A Framework for Fusing Video and Wearable Sensing Data by Deep Learning

Ting-Hui Chiang, Po-Yi Kuo, H. Shiu, Y. Tseng
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引用次数: 1

Abstract

Both cameras and IoT devices have their particular capabilities in tracking human behaviors and statuses. Their correlations are, however, unclear. In this work, we propose a framework for integrating video and wearable sensing data for smart surveillance, such as person identification and tracking. Using biometric features such as fingerprint, iris, gait, and face may lead to good recognition results. However, these approaches all have their limitations in distance and privacy concerns. In this work, we present a data fusion framework based on deep learning for fusing the aforementioned data. Here, using deep learning is to help adaptively learn the hidden bindings of these data. We demonstrate how to retrieve data of interest from IoT devices, which are attached on human objects, and correctly tag them on the human objects captured by a camera, thus correlating video and IoT data. Potential applications of this framework include smart surveillance and friendly visualization. We then show a case study, including integrating video data with body movement and physiological data.
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基于深度学习的视频和可穿戴传感数据融合框架
摄像头和物联网设备在跟踪人类行为和状态方面都有其特殊的功能。然而,它们之间的相关性尚不清楚。在这项工作中,我们提出了一个框架,用于集成视频和可穿戴传感数据,用于智能监控,如人员识别和跟踪。使用指纹、虹膜、步态和面部等生物特征可以获得良好的识别效果。然而,这些方法在距离和隐私方面都有其局限性。在这项工作中,我们提出了一个基于深度学习的数据融合框架来融合上述数据。在这里,使用深度学习是为了帮助自适应地学习这些数据的隐藏绑定。我们演示了如何从物联网设备中检索感兴趣的数据,这些数据连接在人类物体上,并正确地将它们标记在摄像头捕获的人类物体上,从而将视频和物联网数据关联起来。该框架的潜在应用包括智能监控和友好可视化。然后,我们展示了一个案例研究,包括将视频数据与身体运动和生理数据相结合。
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