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Processing Social Media Images by Combining Human and Machine Computing during Crises

机译:在危机期间通过结合人机交互来处理社交媒体图像

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摘要

The extensive use of social media platforms, especially during disasters, creates unique opportunities for humanitarian organizations to gain situational awareness as disaster unfolds. In addition to textual content, people post overwhelming amounts of imagery content on social networks within minutes of a disaster hit. Studies point to the importance of this online imagery content for emergency response. Despite recent advances in computer vision research, making sense of the imagery content in real-time during disasters remains a challenging task. One of the important challenges is that a large proportion of images shared on social media is redundant or irrelevant, which requires robust filtering mechanisms. Another important challenge is that images acquired after major disasters do not share the same characteristics as those in large-scale image collections with clean annotations of well-defined object categories such as house, car, airplane, cat, dog, etc., used traditionally in computer vision research. To tackle these challenges, we present a social media image processing pipeline that combines human and machine intelligence to perform two important tasks: (i) capturing and filtering of social media imagery content (i.e., real-time image streaming, de-duplication, and relevancy filtering); and (ii) actionable information extraction (i.e., damage severity assessment) as a core situational awareness task during an on-going crisis event. Results obtained from extensive experiments on real-world crisis datasets demonstrate the significance of the proposed pipeline for optimal utilization of both human and machine computing resources.
机译:社交媒体平台的广泛使用,尤其是在灾难期间,为灾难发生时人道主义组织提供了独特的机会来获取态势感知。除了文字内容外,人们在灾难发生后的几分钟内就在社交网络上发布了大量的图像内容。研究指出此在线图像内容对于应急响应的重要性。尽管计算机视觉研究最近取得了进步,但是在灾难期间实时地感知图像内容仍然是一项艰巨的任务。重要的挑战之一是,社交媒体上共享的大部分图像都是冗余的或不相关的,这需要强大的过滤机制。另一个重要的挑战是,在重大灾难之后获取的图像与大型图像集合中的图像具有不同的特征,这些图像带有清晰定义的清晰定义的对象类别,如房屋,汽车,飞机,猫,狗等,传统上使用在计算机视觉研究中。为解决这些挑战,我们提出了一种社交媒体图像处理管道,该管道将人与机器的智能相结合以执行两项重要任务:(i)捕获和过滤社交媒体图像内容(即实时图像流,重复数据删除和相关性过滤); (ii)在持续发生的危机事件中,将可行的信息提取(即破坏严重性评估)作为核心的态势感知任务。在现实世界中的危机数据集上进行的广泛实验获得的结果证明了拟建管道对于优化利用人机资源的重要性。

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