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Intelligent Vehicles Localization Based on Semantic Map Representation from 3D Point Clouds
ZHU Yuntao, LI Fei, HU Zhaozheng, WU Huawei
Abstract(11860) PDF(6523)
Abstract:
In order to improve the accuracy of node localization for intelligent vehicles,an intelligent vehicles localization method based on three-dimensional point clouds semantic map representation is proposed. The method is divided into three parts. Semantic segmentation based on 3D laser point clouds includes ground segmentation,traffic signs segmentation and pole-shaped target segmentation. Semantic map representation for intelligent vehicles uses segmented targets to project. Finally directional projections with weight,semantic roads and semantic codeing are generated. The codeing and global location from high-precision GPS make up representation model. Localization based on semantic representation model includes coarse localization from GPS matching and node localization from semantic coding matching. The experiments are carried out in three road scenes with different length and complexity,and the localization accuracy is 98.5%,97.6% and 97.8%,respectively. The results show that proposed method has high accuracy and strong robustness, which is suitable for different road scenes.
Companion Relationship Discovering Algorithm for Passengers in the Cruise Based on UWB Positioning
YAN Sixun, WU Bing, SHANG Lei, LYU Jieyin, WANG Yang
Abstract(11167) PDF(2972)
Abstract:
To accurately discover the companion relationship among passengers in the interior space of a cruise, UWB positioning is employed in the cruise to carry out on-board personnel location experiment. An improved Haussdorff-DBSCAN based scheme combined with indoor positional semantics is proposed to realize the trajectory clustering of the passenger trajectories, considering the characteristics of the UWB location data. Afterwards, the LSTM neural network is applied to predict the changing similarity of the suspected companions. Traditional Hausdorff algorithm does not consider the consistency of trajectory timing while calculating the trajectory similarity, and the introduction of positional semantic sequence can solve this problem well. In the first phase, the passenger trajectory data set is input to the improved Hausdorff-DBSCAN algorithm, and the clustering radius is determined according to the overall similarity threshold of trajectories. The outputs are the emerging clusters of passenger trajectories in the same companion group. In the second phase, the LSTM neural network takes the point similarity sequence with a fixed time window as the input to predict the point similarity value at the next time. The sequential change of passengers companion relationship is analyzed by the similarity threshold and prediction results. The validity of the presented algorithm is demonstrated by the trajectory data obtained from the passengers simulation on one deck of the cruise under study, which is modeled in Anylogic. The results indicate that the precision of the proposed algorithm reaches 0.92, the recall value reaches 0.95 and the F1 value is 0.934, which are at least 5.7 percent, 8.0 percent and 6.7 percent higher than the comparing algorithm. The LSTM neural network also shows a promising effect in predicting the changing trend of the similarity, for the loss is at a stable level of 3 to 4 percent.
Data Association Method Based on Descriptor Assisted Optical flow Tracking Matching
XIA Huajia, ZHANG Hongping, CHEN Dezhong, LI Tuan
Abstract(5991) PDF(1252)
Abstract:
in the view of the problem that the positioning accuracy of visual inertial odometer using multi-state constrained Kalman filter(MSCKF) is easily affected by the abnormal value of feature point matching, a data association method based on descriptor assisted optical flow tracking matching is proposed. This method uses pyramid LK optical flow to track and match the feature points in the sequence image, then calculates the rbrief descriptor of each pair of matching points, judges the similarity of the descriptor according to the Hamming distance,and eliminates the abnormal matching points. In the experiment, the effectiveness of the proposed method is evaluated from two aspects:the subjective effect of feature point matching and positioning accuracy. The results show that the proposed method can effectively filter the abnormal values of image feature matching in dynamic scene. The image processed by this method is used for msckf motion solution,and the drift rate of position result is less than 0.38%, compared with the result of msckf algorithm without eliminating abnormal matching values,The improvement is 54.7%, and the single frame image processing time is about 39 ms.
