The Backfilled GEI - A Cross-Capture Modality Gait Feature for Frontal and Side-View Gait Recognition

DICTA(2012)

引用 22|浏览12
暂无评分
摘要
In this paper, we propose a novel direction for gait recognition research by proposing a new capture- modality independent, appearance-based feature which we call the Backfilled Gait Energy Image (BGEI). It can can be constructed from both frontal depth images, as well as the more commonly used side-view silhouettes, allowing the feature to be applied across these two differing capturing systems using the same enrolled database. To evaluate this new feature, a frontally captured depth-based gait dataset was created containing 37 unique subjects, a subset of which also contained sequences captured from the side. The results demonstrate that the BGEI can effectively be used to identify subjects through their gait across these two differing input devices, achieving rank 1 match rate of 100%, in our experiments. We also compare the BGEI against the GEI and GEV in their respective domains, using the CASIA dataset and our depth dataset, showing that it compares favourably against them. The experiments conducted were performed using a sparse representation based classifier with a locally discriminating input feature space, which show significant improvement in performance over other classifiers used in gait recognition literature, achieving state of the art results with the GEI on the CASIA dataset.
更多
查看译文
关键词
gait recognition research,backfilled gei,visual databases,side-view silhouettes,rank-1 match rate,gev,frontal-view gait recognition,cross-capture modality gait features,bgei,gei dataset,casia dataset,back-filled gait energy image,feature extraction,gait analysis,frontal depth images,appearance-based feature,gesture recognition,depth-based gait dataset,side-view gait recognition,capture-modality independent feature
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要