Title :
Comparison of first order statistical and autoregressive model features for activity prediction
Author :
Kayaalti, Omer ; Asyali, Musa Hakan
Author_Institution :
Dept. of Comput. Technol., Erciyes Univ., Kayseri, Turkey
Abstract :
Activity recognition is an important subject with many applications in health care, emergency care, and assisted living. Nowadays, activity information can be acquired using small accelerometers connected to the body, including the ones available in smartphones. In this study, we assessed the influence of autoregressive model parameters or features on activity detection or classification. Our results indicate that, compared to relatively simple features such as first order statistics, autoregressive model features have rather low impact in determining or improving performance of automatic activity detection using machine intelligence.
Keywords :
artificial intelligence; assisted living; autoregressive processes; emergency services; statistical analysis; activity prediction; activity recognition; assisted living; autoregressive model features; emergency care; first order statistical model features; health care; machine intelligence; Accelerometers; Accuracy; Feature extraction; Mathematical model; Medical services; Predictive models; Training data; Activity prediction; autoregressive model; pattern recognition;
Conference_Titel :
Signal Processing Symposium (SPSympo), 2015
DOI :
10.1109/SPS.2015.7168255