Indoor Sign-based Visual Localization Method
HUANG Gang, CAI Hao, DENG Chao, HE Zhi, XU Ningbo
Abstract(12649) PDF(1531)
Abstract:
To solve the problem of localization calculation of intelligent vehicles and the mobile robot in the indoor traffic environment, by exploiting kinds of signs which existed in the indoor environment, a visual localization method is proposed through using BEBLID (Boosted Efficient Binary Local Image Descriptor) algorithm. The proposed method enforces the ability to characterize the whole image by improving the classic BEBLID. In this paper, the localization method consists of an offline stage and an online stage. In the offline stage, a scene sign map is created. In the online stage, the calculation progress is divided into 3 parts, which include holistic and local BEBLID method from current image and image in the scene sign map, closet sign site and closet image calculation by using KNN method, metric calculation by using coordinate information which is stored in the scene sign map. The experiment is conducted in three kinds of indoor scenes, including a teaching building, an office building, and an indoor parking lot. The experiment shows the scene sign recognition rate reached 90%, and the average localization error is less than 1 meter. Compared with the traditional method, the proposed method improves about 10% relative recognition rate with the same test set, which verified the effectiveness of the proposed method.
A Cooperative Map Matching Algorithm Applied in Intelligent and Connected Vehicle Positioning
CHEN Wei, DU Luyao, KONG Haiyang, FU Shuaizhi, ZHENG Hongjiang
Abstract(12956) PDF(1370)
Abstract:
In order to achieve low-cost and high-precision vehicle positioning in the intelligent and connected environment,a cooperative map matching algorithm based on adaptive genetic Rao-Blackwellized particle filter is studied in this paper,improving the accuracy of vehicle positioning by using the real-time location data and road constraints of other connected vehicles. The adaptive genetic algorithm is introduced into the re-sampling process of the particle filter to increase the diversity of particles,so as to solve the problems of "particle degradation" and "particle exhaustion" that are prone to appear in traditional particle filter algorithms. Model of the algorithm is established and simulated. The positioning results under the traditional particle filter and Kalman smooth particle filter are compared,and the influence of the number of different connected vehicles on the positioning accuracy is analyzed. The experiment is completed in real-world and the performance of the algorithm is verified. The experimental results show that taking a typical intersection with four connected vehicles as an example,the range of position error of cooperative map matching is 1.67 m. It is only 41.03% and 56.80% of the traditional GNSS and the single map matching positioning results. At the same time,the circular error probable(CEP) of this algorithm is 1.06 m, which is 2.52 m higher than raw GNSS positioning result.
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2025, 43(1): .  
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A Review of the Ethical Dilemmas of Driverless Vehicles
LI Haijian, YANG Silu, LI Yuxuan, ZHAO Xiaohua, CHEN Yan
2025, 43(1): 1-14.   doi: 10.3963/j.jssn.1674-4861.2025.01.001
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Abstract:
With the rapid advancement of autonomous driving technology, it has demonstrated tremendous potential in enhancing traffic efficiency and safety. However, the ethical issues it raises are becoming increasingly prominent, gradually emerging as a significant constraint to its widespread adoption. This paper aims to explore the core ethical dilemmas in the development of autonomous vehicles from the perspectives of moral philosophy and institutional governance. It focuses on three major areas: algorithmic ethics, social ethics, and legal regulation, covering key topics such as moral decision-making based on utilitarianism and deontology, mechanisms for attributing accident responsibility, and global and domestic legal responses. In terms of algorithmic ethics, utilitarian and deontological approaches, including collision algorithms and moral knobs, offer solutions for ethical conflicts. Regarding responsibility attribution, the traditional human-centered liability model is evolving into a chain-based framework encompassing all stakeholders engaged in designing, producing, and operating autonomous vehicles. As for legal regulation, current legal frameworks suffer from both applicability limitations and regulatory gaps, necessitating the construction of a legal framework that aligns with technological advancements. Future research may further deepen interdisciplinary collaboration and propose more practical solutions in areas such as ethical modeling, responsibility delineation, and institutional design, providing robust ethical support for the safe and sustainable deployment of autonomous vehicles at various levels of automation.
