UET-Headpose: A sensor-based top-view head pose dataset

Linh Nguyen Viet, T. N. Dinh, Hoang Nguyen Viet, Duc Tran Minh, Long Tran Quoc
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引用次数: 1

Abstract

Head pose estimation is a challenging task that aims to solve problems related to predicting three dimensions vector, that serves for many applications in human-robot interaction or customer behavior. Previous researches have proposed some precise methods for collecting head pose data. But those methods require either expensive devices like depth cameras or complex laboratory environment setup. In this research, we introduce a new approach with efficient cost and easy setup to collecting head pose images, namely UET-Headpose dataset, with top-view head pose data. This method uses an absolute orientation sensor instead of Depth cameras to be set up quickly and small cost but still ensure good results. Through experiments, our dataset has been shown the difference between its distribution and available dataset like CMU Panoptic Dataset [6]. Besides using the UET-Headpose dataset and other head pose datasets, we also introduce the full-range model called FSANet-Wide, which significantly outperforms head pose estimation results by the UET-Headpose dataset, especially on top-view images. Also, this model is very lightweight and takes small size images.
UET-Headpose:基于传感器的俯视图头部姿势数据集
头部姿态估计是一项具有挑战性的任务,旨在解决与三维向量预测相关的问题,它在人机交互或客户行为中有许多应用。以往的研究已经提出了一些精确的头部姿态数据采集方法。但这些方法要么需要昂贵的设备,如深度相机,要么需要复杂的实验室环境设置。在本研究中,我们引入了一种新的方法,即UET-Headpose数据集,该方法具有成本低、设置简单的特点。该方法采用绝对方位传感器代替深度相机,设置速度快,成本低,但仍能保证良好的效果。通过实验,我们的数据集显示了其分布与现有数据集(如CMU Panoptic dataset[6])的差异。除了使用UET-Headpose数据集和其他头部姿态数据集外,我们还引入了称为FSANet-Wide的全范围模型,该模型显著优于UET-Headpose数据集的头部姿态估计结果,特别是在俯视图图像上。此外,这个模型非常轻,可以拍摄小尺寸的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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