ICDAR'22:智能交叉数据分析与检索

Minh-Son Dao, M. Riegler, Duc-Tien Dang-Nguyen, C. Gurrin, Yuta Nakashima, M. Dong
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引用次数: 1

摘要

最近,我们见证了跨数据对抗多模式数据问题的兴起。跨模态检索系统使用文本查询来查找图像;空气质量指数可以利用生活记录图像进行预测;拥堵可以通过天气和推特数据来预测;日常锻炼和饮食可以帮助预测睡眠质量是这一研究方向的一些例子。尽管对多模式数据分析进行了大量的研究,但很少进行跨数据(例如,跨模式数据,跨领域,跨平台)的研究。为了促进智能交叉数据分析与检索研究,为人类带来一个智能的、可持续发展的社会,本文介绍了“智能交叉数据分析与检索”的具体文集。本研究课题欢迎来自不同研究领域和学科的人,如福祉,防灾减灾,流动性,气候变化,旅游,医疗保健和食品计算
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ICDAR'22: Intelligent Cross-Data Analysis and Retrieval
We have witnessed the rise of cross-data against multimodal data problems recently. The cross-modal retrieval system uses a textual query to look for images; the air quality index can be predicted using lifelogging images; the congestion can be predicted using weather and tweets data; daily exercises and meals can help to predict the sleeping quality are some examples of this research direction. Although vast investigations focusing on multimodal data analytics have been developed, few cross-data (e.g., cross-modal data, cross-domain, cross-platform) research has been carried on. In order to promote intelligent cross-data analytics and retrieval research and to bring a smart, sustainable society to human beings, the specific article collection on "Intelligent Cross-Data Analysis and Retrieval" is introduced. This Research Topic welcomes those who come from diverse research domains and disciplines such as well-being, disaster prevention and mitigation, mobility, climate change, tourism, healthcare, and food computing
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