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Multimodal deep learning based on multiple correspondence analysis for disaster management

机译:基于多重对应分析的多模式深度学习在灾害管理中的应用

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The fast and explosive growth of digital data in social media and World Wide Web has led to numerous opportunities and research activities in multimedia big data. Among them, disaster management applications have attracted a lot of attention in recent years due to its impacts on society and government. This study targets content analysis and mining for disaster management. Specifically, a multimedia big data framework based on the advanced deep learning techniques is proposed. First, a video dataset of natural disasters is collected from YouTube. Then, two separate deep networks including a temporal audio model and a spatio-temporal visual model are presented to analyze the audio-visual modalities in video clips effectively. Thereafter, the results of both models are integrated using the proposed fusion model based on the Multiple Correspondence Analysis (MCA) algorithm which considers the correlations between data modalities and final classes. The proposed multimodal framework is evaluated on the collected disaster dataset and compared with several state-of-the-art single modality and fusion techniques. The results demonstrate the effectiveness of both visual model and fusion model compared to the baseline approaches. Specifically, the accuracy of the final multi-class classification using the proposed MCA-based fusion reaches to 73% on this challenging dataset.
机译:社交媒体和万维网中数字数据的快速爆炸性增长导致了多媒体大数据的众多机遇和研究活动。其中,灾害管理应用由于其对社会和政府的影响,近年来引起了很多关注。这项研究针对灾难管理的内容分析和挖掘。具体而言,提出了一种基于高级深度学习技术的多媒体大数据框架。首先,从YouTube收集自然灾害的视频数据集。然后,提出了两个单独的深度网络,包括时间音频模型和时空视觉模型,以有效地分析视频剪辑中的视听模态。此后,使用基于多重对应分析(MCA)算法的拟议融合模型对两个模型的结果进行整合,该模型考虑了数据模态与最终类之间的相关性。在收集的灾难数据集上评估提出的多模式框架,并将其与几种最新的单模式和融合技术进行比较。结果证明了与基线方法相比,视觉模型和融合模型的有效性。具体来说,在这个具有挑战性的数据集上,使用建议的基于MCA的融合进行最终多类分类的准确性达到73%。

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