Tian Tianqi, Hu Yanzhu, Zhao Xinghao, Zhao Hui, Wang Yingjian, Liang Zhen
Key Laboratory of IoT Monitoring and Early Warning, Ministry of Emergency Management, Beijing University of Posts and Telecommunications, Beijing 100876, China.
School of Intelligent Engineering and Automation, Beijing University of Posts and Telecommunications, Beijing 100876, China.
Micromachines (Basel). 2025 Jul 30;16(8):890. doi: 10.3390/mi16080890.
Despite significant advancements in indoor navigation technology over recent decades, it still faces challenges due to excessive dependency on external infrastructure and unreliable positioning in complex environments. This paper proposes an autonomous localization system that integrates advanced adaptive pedestrian dead reckoning (APDR) and binocular vision, designed to provide a low-cost, high-reliability, and high-precision solution for rescuers. By analyzing the characteristics of measurement data from various body parts, the chest is identified as the optimal placement for sensors. A chest-mounted advanced APDR method based on dynamic step segmentation detection and adaptive step length estimation has been developed. Furthermore, step length features are innovatively integrated into the visual tracking algorithm to constrain errors. Visual data is fused with dead reckoning data through an extended Kalman filter (EKF), which notably enhances the reliability and accuracy of the positioning system. A wearable autonomous localization vest system was designed and tested in indoor corridors, underground parking lots, and tunnel environments. Results show that the system decreases the average positioning error by 45.14% and endpoint error by 38.6% when compared to visual-inertial odometry (VIO). This low-cost, wearable solution effectively meets the autonomous positioning needs of rescuers in disaster scenarios.
尽管近几十年来室内导航技术取得了重大进展,但由于过度依赖外部基础设施以及在复杂环境中定位不可靠,它仍然面临挑战。本文提出了一种自主定位系统,该系统集成了先进的自适应行人航位推算(APDR)和双目视觉,旨在为救援人员提供低成本、高可靠性和高精度的解决方案。通过分析来自身体各个部位的测量数据的特征,确定胸部是传感器的最佳放置位置。开发了一种基于动态步长分割检测和自适应步长估计的胸部安装式先进APDR方法。此外,步长特征被创新性地集成到视觉跟踪算法中以约束误差。视觉数据通过扩展卡尔曼滤波器(EKF)与航位推算数据融合,这显著提高了定位系统的可靠性和准确性。设计了一种可穿戴自主定位背心系统,并在室内走廊、地下停车场和隧道环境中进行了测试。结果表明,与视觉惯性里程计(VIO)相比,该系统将平均定位误差降低了45.14%,端点误差降低了38.6%。这种低成本、可穿戴的解决方案有效地满足了救援人员在灾难场景中的自主定位需求。