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Learning by Inertia: Self-supervised Monocular Visual Odometry for Road Vehicles

机译:通过惯性学习:道路车辆的自我监督单眼视觉里程表

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In this paper, we present iDVO (inertia-embedded deep visual odometry), a self-supervised learning based monocular visual odometry (VO) for road vehicles. When modelling the geometric consistency within adjacent frames, most deep VO methods ignore the temporal continuity of the camera pose, which results in a very severe jagged fluctuation in the velocity curves. With the observation that road vehicles tend to perform smooth dynamic characteristics in most of the time, we design the inertia loss function to describe the abnormal motion variation, which assists the model to learn the consecutiveness from long-term camera ego-motion. Based on the recurrent convolutional neural network (RCNN) architecture, our method implicitly models the dynamics of road vehicles and the temporal consecutiveness by the extended Long Short-Term Memory (LSTM) block. Furthermore, we develop the dynamic hard-edge mask to handle the non-consistency in fast camera motion by blocking the boundary part and which generates more efficiency in the whole non-consistency mask. The proposed method is evaluated on the KITTI dataset, and the results demonstrate state-of-the-art performance with respect to other monocular deep VO and SLAM approaches.
机译:在本文中,我们介绍了iDVO(惯性嵌入式深层视觉里程表),这是一种用于道路车辆的基于自我监督学习的单眼视觉里程表(VO)。在对相邻帧内的几何一致性建模时,大多数深部VO方法会忽略相机姿态的时间连续性,这会导致速度曲线中出现非常严重的锯齿状波动。通过观察道路车辆在大多数情况下往往表现出平滑的动态特性,我们设计了惯性损失函数来描述异常运动变化,这有助于模型从长期的相机自我运动中学习连续性。基于递归卷积神经网络(RCNN)架构,我们的方法通过扩展的长短期记忆(LSTM)块隐式地对道路车辆的动力学和时间连续性进行建模。此外,我们开发了动态硬边蒙版,通过遮挡边界部分来处理相机快速运动中的不一致性,从而在整个不一致性蒙版中产生了更高的效率。在KITTI数据集上对提出的方法进行了评估,结果证明了相对于其他单眼深VO和SLAM方法的最新性能。

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