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Head Pose-Based Conditional Regression Forest for Facial Feature Detection

机译:面部特征检测头部姿势条件回归林

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Multi-angles of facial feature detection is still a challenging research. In this paper, the author proposes a precision head pose estimation method as a condition to improve the performance of regression forests, and decreases the missing rate caused by head deflection. The basic idea is used by locality preserving projection, a kind of manifold learning, and nonlinear regression (LPP+NLR) for getting the global information of pose and label it, then utilize trained conditional regression classifier to identify the feature points in global characteristics. The effectiveness of the proposed facial feature detection algorithm is illustrated in the experiments and the comparison with several recent methods.
机译:面部特征检测的多角度仍然是一个具有挑战性的研究。本文提出了一种精确的头部姿态估计方法作为提高回归森林性能的条件,并降低了头偏转引起的缺失率。基本思想由位置保存投影,一种歧管学习和非线性回归(LPP + NLR)用于获取姿势和标记的全局信息,然后利用训练的条件回归分类器来识别全局特征中的特征点。在实验中示出了所提出的面部特征检测算法的有效性以及与几种方法的比较。

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