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End-to-End Multi-Modal Behavioral Context Recognition in a Real-Life Setting

机译:现实生活中的端到端多模态行为上下文识别

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Smart devices of everyday use (such as smartphones and wearables) are increasingly integrated with sensors that provide immense amounts of information about a person's daily life. The automatic and unobtrusive sensing of human behavioral context can help develop solutions for assisted living, fitness tracking, sleep monitoring, and several other fields. Towards addressing this issue, we raise the question: can a machine learn to recognize a diverse set of contexts and activities in a real-life through jointly learning from raw multi-modal signals (e.g., accelerometer, gyroscope and audio)? In this paper, we propose a multi-stream network comprising of temporal convolution and fully-connected layers to address the problem of multi-label behavioral context recognition. A four-stream network architecture handles learning from each modality with a contextualization module which incorporates extracted representations to infer a user's context. Our empirical evaluation suggests that a deep convolutional network trained end-to-end achieves comparable performance to manual feature engineering with minimal effort. Furthermore, the presented architecture can be extended to include similar sensors for performance improvements and handles missing modalities through multi-task learning on a highly imbalanced and sparsely labeled dataset.
机译:日常使用的智能设备(如智能手机和穿戴)越来越多地与提供巨量的了解一个人的日常生活信息的传感器集成。人类行为环境的自动和不引人注目的感应可以帮助开发辅助生活,健身追踪,睡眠监测等几个领域的解决方案。朝着解决这个问题,我们提出了一个问题:可以在机器学习,通过从原材料的多模态信号(例如,加速度计,陀螺仪和音频)共同学习识别一组不同的情境和活动的现实生活?在本文中,我们提出了一种多流网络包括颞卷积和全连接层,以解决多标记行为背景识别的问题。的四流网络架构把手从与包含提取的表示,以推断用户的上下文语境一个模块每种模态的学习。我们的实证分析表明,一个深深的卷积网络训练的端至端达到相当的性能手动功能的工程用最小的努力。此外,所提出的体系结构可以扩展到包括用于性能改进和手柄缺少一个高度不平衡和疏标记数据集通过多任务方式的学习类似的传感器。

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