首页> 外国专利> FEATURE AND MODEL MUTUAL MATCHING FACE TRACKING METHOD BASED ON INCREMENT PRINCIPAL COMPONENT ANALYSIS

FEATURE AND MODEL MUTUAL MATCHING FACE TRACKING METHOD BASED ON INCREMENT PRINCIPAL COMPONENT ANALYSIS

机译:基于增量主成分分析的特征与模型相互匹配人脸跟踪方法

摘要

Disclosed is a feature and model mutual matching face tracking method based on on-line increment principal component analysis. The method comprises the following steps: performing off-line modeling on multiple face images to obtain a model matching (CLM) model A; performing key point detection on each frame of a face video to be tracked, and combining a set of all key points and robust descriptors thereof into a key point model B; performing, on the basis of the key point model B, key point matching on each frame of the face video to be tracked to obtain an initial face gesture parameter set in each frame of face image; performing, by using the model A, CLM face tracking on the face video to be tracked; performing re-tracking according to the initial face gesture parameter set and an initial tracking resu and updating the model A, and repeating the steps to obtain a final face tracking result. The present invention solves the problem of tracking losing occurred when a variation between adjacent frames in a target image is large during CLM face tracking, thereby improving the tracking accuracy.
机译:公开了一种基于在线增量主成分分析的特征与模型互配人脸跟踪方法。该方法包括以下步骤:对多个人脸图像进行离线建模以获得模型匹配(CLM)模型A;对要跟​​踪的面部视频的每一帧进行关键点检测,并将所有关键点集及其鲁棒描述符组合成关键点模型B;在关键点模型B的基础上,对待跟踪的人脸视频的每一帧进行关键点匹配,得到在人脸图像的每一帧中设置的初始人脸手势参数;通过模型A对待跟踪的人脸视频进行CLM人脸跟踪;根据所述初始面部手势参数集和初始跟踪结果进行重新跟踪;更新模型A,并重复上述步骤以获得最终的人脸跟踪结果。本发明解决了在CLM面部跟踪过程中,当目标图像中相邻帧之间的变化较大时发生跟踪丢失的问题,从而提高了跟踪精度。

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