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An Improved Approach for Depth Data based Face Pose Estimation using Particle Swarm Optimization

机译:一种使用粒子群优化的深度数据面部姿势估计的改进方法

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This paper presents an improved approach for face pose estimation based on depth data using particle swarm optimization (PSO). In this approach, the frontal face of the system-user is first initialized and its depth image is taken as a person-specific template. Each query face of that user is rotated and translated with respect to its centroid using PSO to match with the template. Since the centroid of each query face always changes with the face pose changing, a common reference point has to be defined to measure the exact transformation of the query face. Thus, the nose tips of the optimal transformed face and the query face are localized to recompute the transformation from the query face to the optimal transformed face that matched with the template. Using the recomputed rotation and translation information, finally, the pose of the query face can be approximated by the relative pose between the query face and the template face. Experiments on public database show that the accuracy of this new method is more than 99%, which is much higher than the best performance (< 91%) of existing work.
机译:本文介绍了基于使用粒子群优化(PSO)的深度数据的面部姿势估计的改进方法。在这种方法中,首先初始化系统用户的正面,并且其深度图像被视为特定人的模板。使用PSO与模板匹配,该用户的每个查询面都旋转并转换为其质心。由于每个查询面的质心始终随着面部姿势变化而变化,因此必须定义公共参考点以测量查询面的精确转换。因此,最佳变换面的鼻尖和查询面的尖端是本地化的,以将来自查询面的变换重新计算到与模板匹配的最佳变换面。最后,使用重新计算的旋转和翻译信息,最后,查询面的姿势可以通过查询面和模板面之间的相对姿势来近似。公共数据库的实验表明,这种新方法的准确性超过99%,远高于现有工作的最佳性能(<91%)。

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