Detecting F-formations & Roles in Crowded Social Scenes with Wearables: Combining Proxemics & Dynamics using LSTMs

Alessio Rosatelli, Ekin Gedik, H. Hung
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引用次数: 10

Abstract

In this paper, we investigate the use of proxemics and dynamics for automatically identifying conversing groups, or so-called F-formations. More formally we aim to automatically identify whether wearable sensor data coming from 2 people is indicative of F-formation membership. We also explore the problem of jointly detecting membership and more descriptive information about the pair relating to the role they take in the conversation (i.e. speaker or listener). We jointly model the concepts of proxemics and dynamics using binary proximity and acceleration obtained through a single wearable sensor per person. We test our approaches on the publicly available MatchNMingle dataset which was collected during real-life mingling events. We find out that fusion of these two modalities performs significantly better than them independently, providing an AUC of 0.975 when data from 30-second windows are used. Furthermore, our investigation into roles detection shows that each role pair requires a different time resolution for accurate detection.
使用可穿戴设备在拥挤的社交场景中检测f形和角色:使用lstm结合近距学和动力学
在本文中,我们研究了使用邻近学和动力学来自动识别会话群,或所谓的f -编队。更正式地说,我们的目标是自动识别来自两个人的可穿戴传感器数据是否表明F-formation成员。我们还探讨了联合检测成员的问题,以及与他们在对话中所扮演的角色(即说话者或听者)相关的更多描述性信息。我们通过每个人的单个可穿戴传感器获得的二进制接近和加速度,共同建模接近学和动力学的概念。我们在公开的MatchNMingle数据集上测试了我们的方法,该数据集是在现实生活中的混合事件中收集的。我们发现这两种模式的融合性能明显优于它们独立,当使用来自30秒窗口的数据时,提供0.975的AUC。此外,我们对角色检测的研究表明,每个角色对需要不同的时间分辨率才能准确检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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