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Head Pose Estimation on Top of Haar-Like Face Detection: A Study Using the Kinect Sensor

机译:Haar-like人脸检测之上的头部姿势估计:使用Kinect传感器的研究

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Head pose estimation is a crucial initial task for human face analysis, which is employed in several computer vision systems, such as: facial expression recognition, head gesture recognition, yawn detection, etc. In this work, we propose a frame-based approach to estimate the head pose on top of the Viola and Jones (VJ) Haar-like face detector. Several appearance and depth-based feature types are employed for the pose estimation, where comparisons between them in terms of accuracy and speed are presented. It is clearly shown through this work that using the depth data, we improve the accuracy of the head pose estimation. Additionally, we can spot positive detections, faces in profile views detected by the frontal model, that are wrongly cropped due to background disturbances. We introduce a new depth-based feature descriptor that provides competitive estimation results with a lower computation time. Evaluation on a benchmark Kinect database shows that the histogram of oriented gradients and the developed depth-based features are more distinctive for the head pose estimation, where they compare favorably to the current state-of-the-art approaches. Using a concatenation of the aforementioned feature types, we achieved a head pose estimation with average errors not exceeding 5 . 1 ∘ , 4 . 6 ∘ , 4 . 2 ∘ for pitch, yaw and roll angles, respectively.
机译:头部姿势估计是人脸分析的关键初始任务,已在多种计算机视觉系统中使用,例如:面部表情识别,头部手势识别,哈欠检测等。在这项工作中,我们提出了一种基于帧的方法估计中提琴和琼斯(VJ)Haar型面部检测器顶部的头部姿势。几种基于外观和深度的特征类型用于姿态估计,并在精度和速度方面进行了比较。通过这项工作可以清楚地表明,使用深度数据可以提高头部姿势估计的准确性。此外,我们可以发现正面检测,即正面模型检测到的轮廓视图中的人脸,这些人脸由于背景干扰而被错误裁剪。我们引入了一个新的基于深度的特征描述符,该描述符以较低的计算时间提供了具有竞争力的估计结果。对基准Kinect数据库的评估表明,定向梯度的直方图和已开发的基于深度的特征对于头部姿势估计更具特色,与当前的最新技术相比,它们具有优势。使用上述特征类型的串联,我们实现了头部姿势估计,其平均误差不超过5。 1分,4分。 6分,4。 2∘分别表示俯仰角,偏航角和侧倾角。

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