\begin{abstract} This paper explores a novel approach for person recognition based on skeletal measurements. After showing that exact measurements allow for exact recognition, we study two algorithmic approaches for identification in case of approximate measurements. A real-life experiment with 25 people and measurements obtained from the Kinect range camera gives us promising results and comparison with state of the art facial recognition and validates the viability of skeleton-base identification, \end{abstract}