智能多媒体信息检索

Stefan Wagenpfeil
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引用次数: 1

摘要

多媒体信息检索(MMIR)领域面临着两大挑战:多媒体对象(即图像、视频、音频和文本文件)数量的巨大增长,以及这些对象的细节水平的快速提高(例如,图像中的像素数量)。这两个挑战都导致了对mir过程的可伸缩性、语义表示和可解释性的高要求。智能mir通过使用图代码作为索引结构,附加语义注释以实现可解释性,并使用应用程序分析进行扩展来解决这些挑战,从而产生人类可理解、富有表现力和可互操作的mir。本文给出了数学基础、建模、实现细节和实验结果,证实了智能MMIR在效率、有效性和人类可理解性方面提高了MMIR。
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Smart Multimedia Information Retrieval
The area of multimedia information retrieval (MMIR) faces two major challenges: the enormously growing number of multimedia objects (i.e., images, videos, audio, and text files), and the fast increasing level of detail of these objects (e.g., the number of pixels in images). Both challenges lead to a high demand of scalability, semantic representations, and explainability of MMIR processes. Smart MMIR solves these challenges by employing graph codes as an indexing structure, attaching semantic annotations for explainability, and employing application profiling for scaling, which results in human-understandable, expressive, and interoperable MMIR. The mathematical foundation, the modeling, implementation detail, and experimental results are shown in this paper, which confirm that Smart MMIR improves MMIR in the area of efficiency, effectiveness, and human understandability.
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