This paper proposes a Qualitative Normalised Templates (QNTs) framework for solving the human motion classification problem.
In contrast to other human motion classification methods which usually include a human model, prior knowledge on human motion
and a matching algorithm, we replace the matching algorithm (e.g. template matching) with the proposed QNTs. The human motion
is modelled by the time-varying joint angles and link lengths of an articulated human model. The ability to manage the trade-offs
between model complexity and computational cost plays a crucial role in the performance of human motion classification. The
QNTs is developed to categorise complex human motion into sets of fuzzy qualitative angles and positions in quantity space.
Classification of the human motion is done by comparing the QNTs to the parameters learned from numerical motion tracking.
Experimental results have demonstrated the effectiveness of our proposed method when classifying simple human motions, e.g.
running and walking.
Key words human motion classification - pattern recognition