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RegNet: Multimodal sensor registration using deep neural networks

机译:RegNet:使用深度神经网络的多模式传感器配准

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In this paper, we present RegNet, the first deep convolutional neural network (CNN) to infer a 6 degrees of freedom (DOF) extrinsic calibration between multimodal sensors, exemplified using a scanning LiDAR and a monocular camera. Compared to existing approaches, RegNet casts all three conventional calibration steps (feature extraction, feature matching and global regression) into a single real-time capable CNN. Our method does not require any human interaction and bridges the gap between classical offline and target-less online calibration approaches as it provides both a stable initial estimation as well as a continuous online correction of the extrinsic parameters. During training we randomly decalibrate our system in order to train RegNet to infer the correspondence between projected depth measurements and RGB image and finally regress the extrinsic calibration. Additionally, with an iterative execution of multiple CNNs, that are trained on different magnitudes of decalibration, our approach compares favorably to state-of-the-art methods in terms of a mean calibration error of 0.28° for the rotational and 6 cm for the translation components even for large decalibrations up to 1.5 m and 20°.
机译:在本文中,我们介绍RegNet,这是第一个可推断多模式传感器之间的6自由度(DOF)外在校准的深度卷积神经网络(CNN),例如使用扫描LiDAR和单目摄像头。与现有方法相比,RegNet将所有三个常规校准步骤(特征提取,特征匹配和全局回归)转换为一个具有实时功能的CNN。我们的方法不需要任何人为干预,并弥补了传统离线和无目标在线校准方法之间的差距,因为它既提供了稳定的初始估计,又提供了外部参数的连续在线校正。在训练过程中,我们随机对系统进行校准,以训练RegNet推断投影深度测量值与RGB图像之间的对应关系,并最终进行外部校准。此外,通过迭代执行多个在不同幅度的失标情况下训练的CNN,我们的方法相对于最新方法具有可比性,在旋转时的平均校准误差为0.28°,而在旋转时的平均校准误差为6 cm。平移组件,甚至适用于1.5 m和20°的大型失校准。

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