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Frontiers of Information Technology & Electronic Engineering
ISSN 2095-9184 (print), ISSN 2095-9230 (online)
2016 Vol.17 No.6 P.516-526
Unseen head pose prediction using dense multivariate label distribution
Abstract: Accurate head poses are useful for many face-related tasks such as face recognition, gaze estimation, and emotion analysis. Most existing methods estimate head poses that are included in the training data (i.e., previously seen head poses). To predict head poses that are not seen in the training data, some regression-based methods have been proposed. However, they focus on estimating continuous head pose angles, and thus do not systematically evaluate the performance on predicting unseen head poses. In this paper, we use a dense multivariate label distribution (MLD) to represent the pose angle of a face image. By incorporating both seen and unseen pose angles into MLD, the head pose predictor can estimate unseen head poses with an accuracy comparable to that of estimating seen head poses. On the Pointing’04 database, the mean absolute errors of results for yaw and pitch are 4.01° and 2.13°, respectively. In addition, experiments on the CAS-PEAL and CMU Multi-PIE databases show that the proposed dense MLD-based head pose estimation method can obtain the state-of-the-art performance when compared to some existing methods.
Key words: Head pose estimation, Dense multivariate label distribution, Sampling intervals, Inconsistent labels
方法:针对训练数据库不包含姿态的估计问题,本文提出使用稠密多变量标签分布表示人脸姿态。通过给样本分配稠密化的多变量标签,可以实现对数据库不包含姿态的情况进行较为准确的估计。
结论:本文方法在Pointing’04数据库上的yaw和pitch方向分别取得了平均绝对误差4.01°和2.13°。此外,在CAL-PEAL,Multi-PIE等公开库上的实验表明,本文方法在训练数据库包含姿态上的预测性能也优于其他比较先进的方法。
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DOI:
10.1631/FITEE.1500235
CLC number:
TP391.4
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On-line Access:
2024-08-27
Received:
2023-10-17
Revision Accepted:
2024-05-08
Crosschecked:
2016-05-06