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首页> 外文期刊>IEEE transactions on multimedia >QuatNet: Quaternion-Based Head Pose Estimation With Multiregression Loss
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QuatNet: Quaternion-Based Head Pose Estimation With Multiregression Loss

机译:QuantNet:基于四元的头部姿势估计,具有多元回归损耗

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Head pose estimation has attracted immense research interest recently, as its inherent information significantly improves the performance of face-related applications such as face alignment and face recognition. In this paper, we conduct an in-depth study of head pose estimation and present a multiregression loss function, an L2 regression loss combined with an ordinal regression loss, to train a convolutional neural network (CNN) that is dedicated to estimating head poses from RGB images without depth information. The ordinal regression loss is utilized to address the nonstationary property observed as the facial features change with respect to different head pose angles and learn robust features. The L2 regression loss leverages these features to provide precise angle predictions for input images. To avoid the ambiguity problem in the commonly used Euler angle representation, we further formulate the head pose estimation problem in quaternions. Our quaternion-based multiregression loss method achieves state-of-the-art performance on the AFLW2000, AFLW test set, and AFW datasets and is closing the gap with methods that utilize depth information on the BIWI dataset.
机译:最近头部姿势估计引起了巨大的研究兴趣,因为其内在的信息显着提高了面部对准和面部识别等面部相关应用的性能。在本文中,我们对头部姿势估计进行了深入研究并呈现了一种多元损失函数,L2回归损失与序数回归损失结合,训练专用于估计头部姿势的卷积神经网络(CNN) RGB图像没有深度信息。由于面部特征在不同的头部姿势角度改变并学习鲁棒特征,因此利用序数回归损耗来解决所观察到的非间平性质。 L2回归损耗利用这些特征来提供输入图像的精确角度预测。为了避免常用的欧拉角度表示中的模糊问题,我们进一步制定了四季度的头部姿势估计问题。我们的四元型多元损耗方法在AFLW2000,AFLW测试集和AFW数据集上实现了最先进的性能,并使用利用BIWI数据集的深度信息的方法关闭间隙。

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