Abstract: Mobile devices are becoming increasingly sophisticated. These devices are inherently sensors for
collection and communication of textual and voice signals. In a broader sense, the latest generation of smart cell
phones incorporates many diverse and powerful sensors such as GPS (Global Positioning Systems) sensors,
vision sensors (i.e., cameras), audio sensors (i.e., microphones), light sensors, temperature sensors, direction
sensors (i.e., magnetic compasses), and acceleration sensors (i.e., accelerometers). The availability of these
sensors in mass-marketed communication devices creates exciting new opportunities for data mining and data
mining applications. So, it is not surprising that modern mobile devices, particularly cell phones of last
generations that work on different mobile operating systems, got equipped with quite sensitive sensors. This
paper is devoted to one approach that solves human activity classification problem with help of a mobile device
carried by user. Current method is based on K-Nearest? Neighbor algorithm (K-NN). Using the magnitude of the
accelerometer data and K-NN algorithm we could identify general activities performed by user.
Keywords: human activity classification; K-NN algorithm; mobile devices; accelerometer; Android platform
Link:
ACTIVITY RECOGNITION USING K-NEAREST NEIGHBOR ALGORITHM
ON SMARTPHONE WITH TRI-AXIAL ACCELEROMETER
Sahak Kaghyan, Hakob Sarukhanyan
http://www.foibg.com/ijima/vol01/ijima01-2-p06.pdf