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End-to-End Learning Framework for IMU-Based 6-DOF Odometry

机译:基于IMU的6自由度里程表的端到端学习框架

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摘要

This paper presents an end-to-end learning framework for performing 6-DOF odometry by using only inertial data obtained from a low-cost IMU. The proposed inertial odometry method allows leveraging inertial sensors that are widely available on mobile platforms for estimating their 3D trajectories. For this purpose, neural networks based on convolutional layers combined with a two-layer stacked bidirectional LSTM are explored from the following three aspects. First, two 6-DOF relative pose representations are investigated: one based on a vector in the spherical coordinate system, and the other based on both a translation vector and an unit quaternion. Second, the loss function in the network is designed with the combination of several 6-DOF pose distance metrics: mean squared error, translation mean absolute error, quaternion multiplicative error and quaternion inner product. Third, a multi-task learning framework is integrated to automatically balance the weights of multiple metrics. In the evaluation, qualitative and quantitative analyses were conducted with publicly-available inertial odometry datasets. The best combination of the relative pose representation and the loss function was the translation and quaternion together with the translation mean absolute error and quaternion multiplicative error, which obtained more accurate results with respect to state-of-the-art inertial odometry techniques.
机译:本文提出了一种仅使用从低成本IMU获得的惯性数据来执行6自由度测距的端到端学习框架。所提出的惯性里程测量方法可以利用惯性传感器(可在移动平台上广泛使用)来估计其3D轨迹。为此,从以下三个方面探索了基于卷积层结合两层堆叠双向LSTM的神经网络。首先,研究了两种6-DOF相对姿态表示:一种基于球坐标系中的向量,另一种基于平移向量和单位四元数。其次,网络中的损失函数是通过结合多个6自由度姿态距离度量来设计的:均方误差,平移平均绝对误差,四元数乘法误差和四元数内积。第三,集成了多任务学习框架以自动平衡多个指标的权重。在评估中,使用公开可用的惯性里程表数据集进行了定性和定量分析。相对姿态表示和损失函数的最佳组合是平移和四元数以及平移平均绝对误差和四元数相乘误差,相对于最新的惯性测距技术,它们可以获得更准确的结果。

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