal of those versions, based on a given quality criterion, is selected for delivery. The performance of these solutions is based on the granularity in use; the number of created versions. In dynamic content adaptation, also called just-in-time adaptation, based on the mobile device context, a customized version is created on-the-fly, while the end-user is still waiting. Dynamically identifying the optimal transcoding parameters, without performing any transcoding operation, is very challenging. In this thesis, we propose a novel dynamic adaptation framework that estimates, without performing transcoding, near-optimal transcoding parameters (format, scaling parameter and quality factor). The output formats considered in this research are JPEG- and XHTML-based Web pages. Firstly, we define a quality of experience measure to quantify the quality of the adapted content as experienced by the end-user. This measure takes into account the visual aspect of the content as well as its transport quality, which is mostly affected by the network conditions. Secondly, we propose a dynamic adaptation framework capable of selecting dynamically and with very little computational complexity, near-optimal adapted content that meets the best compromise between its visual quality and delivery time based on the proposed quality of experience measure. It uses predictors of file size and visual quality of JPEG images subject to changing their scaling parameter and quality factor proposed in recent researches. Our framework is comprised of five adaptation methods with increased quality and complexity. The first one, requiring one transcoding operation, estimates near-optimal adapted content, whereas the other four methods improve its prediction accuracy by allowing the system to perform more than one transcoding operation. The performance of the proposed dynamic framework was tested with a static exhaustive system and a typical dynamic system. Globally, the obtained results were very close to optimality and far better than the typical dynamic system. Besides, we were able to reach optimality on a large number of tested documents. The proposed dynamic framework has been applied to OpenOffice Impress presentations. It is designed to be general, but future work can be carried out to validate its applicability to other enterprise documents types such as Word (text) and Excel (spreadsheet)
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