Abstract

In this paper, the view variations effect in human gait recognition using sub-window extraction algorithm is proposed. Here different variation is created based on the walking people in three different angles (i.e. 0, 45 and 90)with respect to particular line. Our proposed method works on two different phases: Extraction phase and Recognition Phase. In first phase, gait images, captured from different angles, are enhanced using clipping, filtering and histogram equalization. Then apply proposed sub window extraction algorithm on enhanced gait images and gathered different features like person length, leg angle, leg length, hand length etc. Finally apply back propagation algorithm for the recognition of gait images. Experiments are carried out using different datasets.

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