记忆:lsc2023的记忆增强和瞬间检索应用

Ricardo F. Ribeiro, Luísa Amaral, Wei Ye, A. Trifan, António J. R. Neves, Pedro Iglésias
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引用次数: 1

摘要

近年来,作为监测和改善个人健康状况的一种手段,不断收集和储存个人数据(称为“生活日志”)越来越受欢迎。生活记录的一个重要方面是图像数据的收集和分析,这可以为个人的生活方式、饮食习惯和体育活动提供有价值的见解。生命日志搜索挑战赛提供了一个独特的机会来探索生命日志研究的最新技术,特别是在以自我为中心的图像检索和分析领域。研究人员可以提出他们的方法,并竞争解决生命日志检索挑战,并评估他们的系统在一个丰富的多模态数据集上的有效性,该数据集是由一个活跃的生命记录者连续捕获18个月的生命记录数据生成的。本文介绍了MEMORIA的第二个版本,这是一个为参加2023年生活日志搜索挑战而开发的计算工具。在这个新版本中,信息检索基于使用自然语言搜索,并可以根据关键字和时间段过滤结果。本系统采用图像分析算法对视觉生命日志进行处理,从预处理算法到特征提取方法,以丰富生命日志的注释。这个新版本探索了图形数据库的使用,更详细的图像注释和事件分割,以提高性能和用户交互。给出了用户与检索模块交互的实验结果,验证了所提出方法的有效性,并展示了系统最相关的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MEMORIA: A Memory Enhancement and MOment RetrIeval Application for LSC 2023
The continuous collection and storage of personal data, denoted Lifelogging, has gained popularity in recent years as a means of monitoring and improving personal health. One important aspect of lifelogging is the collection and analysis of image data, which can provide valuable insights into an individual’s lifestyle, dietary habits, and physical activity. The Lifelog Search Challenge provides a unique opportunity to explore the state-of-the-art in lifelogging research, particularly in the area of egocentric image retrieval and analysis. Researchers can propose their approaches and compete to solve lifelog retrieval challenges and evaluate the effectiveness of their systems on a rich multimodal dataset generated by an active lifelogger with 18 months of continuous capture of lifelogging data. This paper presents the second version of MEMORIA, a computational tool developed to participate in the Lifelog Search Challenge 2023. In this new version, the information retrieval is based on the use of natural language search with the possibility to filter the results based on keywords and time periods. The system applies image analysis algorithms to process visual lifelogs, from pre-processing algorithms to feature extraction methods, in order to enrich the annotation of the lifelogs. This new version explores the use of a graph database, more detailed image annotation, and event segmentation, in order to improve the performance and user interaction. Experimental results of the user interaction with our retrieval module are presented, confirming the effectiveness of the proposed approach and showing the most relevant functionalities of the system.
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