论文标题
惯性传感符合人工智能:机会还是挑战?
Inertial Sensing Meets Artificial Intelligence: Opportunity or Challenge?
论文作者
论文摘要
惯性导航系统(INS)已被广泛用于在智能运输系统中提供独立且连续的运动估计。最近,芯片级惯性传感器的出现将相关应用程序从位置,导航和移动映射扩展到基于位置的服务,无人系统和运输大数据。同时,从大数据的出现以及算法和计算能力的改善中受益,人工智能(AI)已成为已成功应用于各个领域的共识工具。本文回顾了有关使用AI技术来增强各个方面的惯性感测的研究,包括传感器设计和选择,校准和错误建模,导航和运动传感算法,多传感器信息融合,系统评估和实际应用。基于从近300个相关出版物中选择的30多种代表性文章,总结了各个方面的最新技术,优势和挑战。最后,它总结了AI增强惯性感应的九个优势和九个挑战,然后指出了未来的研究方向。
The inertial navigation system (INS) has been widely used to provide self-contained and continuous motion estimation in intelligent transportation systems. Recently, the emergence of chip-level inertial sensors has expanded the relevant applications from positioning, navigation, and mobile mapping to location-based services, unmanned systems, and transportation big data. Meanwhile, benefit from the emergence of big data and the improvement of algorithms and computing power, artificial intelligence (AI) has become a consensus tool that has been successfully applied in various fields. This article reviews the research on using AI technology to enhance inertial sensing from various aspects, including sensor design and selection, calibration and error modeling, navigation and motion-sensing algorithms, multi-sensor information fusion, system evaluation, and practical application. Based on the over 30 representative articles selected from the nearly 300 related publications, this article summarizes the state of the art, advantages, and challenges on each aspect. Finally, it summarizes nine advantages and nine challenges of AI-enhanced inertial sensing and then points out future research directions.