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SynPo-Net—Accurate and Fast CNN-Based 6DoF Object Pose Estimation Using Synthetic Training

机译:使用合成培训的Synpo-Net-Complate和基于快速的CNN 6DOF对象姿态估计

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摘要

Estimation and tracking of 6DoF poses of objects in images is a challenging problem of great importance for robotic interaction and augmented reality. Recent approaches applying deep neural networks for pose estimation have shown encouraging results. However, most of them rely on training with real images of objects with severe limitations concerning ground truth pose acquisition, full coverage of possible poses, and training dataset scaling and generalization capability. This paper presents a novel approach using a Convolutional Neural Network (CNN) trained exclusively on single-channel Synthetic images of objects to regress 6DoF object Poses directly (SynPo-Net). The proposed SynPo-Net is a network architecture specifically designed for pose regression and a proposed domain adaptation scheme transforming real and synthetic images into an intermediate domain that is better fit for establishing correspondences. The extensive evaluation shows that our approach significantly outperforms the state-of-the-art using synthetic training in terms of both accuracy and speed. Our system can be used to estimate the 6DoF pose from a single frame, or be integrated into a tracking system to provide the initial pose.
机译:图像中的6dof的估计和跟踪图像中的物体姿势是一个充满重视机器人互动和增强现实的挑战性问题。应用深度神经网络的姿态估计的最近方法表明了令人鼓舞的结果。然而,大多数人都依赖于具有严重限制的对象的真实图像的训练,关于地面真理姿势获取,完全覆盖可能的姿势,以及训练数据集缩放和泛化能力。本文介绍了一种新的方法,该方法使用专门的卷积神经网络(CNN),该方法专门用于对象的单通道合成图像,以直接退回6dof对象(Synpo-net)。所提出的Synpo-net是一种专门设计用于构成回归的网络架构,以及将实体和合成图像转换为更好地建立对应关系的中间域的所提出的域自适应方案。广泛的评估表明,在精度和速度方面,我们的方法可以使用合成培训显着优于最先进的。我们的系统可用于从单帧估计6DOF姿势,或者集成到跟踪系统中以提供初始姿势。

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