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An insight into multimodal databases for social signal processing: acquisition, efforts, and directions

机译:深入了解用于社会信号处理的多模式数据库:获取,工作和方向

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摘要

The importance of context-aware computing in understanding social signals gave a rise to a new emerging domain, called social signal processing (SSP). SSP depends heavily on the existence of comprehensive multimodal databases containing the descriptors of social context and behaviors, such as situational environment, roles and gender of human participants. In the recent paper SSP community has emphasized how current research lacks of the adequate data, for the greatest part because acquisition and annotation of large multimodal datasets are time- and resource-consuming for the researchers. This paper aims to collect the existing work in this scope and to deliver the key aspects and clear directions for managing the multimodal behavior data. It reviews some of the existing databases, gives their important characteristics and draws the most important tools and methods conducted in capturing and managing social behavior signals. Summarizing the relevant findings it also addresses the existing issues and proposes fundamental topics that need to be investigated in the future research.
机译:上下文感知计算在理解社交信号中的重要性催生了一个新兴的领域,即社交信号处理(SSP)。 SSP严重依赖于完整的多模式数据库的存在,该数据库包含社会环境和行为的描述符,例如情境环境,人类参与者的角色和性别。在最近的论文中,SSP社区强调了当前的研究如何缺乏足够的数据,这在很大程度上是因为大型多模态数据集的获取和注释对于研究人员而言既耗时又耗资源。本文旨在收集该范围内的现有工作,并提供管理多模式行为数据的关键方面和明确的方向。它回顾了一些现有的数据库,给出了它们的重要特征,并绘制了在捕获和管理社会行为信号中进行的最重要的工具和方法。总结相关发现,它还解决了现有问题,并提出了需要在未来研究中进行研究的基本主题。

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