주요 논문
3
*2026년 기준 최근 6년 이내 논문에 한해 Impact Factor가 표기됩니다.
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gold
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인용수 0·
2026Robust Urban Canyon Localization for Autonomous Vehicles via IMM-Based Adaptive Fusion of GNSS/INS and VIO
Junhaeng Lee, Jingyu Byeon, Jaehyeok Kim, Jinwoo Yoo
IEEE Access
Robust and continuous localization is essential for autonomous driving but remains challenging in urban canyons where Global Navigation Satellite System (GNSS) signals are frequently blocked or degraded. This paper proposes a reliability-adaptive fusion framework that integrates commercial GNSS/inertial navigation system (INS) modules and visual–inertial odometry (VIO) using an interacting multiple model (IMM) filter. The proposed method employs a role-sharing sequential correction structure: VIO provides only relative motion information (velocity and trajectory shape), while GNSS/INS serves as the absolute position anchor to eliminate accumulated drift. Within each IMM mode, VIO-based motion correction is performed first, followed sequentially by GNSS-based position correction. The residuals from both correction stages are then used to update the mode probabilities of the underlying vehicle maneuver models, i.e., constant acceleration and constant turn. Furthermore, the dynamic covariance output of each estimator is treated as a real-time reliability indicator, enabling adaptive fusion weighting without manual threshold tuning. The proposed framework is validated on both a public benchmark (KAIST Urban Dataset) and a custom dataset collected with an instrumented vehicle equipped with commercial off-the-shelf sensors. The results demonstrate consistent improvements in positioning accuracy and trajectory continuity across diverse GNSS-denied scenarios compared with conventional extended Kalman filter–based fusion methods.
https://doi.org/10.1109/access.2026.3677244
Trajectory
Odometry
Benchmark (surveying)
Kalman filter
Sensor fusion
Weighting
Position (finance)
Global Positioning System
Estimator
Reliability (semiconductor)
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2025ITCA: Trajectory Forecasting Network Based on Interpretable Trees and Cross-Attention Integrating Trajectory With Velocity Information
Kyeong‐Hyeon Kim, Jinwoo Yoo
IEEE Transactions on Vehicular Technology
In autonomous vehicles, forecasting future trajectories of the surrounding dynamic objects is essential for safe and precise behavioral planning. Forecasting trajectories is critical to preventing accidents involving vulnerable road users, such as pedestrians, where highly accurate prediction performance is required. Typically, pedestrians in a scene follow similar trajectories when moving together, whereas pedestrians approaching each other from opposite directions act to avoid collisions. Pedestrians in a scene construct and follow these social norms. Therefore, this article uses a cross-attention mechanism based on the trajectory and velocity information of each pedestrian to extract social interactions between objects in congested scenes and model social norms. We propose a trajectory and velocity tree constructed using a handcrafted approach to generate candidate trajectories and forecast feasible trajectories by integrating them with social interactions. The proposed method outperforms existing methods that rely solely on implicit latent variables for forecasting future trajectories, offering high interpretability by using trees to depict candidates of trajectories. The proposed network structure offers possibilities for additional research on predicting velocity profiles. To validate the inference performance of the proposed method, we conduct quantitative and qualitative experiments on pedestrian datasets, including the ETH, UCY, and Stanford Drone Dataset. These experiments demonstrate the superiority of the proposed <italic xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">ITCA</i>. We also performed ablation studies to interpret the contributions of each module quantitatively. To our knowledge, the inference performance of the <italic xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">ITCA</i> outperforms state-of-the-art approaches using only contextual data.
https://doi.org/10.1109/tvt.2025.3597788
Trajectory
Computer science
Artificial intelligence
Physics
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2024A Novel Lateral Dynamics Control Strategy of In-Wheel Motor Vehicle to Improve Agility and Straight-Line Driving Stability
Sangyeop Lee, Keonchang Kim, Seong-Joon Moon, Byongsung Kim, Jaehyun Ahn, Jun-Ha Hwang, Donghyun Kim, Seunghoon Woo, Jinwoo Yoo
IF 7.1 (2024)
IEEE Transactions on Vehicular Technology
In-wheel motor (IWM) vehicles offer a more sporty driving experience but suffer from left-right torque differences that impair straight-line driving stability. This paper proposes an integrated yaw-rate control strategy for IWM vehicle based on adaptive sliding mode control (ASMC) to enhance both agility in cornering and stability in straight-line driving situations. Given that 1) internal and external driving conditions such as driving maneuvers, road surfaces, and unwanted external disturbances affect vehicle yaw dynamics and 2) the tire cornering stiffness and understeer gradient are decisive parameters in yaw dynamics, the proposed strategy adapts online to these two parameters. Moreover, the proposed strategy adopts an adaptive update rate during the adaptation process to ensure robust disturbance rejection performance under various driving conditions. All control laws are defined solely based on measurable information in mass-production vehicles, without any knowledge of road-tire conditions or uncertainty bounds. In experimental tests, the proposed strategy shows improved control precision, accuracy, and robustness compared to PD controller and non-adaptive SMC. As a result, the proposed adaptation strategy improves the maneuverability of IWM vehicles in both dynamic cornering and straight-line driving situations.
https://doi.org/10.1109/tvt.2024.3368283
Vehicle dynamics
Engineering
Automotive engineering
Stability (learning theory)
Control (management)
Control engineering
Control theory (sociology)
Electronic stability control
Computer science