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A Hybrid Recommender Strategy for Personalized Utility-Based Cross-Modal Multimedia Adaptation

机译:基于个性化实用程序的跨模态多媒体自适应混合推荐策略

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Enabling transparent and augmented use of multimedia content across a wide range of networks and devices is still a challenging task within the multimedia research community. Within multimedia frameworks, content adaptation is the core concept to overcome this issue. Most media adaptation engines targeting Universal Multimedia Access (UMA) scale the content w.r.t. terminal capabilities and network resource constraints and do not sufficiently consider user preferences. This paper focuses on a hybrid recommender technique for configuring a cross-modal utility model that guides adaptation of multimedia content. This approach additionally considers the user environment as well as demographic user data which leads to a personalized and increased multimedia experience. Based on a related adaptation decision technique we show how it is possible to offer a personalized adaptation for the individual user. We present a detailed evaluation of the approach based on results earned by subjective tests.
机译:在各种网络和设备上实现多媒体内容的透明和增强使用在多媒体研究界中仍然是一个具有挑战性的任务。在多媒体框架内,内容适应是克服此问题的核心概念。大多数媒体适应引擎定位通用多媒体访问(UMA)缩放内容w.r.t.终端功能和网络资源约束,不充分考虑用户偏好。本文侧重于混合推荐技术,用于配置指导多媒体内容的跨模型实用新型。这种方法还认为用户环境以及人口统计用户数据,这导致了个性化和增加的多媒体体验。基于相关的适应决策技术,我们展示了如何为各个用户提供个性化适应性。我们对基于主观测试所赚取的结果的方法进行了详细的评价。

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