首页> 外文会议>Intelligent Sensors, Sensor Networks and Information Processing (ISSNIP), 2009 >Evolving discriminative features robust to sensor displacement for activity recognition in body area sensor networks
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Evolving discriminative features robust to sensor displacement for activity recognition in body area sensor networks

机译:不断发展的区分功能,对传感器位移具有鲁棒性,可识别人体区域传感器网络中的活动

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Activity and gesture recognition from body-worn acceleration sensors is an important application in body area sensor networks. The key to any such recognition task are discriminative and variation tolerant features. Furthermore good features may reduce the energy requirements of the sensor network as well as increase the robustness of the activity recognition. We propose a feature extraction method based on genetic programming. We benchmark this method using two datasets and compare the results to a feature selection which is typically used for obtaining a set of features. With one extracted feature we achieve an accuracy of 73.4% on a fitness activity dataset, in contrast to 70.1% using one selected standard feature. In a gesture based HCI dataset we achieved 95.0% accuracy with one extracted feature. A selection of up to five standard features achieved 90.6% accuracy in the same setting. On the HCI dataset we also evaluated the robustness of extracted features to sensor displacement which is a common problem in movement based activity and gesture recognition. With one extracted features we achieved an accuracy of 85.0% on a displaced sensor position. With the best selection of standard features we achieved 55.2% accuracy. The results show that our proposed genetic programming feature extraction method is superior to a feature selection based on standard features.
机译:身体磨损加速度传感器的活动和手势识别是体形传感器网络中的重要应用。任何此类识别任务的关键是歧视性和变异容忍特征。此外,良好的特征可以降低传感器网络的能量要求,以及增加活动识别的鲁棒性。我们提出了一种基于遗传编程的特征提取方法。我们使用两个数据集基准此方法,并将结果与​​功能选择进行比较,该特征选择通常用于获得一组特征。通过一个提取的特征,我们在健身活动数据集中实现了73.4%的精度,与使用一个选定的标准功能相比,与70.1%相比。在基于手势的HCI数据集中,我们通过一个提取的功能实现了95.0%的准确性。最多五种标准功能的选择在相同的设置中获得了90.6%的精度。在HCI数据集上,我们还评估了提取的特征对传感器位移的鲁棒性,这是基于运动的活动和手势识别的常见问题。通过一个提取的特征,我们在位移的传感器位置达到了85.0%的精度。随着最佳选择标准功能,精度为55.2%。结果表明,我们提出的遗传编程特征提取方法优于基于标准特征的特征选择。

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