This paper presents a new approach to gait identification and authentication with simple representation and lower computational complexity
which can meet intelligent surveillance’s need in precision and response. It creates Gaussian Mixture Model for each scenario
and contour of gait is extracted from binary silhouette for Euclidean distance between the centroid and any pixel on it. Contour is unfolded clockwise by the distance from the uppermost pixel
and then 2D features are transformed into 1D and normalized according to a standard model of gait. Thresholds are determined by dynamic time warping (DTW) distance between training sequences and standard model. Finally
gait recognition is performed by comparing DTW distance of testing sequences with predetermined threshold. Compared with other methods
it balances both computational cost and recognition rate
and achieves performance of intelligent surveillance.