Title :
Support Vector Machine for tri-axial accelerometer-based fall detector
Author :
Rescio, Gabriele ; Leone, A. ; Siciliano, Pietro
Author_Institution :
Inst. for Microelectron. & Microsyst., Lecce, Italy
Abstract :
The aim of this work is the development of a computationally low-cost scheme for feature extraction and the implementation of an One-class Support Vector Machine classifier for people fall detection, by using a tri-axial MEMS wearable wireless accelerometer, managed by a stand-alone PC through ZigBee connection. The proposed approach allows the generalization of the detection of fall events in several practical conditions after a short period of calibration. The approach appears invariant to age, weight, people´s height and the relative positioning area (even in the upper part of the waist) This overcomes the drawbacks of well-known threshold-based approaches in which several parameters need to be manually estimated according to the specific features of the end-user. In order to limit the workload, the specific study on posture analysis has been avoided and a polynomial kernel function is used, while maintaining high performances in terms of specificity and sensitivity.
Keywords :
Zigbee; accelerometers; calibration; computerised monitoring; feature extraction; image sensors; microsensors; object detection; polynomials; pose estimation; support vector machines; ZigBee connection; calibration; feature extraction; parameter estimation; polynomial kernel function; posture analysis; standalone PC; support vector machine; threshold-based approach; tri-axial MEMS wearable wireless accelerometer; tri-axial accelerometer-based fall detector; Acceleration; Accelerometers; Calibration; Feature extraction; Kernel; Polynomials; Support vector machines; Fall Detector; MEMS accelerometer; Support Vector Machine;
Conference_Titel :
Advances in Sensors and Interfaces (IWASI), 2013 5th IEEE International Workshop on
Conference_Location :
Bari
Print_ISBN :
978-1-4799-0039-8
DOI :
10.1109/IWASI.2013.6576096