基于上下文感知的社会媒体灾难图像检索后期融合方法

Minh-Son Dao, Pham Quang Nhat Minh, Asem Kasem, M. Nazmudeen
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引用次数: 17

摘要

自然灾害,特别是与洪水有关的自然灾害,是一个全球性问题,在世界许多地方引起了广泛关注。提出了一系列以结合异构数据源进行自然灾害监测为重点的研究思路,包括多模态图像检索。在这些数据源中,由于对灾害情况的快速和本地化更新,社交媒体流被认为是非常重要的。不幸的是,社交媒体本身包含了一些限制这一过程准确性的因素,例如嘈杂的数据、图像和附带文本之间不同步的内容、不可信的信息等等。在这项研究工作中,我们引入了一种上下文感知的后期融合方法,用于从社交媒体中检索灾难图像。集成了基于上下文感知标准的几种已知技术,即后期融合、调优、集成学习、对象检测和使用深度学习的场景分类。我们开发了一种图像-文本内容同步和时空-上下文事件确认的方法,并评估了使用从内部和外部数据源中提取的不同类型的特征的作用。我们使用MediaEval2017提供的数据集和评估工具:洪水事件应急响应任务来评估我们的方法。我们还将我们的方法与MediaEval2017参与者介绍的其他方法进行了比较。实验结果表明,在考虑图像-文本内容同步和时空-上下文事件确认的情况下,该方法是最好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Context-Aware Late-Fusion Approach for Disaster Image Retrieval from Social Media
Natural disasters, especially those related to flooding, are global issues that attract a lot of attention in many parts of the world. A series of research ideas focusing on combining heterogeneous data sources to monitor natural disasters have been proposed, including multi-modal image retrieval. Among these data sources, social media streams are considered of high importance due to the fast and localized updates on disaster situations. Unfortunately, the social media itself contains several factors that limit the accuracy of this process such as noisy data, unsynchronized content between image and collateral text, and untrusted information, to name a few. In this research work, we introduce a context-aware late-fusion approach for disaster image retrieval from social media. Several known techniques based on context-aware criteria are integrated, namely late fusion, tuning, ensemble learning, object detection and scene classification using deep learning. We have developed a method for image-text content synchronization and spatial-temporal-context event confirmation, and evaluated the role of using different types of features extracted from internal and external data sources. We evaluated our approach using the dataset and evaluation tool offered by MediaEval2017: Emergency Response for Flooding Events Task. We have also compared our approach with other methods introduced by MediaEval2017's participants. The experimental results show that our approach is the best one when taking the image-text content synchronization and spatial-temporal-context event confirmation into account.
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