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Gender Classification Based on Fusion of Weighted Multi-View Gait Component Distance

机译:基于加权多视角步态分量距离融合的性别分类

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In this paper, a novel fusion method for gender classification from gait based on multi-view video sequences is proposed. At the feature level, each human silhouette in a whole gait period is segmented into eight different components. Then at the match score level, the discrimination distance of each corresponding component under every camera-view angle is respectively weighted. The two-dimension weighting coefficient matrix is calculated by our presented statistical algorithm according to the expectation and variance of within- and between-class distances. A weighted sum rule is employed as the fusion scheme to finally generate the multi-view-fused discrimination distances. Experimental results show an improvement on the correct classification rate and prove our work practically meaningful for gait recognition especially in a multi-camera surveillance system.
机译:提出了一种基于多视角视频序列的步态性别分类融合方法。在功能级别上,整个步态周期中的每个人体轮廓都分为八个不同的部分。然后,在比赛得分水平上,分别加权每个摄像机视角下每个对应成分的辨别距离。根据类内和类间距离的期望和方差,利用我们提出的统计算法计算二维加权系数矩阵。加权和规则被用作融合方案以最终产生多视点融合的辨别距离。实验结果表明,正确分类率得到了改善,证明了我们的工作对步态识别具有实际意义,尤其是在多摄像机监控系统中。

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