Inertial Measurement Units (IMUs) are interceptive modalities that provide ego-motion measurements independent of the environmental factors. They are widely adopted in various autonomous systems. Motivated by the limitations in processing the noisy measurements from these sensors using their mathematical models, researchers have recently proposed various deep learning architectures to estimate inertial odometry in an end-to-end manner. Nevertheless, the high-frequency and redundant measurements from IMUs lead to long raw sequences to be processed. In this study, we aim to investigate the efficacy of accurate preintegration as a more realistic solution to the IMU motion model for deep inertial odometry (DIO) and the resultant DIO is a fusion of model-driven and data-driven approaches. The accurate IMU preintegration has the potential to outperform numerical approximation of the continuous IMU model used in the existing DIOs. Experimental results validate the proposed DIO.
翻译:惰性测量单位(IMUs)是不受环境因素影响的自动测量方法,在各种自主系统中广泛采用。受这些传感器利用数学模型处理噪音测量的局限性的驱使,研究人员最近提出了各种深层次的学习结构,以便以端到端的方式估计惯性视量。不过,从IMUs进行的高频率和冗余测量导致需要处理的长的原始序列。在本研究中,我们的目标是调查精确的预感的功效,以作为IMU运动模型的更现实的解决方案,用于深惯性观察测量(DIO),而由此产生的DIO是模型驱动和数据驱动方法的结合。精确的IMU前整合有可能超过现有DIOs中所使用的连续的IMU模型的数值近似度。实验结果验证了拟议的DIO。