概率主成分分析的变分变换不变混合

J. Tu, Yun Fu, A. Ivanovic, Thomas S. Huang, Li Fei-Fei
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引用次数: 1

摘要

在许多基于视频的目标识别应用中,目标的外观是通过视觉跟踪或检测获得的,并且由于不对准而不一致。我们认为,如果能通过同时在外观、空间和时间域对目标进行聚类,从而减少由于不对准引起的目标外观不一致,就可以消除不对准。因此,我们提出从数据中学习变换不变混合概率主成分分析(TIMPPCA)模型,同时消除对差。该模型采用生成式框架,并将偏差作为模型中的隐变量。然后基于变分消息传递(VMP)技术推导变分EM更新规则。将提出的TIMP-PCA应用于提高头部姿态估计性能和检测会议室视频中注意力焦点的变化,用于会议室视频的索引/检索,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational Transform Invariant Mixture of Probabilistic PCA
In many video-based object recognition applications, the object appearances are acquired by visual tracking or detection and are inconsistent due to misalignments. We believe the misalignments can be removed if we can reduce the inconsistency in the object appearances caused by misalignments through clustering the objects in appearance, space and time domain simultaneously. We therefore propose to learn Transform Invariant Mixtures of Probabilistic PCA (TIMPPCA) model from the data while at the same time eliminating the misalignments. The model is formulated in a generative framework, and the misalignments are considered as hidden variables in the model. Variational EM update rules are then derived based on Variational Message Passing (VMP) techniques. The proposed TIMP-PCA is applied to improve head pose estimation performance and to detect the change of attention focus in meeting room video for meeting room video indexing/retrieval and achieves promising performance.
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