BIDAL-HCMUS@LSC2020:一个交互式多模式生活日志检索与查询样本的基于注意力的搜索引擎

Anh-Vu Mai-Nguyen, Trong-Dat Phan, Anh-Khoa Vo, Van-Luon Tran, Minh-Son Dao, K. Zettsu
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引用次数: 8

摘要

本文介绍了一种利用注意力机制构建搜索引擎的交互式多模式生活日志检索系统。系统所依赖的算法是通过应用两个观察来构建的:(1)属于一个事件的大多数图像可能包含与查询内容相关的线索(例如,对象)。这些线索有助于事件的代表性,并且(2)一个事件的实例可以与该事件的内容和上下文相关联。因此,当我们可以确定种子(通过利用第一个观察)时,我们可以找到所有相关的实例(通过利用第二个观察)。通过使用基于注意力的机制将文本查询转换为图像,我们还利用了样本查询(例如图像)的好处。因此,我们可以在用户的简单文本查询中丰富和添加更多的语义,以获得更准确的结果,并发现仅使用文本查询无法达到的隐藏结果。该系统是为新手和专家用户设计的,有几个过滤器来帮助用户表达他们的查询,从一般到特定的描述,并优化他们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BIDAL-HCMUS@LSC2020: An Interactive Multimodal Lifelog Retrieval with Query-to-Sample Attention-based Search Engine
In this paper, we introduce an interactive multimodal lifelog retrieval system with the search engine built by utilizing the attention mechanism. The algorithm upon which the system relies is constructed by applying two observations: (1) most of the images belonged to one event probably contain cues (e.g., objects) that relate to the content of queries. These cues contribute to the representative of the event, and (2) instances of one event can be associated with the content and context of such an event. Hence, when we can determine the seed (by leveraging the first observation), we can find all relevant instances (by utilizing the second observation). We also take a benefit of querying by samples (e.g., images) by converting text query to images using the attention-based mechanism. Thus, we can enrich and add more semantic meaning into the simple text query of users towards having more accurate results, as well as discovering hidden results that cannot reach by using only text queries. The system is designed for both novice and expert users with several filters to help users express their queries from general to particular descriptions and to polish their results.
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