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State Estimation Method for GNSS/INS/Visual Multi-sensor Fusion Based on Factor Graph Optimization for Unmanned System 被引量:1
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作者 ZHU Zekun YANG Zhong +2 位作者 XUE Bayang ZHANG Chi YANG Xin 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2024年第S01期43-51,共9页
With the development of unmanned driving technology,intelligent robots and drones,high-precision localization,navigation and state estimation technologies have also made great progress.Traditional global navigation sa... With the development of unmanned driving technology,intelligent robots and drones,high-precision localization,navigation and state estimation technologies have also made great progress.Traditional global navigation satellite system/inertial navigation system(GNSS/INS)integrated navigation systems can provide high-precision navigation information continuously.However,when this system is applied to indoor or GNSS-denied environments,such as outdoor substations with strong electromagnetic interference and complex dense spaces,it is often unable to obtain high-precision GNSS positioning data.The positioning and orientation errors will diverge and accumulate rapidly,which cannot meet the high-precision localization requirements in large-scale and long-distance navigation scenarios.This paper proposes a method of high-precision state estimation with fusion of GNSS/INS/Vision using a nonlinear optimizer factor graph optimization as the basis for multi-source optimization.Through the collected experimental data and simulation results,this system shows good performance in the indoor environment and the environment with partial GNSS signal loss. 展开更多
关键词 state estimation multi-sensor fusion combined navigation factor graph optimization complex environments
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OiSAM-FGO:an efcient factor graph optimization algorithm for GNSS/INS integrated navigation system
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作者 Zhichao Yang Xiangjie Ding +1 位作者 Ying Yang Qi Wang 《Satellite Navigation》 2025年第3期222-239,共18页
In recent years,the Factor Graph Optimization(FGO)algorithm has gained a great attention in the feld of integrated navigation owing to its better positioning performance than the traditional flter-based approaches.How... In recent years,the Factor Graph Optimization(FGO)algorithm has gained a great attention in the feld of integrated navigation owing to its better positioning performance than the traditional flter-based approaches.However,the practical application of the FGO algorithm remains challenging due to its signifcant computational complexity and processing time consumption,especially for the case of limited storage and computation resources.In order to overcome the problem,we frst conduct a thorough analysis of the factor graph model for the Global Navigation Satellite System/Inertial Navigation System(GNSS/INS)integrated navigation.Then,based on the Incremental Smoothing and Mapping(iSAM),an Optimized iSAM(OiSAM)algorithm is proposed to efciently solve the optimization problem in FGO,with reducing computational load and required memory resources.For the re-linearization problem,we propose a novel Adaptive Joint Sliding Window Re-linearization(A-JSWR)algorithm combining periodic and on-demand re-linearization to further improve the efciency of OiSAM.Finally,the OiSAM-FGO method utilizing OiSAM and A-JSWR is presented for the GNSS/INS integrated navigation.The experiments on real-world datasets demonstrated that the OiSAM-FGO can reduce the time consumption of the optimization procedure by up to 52.24%,while achieving a performance equivalent to that of the State-of-the-Art(SOTA)FGO method and superior to the Extended Kalman Filter(EKF)method. 展开更多
关键词 Integrated navigation GNSS INS factor graph optimization ISAM High efciency
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3D map-aided smartphone GNSS positioning using TDCP-constrained clustering and factor graph multi-observation fusion
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作者 Yanlong Liu Zengke Li +3 位作者 Cheng Pan Jingxiang Gao Yipeng Ning Xianggeng Han 《Satellite Navigation》 2025年第3期170-196,共27页
High-density urban environments severely impair smartphone Global Navigation Satellite System(GNSS)positioning due to Non-Line-of-Sight(NLOS)signals and limited satellite visibility,leading to reduced accuracy and con... High-density urban environments severely impair smartphone Global Navigation Satellite System(GNSS)positioning due to Non-Line-of-Sight(NLOS)signals and limited satellite visibility,leading to reduced accuracy and continuity.Three-Dimensional Map-aided(3DMA)GNSS methods partially solve the problems but still much rely on noisy pseudorange measurements,while the resolution of carrier-phase ambiguities remain challenging,limiting their robustness in complex urban areas.To overcome these challenges,this study introduces a novel Factor Graph Optimization(FGO)framework that tightly integrates 3D map constraints with multiple GNSS observations.First,a Shadow Matching(SDM)scoring strategy is proposed by incorporating Time-Diferenced Carrier Phase(TDCP)constraints.Second,a map-matching probability approach is applied to identify a unique candidate road segment,thereby reducing solution ambiguity.Third,a Random Sample Consensus(RANSAC)-based region growing clustering algorithm is designed to manage multimodal high-score points and ensure unique clustering.Finally,a factor graph model is constructed that fuses pseudorange,Doppler,and TDCP observations with 3D map constraints,signifcantly enhancing positioning accuracy and stability.Field experiments in typical urban scenarios show that the proposed method outperforms existing SDM techniques such as road constraint and region-growing clustering,as well as advanced GNSS optimization frameworks,in terms of both positioning accuracy and trajectory continuity.Specifcally,the proportion of horizontal positioning errors within 3 m and 5 m reached 76.7%and 93.1%,respectively,substantially exceeding those achieved by the advanced GNSS multi-source fusion framework(63.4%and 79.3%). 展开更多
关键词 Complex urban environments Smartphone positioning Three-dimensional map-aided GNSS Timediferenced carrier phase factor graph optimization
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Resilient tightly coupled INS/UWB integration method for indoor UAV navigation under challenging scenarios 被引量:4
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作者 Qian Meng Yang Song +1 位作者 Sheng-ying Li Yuan Zhuang 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2023年第4期185-196,共12页
Based on the high positioning accuracy,low cost and low-power consumption,the ultra-wide-band(UWB)is an ideal solution for indoor unmanned aerial vehicle(UAV)localization and navigation.However,the UWB signals are eas... Based on the high positioning accuracy,low cost and low-power consumption,the ultra-wide-band(UWB)is an ideal solution for indoor unmanned aerial vehicle(UAV)localization and navigation.However,the UWB signals are easy to be blocked or reflected by obstacles such as walls and furniture.A resilient tightly-coupled inertial navigation system(INS)/UWB integration is proposed and implemented for indoor UAV navigation in this paper.A factor graph optimization(FGO)method enhanced by resilient stochastic model is established to cope with the indoor challenging scenarios.To deal with the impact of UWB non-line-of-sight(NLOS)signals and noise uncertainty,the conventional neural net-works(CNNs)are introduced into the stochastic modelling to improve the resilience and reliability of the integration.Based on the status that the UWB features are limited,a‘two-phase'CNNs structure was designed and implemented:one for signal classification and the other one for measurement noise prediction.The proposed resilient FGO method is tested on flighting UAV platform under actual indoor challenging scenario.Compared to classical FGO method,the overall positioning errors can be decreased from about 0.60 m to centimeter-level under signal block and reflection scenarios.The superiority of resilient FGO which effectively verified in constrained environment is pretty important for positioning accuracy and integrity for indoor navigation task. 展开更多
关键词 Unmanned aerial vehicle(UAV) Resilient navigation Indoor positioning factor graph optimization Ultra-wide band(UWB)
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