Title :
Fall Detection Based on Sequential Modeling of Radar Signal Time-Frequency Features
Author :
Meng Wu ; Xiaoxiao Dai ; Zhang, Yimin D. ; Davidson, Bradley ; Amin, Moeness G. ; Jun Zhang
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Denver, Denver, CO, USA
Abstract :
Falls are one of the greatest threats to elderly health as they carry out their daily living routines and activities. Therefore, it is very important to detect falls of an elderly in a timely and accurate manner, so that immediate response and proper care can be rendered. Radar is an effective non-intrusive sensing modality which is well suited for this purpose. It can detect human motions in all types of environments, penetrate walls and fabrics, preserve privacy, and is insensitive to lighting conditions. In this paper, we use micro-Doppler features in radar signal corresponding to human body motions and gait to detect falls using a narrowband pulse-Doppler radar. Human motions cause time-varying Doppler signatures, which are analyzed using time-frequency representations and matching pursuit decomposition for feature extraction and fall detection. The extracted features include the principal components of the time-frequency signal representations. To analyze the sequential characteristics of typical falls, we use the extracted signal features for training and testing hidden Markov models and support vector machines indifferent falling scenarios. Experimental results demonstrate that the proposed algorithm and method achieve fast and accurate fall detections.
Keywords :
Doppler radar; feature extraction; gait analysis; geriatrics; hidden Markov models; medical signal detection; medical signal processing; principal component analysis; radar detection; radar signal processing; signal representation; support vector machines; time-frequency analysis; elderly health; fall detection; feature extraction; gait analysis; hidden Markov models; human body motions; matching pursuit decomposition; microDoppler features; narrowband pulse-Doppler radar; principal component analysis; radar signal time-frequency features; support vector machines; time-frequency representation; time-frequency signal representation; time-varying Doppler signatures; Doppler radar; Feature extraction; Hidden Markov models; Spectrogram; Time-frequency analysis; Vectors; Doppler radar; Fall detection; hidden Markov model; matching pursuit decomposition; principal component analysis; support vector machine; time-frequency analysis;
Conference_Titel :
Healthcare Informatics (ICHI), 2013 IEEE International Conference on
Conference_Location :
Philadelphia, PA
DOI :
10.1109/ICHI.2013.27