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Activity recognition in collaborative environments

机译:协作环境中的活动识别

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摘要

We present an approach to learning to recognize concurrent activities based on multiple data streams. One example is recognition of concurrent activities in hospital operating rooms based on multiple wearable and embedded sensors. This problem differs from standard time series classification in that there is no natural single target dimension, as multiple activities are performed at the same time. Hence, most existing approaches fail. The key innovations that allow us to tackle this problem is (1) learning to recognize base activities from raw sensor data, (2) creating artificial joint activities from base activities using frequent pattern mining and (3) handling temporal dependency using virtual evidence boosting.
机译:我们提出了一种学习方法,以根据多个数据流识别并发活动。一个示例是根据多个可穿戴和嵌入式传感器在医院手术室中的并行活动的认识。此问题与标准时间序列分类不同,因为没有自然的单个目标尺寸,因为同时执行多个活动。因此,大多数现有方法都失败了。允许我们解决这个问题的关键创新是(1)学习从原始传感器数据识别基础活动,(2)使用频繁的模式挖掘和(3)使用虚拟证据提升来处理时间依赖性从基础活动中创建人工联合活动。

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