Saha Swapnil Sayan, Du Yayun, Sandha Sandeep Singh, Garcia Luis Antonio, Jawed Mohammad Khalid, Srivastava Mani
University of California, Los Angeles, Los Angeles, CA, USA.
Northwestern University, Evanston, IL, USA.
IEEE ION Position Locat Navig Symp. 2023 Apr;2023:708-723. doi: 10.1109/plans53410.2023.10139997. Epub 2023 Jun 8.
Inertial navigation provides a small footprint, low-power, and low-cost pathway for localization in GPS-denied environments on extremely resource-constrained Internet-of-Things (IoT) platforms. Traditionally, application-specific heuristics and physics-based kinematic models are used to mitigate the curse of drift in inertial odometry. These techniques, albeit lightweight, fail to handle domain shifts and environmental non-linearities. Recently, deep neural-inertial sequence learning has shown superior odometric resolution in capturing non-linear motion dynamics without human knowledge over heuristic-based methods. These AI-based techniques are data-hungry, suffer from excessive resource usage, and cannot guarantee following the underlying system physics. This paper highlights the unique methods, opportunities, and challenges in porting real-time AI-enhanced inertial navigation algorithms onto IoT platforms. First, we discuss how platform-aware neural architecture search coupled with ultra-lightweight model backbones can yield neural-inertial odometry models that are 31-134× smaller yet achieve or exceed the localization resolution of state-of-the-art AI-enhanced techniques. The framework can generate models suitable for locating humans, animals, underwater sensors, aerial vehicles, and precision robots. Next, we showcase how techniques from neurosymbolic AI can yield physics-informed and interpretable neural-inertial navigation models. Afterward, we present opportunities for fine-tuning pre-trained odometry models in a new domain with as little as 1 minute of labeled data, while discussing inexpensive data collection and labeling techniques. Finally, we identify several open research challenges that demand careful consideration moving forward.
惯性导航为在全球定位系统(GPS)信号受阻的环境中,在资源极度受限的物联网(IoT)平台上进行定位提供了一种占地面积小、低功耗且低成本的途径。传统上,特定应用的启发式方法和基于物理的运动学模型被用于减轻惯性里程计中的漂移问题。这些技术虽然轻量级,但无法处理领域转移和环境非线性问题。最近,深度神经惯性序列学习在捕获非线性运动动力学方面显示出优于基于启发式方法的里程计分辨率,且无需人工知识。这些基于人工智能的技术数据需求量大,资源使用过度,并且不能保证遵循基础系统物理规律。本文重点介绍了将实时人工智能增强的惯性导航算法移植到物联网平台中的独特方法、机遇和挑战。首先,我们讨论了平台感知神经架构搜索与超轻量级模型主干相结合如何能够产生神经惯性里程计模型,这些模型的大小缩小了31至134倍,但仍能达到或超过最先进人工智能增强技术的定位分辨率。该框架可以生成适用于定位人类、动物、水下传感器、飞行器和精密机器人的模型。接下来,我们展示了神经符号人工智能技术如何能够产生基于物理且可解释的神经惯性导航模型。随后,我们介绍了在新领域中仅用1分钟的标记数据微调预训练里程计模型的机遇,同时讨论了低成本的数据收集和标记技术。最后,我们确定了几个需要在未来仔细考虑的开放性研究挑战。