从轮廓识别人类活动:运动子空间和析因判别图形模型

Liang Wang, D. Suter
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引用次数: 230

摘要

本文描述了一种基于简单轮廓观察的单目视频中人类活动识别的概率框架。该方法结合了基于核主成分分析(KPCA)的特征提取和基于析因条件随机场(FCRF)的运动建模。轮廓数据通过非线性降维更紧凑地表示,该降维探索了关节动作空间的潜在结构,并保留了运动投影轨迹中的明确时间顺序。FCRF以多种交互方式对时间序列进行建模,从而通过信息共享提高联合精度,具有判别模型相对于生成模型的理想优势(例如,放宽观测值之间的独立性假设,能够有效地结合重叠特征和长期依赖关系)。在最近的两个数据集上的实验结果表明,所提出的框架不仅可以准确识别具有时间、内部和人与人之间变化的人类活动,而且对噪声和其他因素(如部分遮挡和运动风格的不规则性)具有相当的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Human Activities from Silhouettes: Motion Subspace and Factorial Discriminative Graphical Model
We describe a probabilistic framework for recognizing human activities in monocular video based on simple silhouette observations in this paper. The methodology combines kernel principal component analysis (KPCA) based feature extraction and factorial conditional random field (FCRF) based motion modeling. Silhouette data is represented more compactly by nonlinear dimensionality reduction that explores the underlying structure of the articulated action space and preserves explicit temporal orders in projection trajectories of motions. FCRF models temporal sequences in multiple interacting ways, thus increasing joint accuracy by information sharing, with the ideal advantages of discriminative models over generative ones (e.g., relaxing independence assumption between observations and the ability to effectively incorporate both overlapping features and long-range dependencies). The experimental results on two recent datasets have shown that the proposed framework can not only accurately recognize human activities with temporal, intra-and inter-person variations, but also is considerably robust to noise and other factors such as partial occlusion and irregularities in motion styles.
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