通过自动化多模式内容审核授权第一响应者

Divam Gupta, Indira Sen, Niharika Sachdeva, P. Kumaraguru, Arun Balaji Buduru
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引用次数: 3

摘要

社交媒体使用户能够传播信息和观点,包括在发生骚乱、抗议或起义等危机事件时。与事件相关的敏感内容可能会在现实世界中引起反响。因此,对于诸如执法机构之类的第一响应者来说,拥有现成的访问权限和监控此类内容传播的能力至关重要。无障碍访问的障碍包括缺乏针对急救人员的自动调节工具。内容的多模态性质可能具有文本和图像方面,这使工作进一步复杂化。在这项工作中,作为向第一响应者提供情报的一种手段,我们通过利用深度神经网络(DNN)的最新进展,研究了两种模式下敏感事件相关内容的自动调节。我们使用卷积神经网络(CNN)的图像分类和递归神经网络(RNN)的文本分类的组合。我们的多层内容分类器是通过融合图像分类器和文本分类器得到的。我们利用特征工程进行预处理,但在分类过程中绕过它,因为我们使用dnn,同时利用社区指南实现覆盖。我们的方法通过从弱标记数据集学习,然后通过从专家注释数据集学习,保持低误报率和高精度。我们定量和定性地评估我们的系统,以更深入地了解其功能。最后,我们将我们的技术与当前对抗敏感内容的方法进行了基准测试,发现我们的系统在准确性上优于16%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering First Responders through Automated Multimodal Content Moderation
Social media enables users to spread information and opinions, including in times of crisis events such as riots, protests or uprisings. Sensitive event-related content can lead to repercussions in the real world. Therefore it is crucial for first responders, such as law enforcement agencies, to have ready access, and the ability to monitor the propagation of such content. Obstacles to easy access include a lack of automatic moderation tools targeted for first responders. Efforts are further complicated by the multimodal nature of content which may have either textual and pictorial aspects. In this work, as a means of providing intelligence to first responders, we investigate automatic moderation of sensitive event-related content across the two modalities by exploiting recent advances in Deep Neural Networks (DNN). We use a combination of image classification with Convolutional Neural Networks (CNN) and text classification with Recurrent Neural Networks (RNN). Our multilevel content classifier is obtained by fusing the image classifier and the text classifier. We utilize feature engineering for preprocessing but bypass it during classification due to our use of DNNs while achieving coverage by leveraging community guidelines. Our approach maintains a low false positive rate and high precision by learning from a weakly labeled dataset and then, by learning from an expert annotated dataset. We evaluate our system both quantitatively and qualitatively to gain a deeper understanding of its functioning. Finally, we benchmark our technique with current approaches to combating sensitive content and find that our system outperforms by 16% in accuracy.
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