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Semi-supervised Multimodal Clustering Algorithm Integrating Label Signals for Social Event Detection

机译:融合标签信号的半监督多峰聚类算法在社交事件检测中的应用

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Photo-sharing social media sites provide new ways for users to share their experiences and interests on the Web, which aggregate large amounts of multimedia resources associated with a wide variety of real-world events in different types and scales. In this work, we aim to tackle social event detection from these large amounts of image collections by devising a semi-supervised multimodal clustering algorithm, denoted by SSMC, which exploits label signals to guide the fusion of the multimodal features. Particularly, SSMC takes advantage of the distribution over the similarities on a small amount of labeled data to represent the images, fusing multiple heterogeneous features seamlessly. As a result, SSMC has low computational complexity in processing multimodal features for both initial and updating stages. Experiments are conducted on the Mediaeval social event detection challenge, and the results show that our approach achieves better performance compared with the baseline algorithms.
机译:照片共享社交媒体网站为用户分享其对网络的经验和兴趣提供了新的方法,这些方法会聚合与不同类型和尺度各种现实世界事件相关的大量多媒体资源。在这项工作中,我们的目标是通过设计半监督的多模聚类算法来解决这些大量图像集合的社交事件检测,由SSMC表示,该算法利用标签信号来指导多模峰特征的融合。特别地,SSMC利用了少量标记数据的相似性分布,以表示图像,无缝地融合多个异构特征。因此,SSMC在处理初始和更新阶段的多模峰特征方面具有低计算复杂性。实验是对Mediaeval社交事件检测挑战进行的,结果表明,与基线算法相比,我们的方法能够实现更好的性能。

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