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Joint Unsupervised Learning of Depth Pose Ground Normal Vector and Ground Segmentation by a Monocular Camera Sensor

机译:单眼相机传感器的联合无监督学习深度姿态地面正常矢量和地面分割

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摘要

We propose a completely unsupervised approach to simultaneously estimate scene depth, ego-pose, ground segmentation and ground normal vector from only monocular RGB video sequences. In our approach, estimation for different scene structures can mutually benefit each other by the joint optimization. Specifically, we use the mutual information loss to pre-train the ground segmentation network and before adding the corresponding self-learning label obtained by a geometric method. By using the static nature of the ground and its normal vector, the scene depth and ego-motion can be efficiently learned by the self-supervised learning procedure. Extensive experimental results on both Cityscapes and KITTI benchmark demonstrate the significant improvement on the estimation accuracy for both scene depth and ego-pose by our approach. We also achieve an average error of about 3 for estimated ground normal vectors. By deploying our proposed geometric constraints, the IOU accuracy of unsupervised ground segmentation is increased by 35% on the Cityscapes dataset.
机译:我们提出了一种完全无监督的方法,以同时估计场景深度,自由姿势,地面分割和地面正常载体免受单像素RGB视频序列。在我们的方法中,对不同场景结构的估计可以通过联合优化相互互动。具体地,我们使用互信息丢失来预先列出地面分割网络,并在添加通过几何方法获得的相应的自学习标签之前。通过使用地面的静态性质及其正常向量,可以通过自我监督的学习程序有效地学习现场深度和自我运动。在城市景观和基蒂基准上的广泛实验结果表明,通过我们的方法对场景深度和自我姿态的估计精度的显着改进。对于估计的地面正常向量,我们还实现了约3的平均误差。通过部署我们提出的几何限制,CityScapes DataSet的IOO精度增加了35%。

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