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Robust Head Pose Estimation Using Extreme Gradient Boosting Machine on Stacked Autoencoders Neural Network

机译:堆叠自动化器神经网络中的极端梯度升压机的强大头部姿态估计

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摘要

Head pose estimation is an important sign in helping robots and other intelligence machines understand human. It plays a vital role in designing human computer interaction systems because many applications rely on precise results of head pose angles such as human behavior analysis, gaze estimation, 3D head reconstruction etc. This study presents a robust approach for estimating the head pose angles in a single image. More specifically, the proposed system first encodes the global features extracted from Histogram of Oriented Gradients in a multi stacked autoencoders neural network. Based on the hidden nodes in deep layers, Autoencoder has been proposed for feature reduction while maintaining the key information of data. A scalable gradient boosting machine is then employed to train and classify the embedded features. Experiences have evaluated on the Pointing 04 dataset and show that the proposed approach outperforms the state-of-the-art methods with the low head pose angle errors in pitch and yaw as 6.16 degrees and 7.17 degrees, respectively.
机译:头部姿势估计是帮助机器人和其他智能机器理解人类的重要标志。它在设计人机交互系统方面发挥着重要作用,因为许多应用依赖于头部姿势角度的精确结果,例如人行为行为分析,凝视估计,3D头重建等。本研究提出了一种鲁棒方法,用于估计头部姿势角度单个图像。更具体地,所提出的系统首先在多堆叠的AutoEncoders神经网络中从针对性梯度的直方图中提取的全局特征进行编码。基于深层中的隐藏节点,已经提出了在维护数据的关键信息的同时进行AutoEncoder的特征减少。然后采用可伸缩的梯度升压机来培训和分类嵌入功能。在指向04数据集上进行了评估的经验,并表明所提出的方法优于现有技术的方法,使俯仰和偏航的低头姿势角度误差分别为6.16度和7.17度。

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