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A Comparison of Single and Multi-View IR image-based AR Glasses Pose Estimation Approaches

机译:单型和多视图IR图像的AR眼镜姿态估计方法的比较

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In this paper, we present a study on single and multi-view image-based AR glasses pose estimation with two novel methods. The first approach is named GlassPose and is a VGG-based network. The second approach GlassPoseRN is based on ResNet18. We train and evaluate the two custom developed glasses pose estimation networks with one, two and three input images on the HMDPose dataset. We achieve errors as low as 0.10° and 0.90mm on average on all axes for orientation and translation. For both networks, we observe minimal improvements in position estimation with more input views.
机译:在本文中,我们展示了一种用两种新方法的单视图基于图像的AR眼镜姿势估计研究。 第一种方法是名为ClassedPos,是基于VGG的网络。 第二种方法GlassPosern基于Reset18。 我们在HMDPOSE数据集上培训并评估两台定制的眼镜姿势估计网络。 我们在所有轴上平均达到0.10°和0.90毫米的误差,以进行定向和翻译。 对于两个网络,我们观察使用更多输入视图的位置估计的最小改进。

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