Sensor-Based Abnormal Human-Activity Detection

@article{Yin2008SensorBasedAH,
  title={Sensor-Based Abnormal Human-Activity Detection},
  author={Jie Yin and Qiang Yang and Jeffrey Junfeng Pan},
  journal={IEEE Transactions on Knowledge and Data Engineering},
  year={2008},
  volume={20},
  pages={1082-1090}
}
With the availability of affordable sensors and sensor networks, sensor-based human activity recognition has attracted much attention in artificial intelligence and ubiquitous computing. [...] Key Method To solve this problem, our approach first employs a one-class support vector machine (SVM) that is trained on commonly available normal activities, which filters out the activities that have a very high probability of being normal.Expand
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