Human activity recognition based on LPA

被引:2
作者
Ruixiang Li
Hui Li
Weibin Shi
机构
[1] University of Shanghai for Science and Technology,School of Optical
来源
Multimedia Tools and Applications | 2020年 / 79卷
关键词
Linear prediction coefficient; Human activity recognition; Fall detection; Feature extraction;
D O I
暂无
中图分类号
学科分类号
摘要
Human activity recognition and fall detection have been popular research topics because of its wide area of application. Traditional activity recognition methods have complex feature extraction steps. We propose a new feature extraction method based on linear prediction analysis(LPA) to reduce computational complexity involved with engineering features. The feature extraction method we propose establishes a link between human activity and the signal system and regards acceleration signals as the output of the human activity. Using the relationship between the human activity and the output signal, linear predictive analysis can isolate information about human activity and transform it into a compact representation through linear prediction coefficients (LPC). In order to verify the effectiveness of the method, we design an activity recognition system based on linear prediction analysis and feature extraction. At the same time, we study the performance of the combination of linear prediction coefficients and time domain features. We use data from the public dataset SCUT-NAA, which contains ten different activities, and another public dataset, which records people falling. A random forest classification algorithm based on ensemble learning is used for activity recognition and fall detection. The results show that the combined vector of linear prediction coefficient and time domain activity amplitude feature obtained a 93% accuracy rate and the system evaluation index F1 of 0.92 on the SCUT-NAA dataset. Additionally, we achieved an accuracy rate of 97% in fall detection.
引用
收藏
页码:31069 / 31086
页数:17
相关论文
共 76 条
  • [1] Aggarwal J(2011)Human activity analysis: a review ACM Comput Surv 43 16-43
  • [2] Ryoo M(2017)Real-time human activity recognition from accelerometer data using Convolutional Neural Networks Appl. Soft Comput. 62 62-922
  • [3] Andrey I(2015)Physical human activity recognition using wearable sensors Sensors 15 31314-31338
  • [4] Attal F(2019)A machine learning approach for fall detection and daily living activity recognition IEEE Access 7 38670-38687
  • [5] Mohammed S(2008)Detection of daily activities and sports with wearable sensors in controlled and uncontrolled conditions IEEE transactions on information technology in biomedicine : a publication of the IEEE Engineering in Medicine and Biology Society 12 20-26
  • [6] Dedabrishvili M(2014)Evaluation of accelerometer based multi-sensor versus single-sensor activity recognition systems Med. Eng. Phys. 36 36-785
  • [7] Chamroukhi F(2019)A multisensor multiclassifier hierarchical fusion model based on entropy weight for human activity recognition using wearable inertial sensors IEEE Transactions on Human-Machine Systems 49 105-111
  • [8] Oukhellou L(2018)A robust human activity recognition system using smartphone sensors and deep learning Futur Gener Comput Syst 81 307-313
  • [9] Amirat Y(2018)Sparse representation based classification scheme for human activity recognition using smartphones Multimed. Tools Appl. 78 78-11045
  • [10] Chelli A(2018)Classification of Children’s sitting postures using machine learning algorithms Appl Sci 8 1280-1209