CVMar 27, 2014

Pyramidal Fisher Motion for Multiview Gait Recognition

arXiv:1403.6950v139 citations
Originality Incremental advance
AI Analysis

This work addresses gait recognition for individual identification, presenting an incremental improvement over existing methods.

The paper tackled gait recognition by proposing a new method using densely sampled short-term trajectories and Fisher Vector encoding, achieving promising results on the AVA Multiview Gait dataset.

The goal of this paper is to identify individuals by analyzing their gait. Instead of using binary silhouettes as input data (as done in many previous works) we propose and evaluate the use of motion descriptors based on densely sampled short-term trajectories. We take advantage of state-of-the-art people detectors to define custom spatial configurations of the descriptors around the target person. Thus, obtaining a pyramidal representation of the gait motion. The local motion features (described by the Divergence-Curl-Shear descriptor) extracted on the different spatial areas of the person are combined into a single high-level gait descriptor by using the Fisher Vector encoding. The proposed approach, coined Pyramidal Fisher Motion, is experimentally validated on the recent `AVA Multiview Gait' dataset. The results show that this new approach achieves promising results in the problem of gait recognition.

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