Research Hotspots and Development Trends of Container Multimodal Transport in China
MA Yuhan, YANG Peijie, XUE Jie, ZHENG Yuan, YANG Hao, HU Hao
2025, 43(1): 15-30.   doi: 10.3963/j.jssn.1674-4861.2025.01.002
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Abstract:
Amid accelerating globalization of international trade, container multimodal transport has emerged as the dominant mode of international cargo movement. Rising market diversification and technological innovations now drive transformative opportunities for container multimodal transport in China. To systematically summarize existing research, 475 Chinese and English articles (from 1st January 2000 to 10th July 2024) are retrieved from the China National Knowledge Infrastructure (CNKI) core database. Using CiteSpace visualization and literature synthesis, publication patterns, research status, key themes, and development trends are evaluated in China's container multimodal transport research. Key findings reveal four research domains: novel container designs, path optimization algorithms, green logistics systems, and digital platforms development. Critical challenges persist, including fragmented automation coverage, limited smart technology adoption, and inadequate algorithm validation in complex operational scenarios. Additional constraints involve underdeveloped green energy integration, incomplete carbon taxation frameworks, and cybersecurity risks in data-sharing platforms. Emerging trends highlight multidimensional innovation focusing on: AI-driven dynamic response systems for autonomous decision-making, adaptive algorithms for multi-scenario process optimization, blockchain-enabled smart contract solutions, and synergistic green energy-grid integration strategies, etc.
Effect of Driving System's Suspension Structure on Dynamics Performances of Inner Axlebox Bogie
SHE Liyun, WANG Jiaxin, LIU Yuqing, CHEN Zaigang
2025, 43(1): 31-41.   doi: 10.3963/j.jssn.1674-4861.2025.01.003
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To optimize driving system's suspension structure of the inner axlebox bogie and improve service safety and reliability of the railway vehicles, a dynamics model of the inner axlebox vehicle considering driving and transmission system was established using the theories of gear dynamics and vehicle system dynamics and the multibody dynamics software SIMPACK. On the basis of the current driving system's suspension form of the bogie, three different suspension structures were proposed in this study. The proportion of traction motor mass allocated to primary unsprung and sprung under different driving system's suspension structures is analyzed. In addition, with the consideration of the internal and external excitation such as gear meshing and track random irregularity, and different driving system's suspension structures, this study investigates the dynamics characteristics such as the vibration responses of key components like traction motor, displacements of the coupling, dynamics forces at suspension points of driving system at different speeds, which revealed the effect of different driving system's suspension structures on dynamics performances of the inner axlebox bogie. The results show that the connecting rubber nodes between the gearbox and motor can limit their relative displacement and effectively protect the coupling. However, it also increases the transmission path of vibration from the wheel-rail surface to frame and driving system, leading to a significant increase in vibration levels of traction motor, frame, and other key components. In addition, reducing the number of rubber nodes between the gearbox and motor can decrease the mass of driving system allocated to the primary unsprung and the gearbox-axle joint vertical force. However, it would increase the vertical force on the motor suspension point and the gearbox rod joint. These results can provide a reference for the design of driving system's suspension structure of the inner axlebox power bogie.
Driving Collision Risk Modeling with Trajectory Prediction of Obstacle Vehicles
YANG Houxin, LU Liping, QIN Heng, YANG Ao, CHU Duanfeng
2025, 43(1): 42-51.   doi: 10.3963/j.jssn.1674-4861.2025.01.004
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Abstract:
In order to address critical challenges in intelligent driving systems, including insufficient dynamic interaction modeling, limited accuracy in multimodal trajectory prediction, and over-reliance on single physical metrics for collision risk quantification. A proactive collision risk assessment framework is proposed by integrating probabilistic quantification with multimodal trajectory prediction. For trajectory prediction, a hierarchical graph attention network is developed to capture dynamic environmental features through adaptive fusion of high-definition maps, lane geometries, and vehicle motion history. A sliding window-optimized decoder is introduced within the conventional two-stage prediction architecture to refine trajectory outputs. For risk assessment, a probabilistic collision quantification method is designed to calculate collision likelihood between ego and surrounding vehicles based on predicted trajectories. Results on the Argoverse dataset demonstrate state-of-the-art performance with minimum final displacement error (=0.785), average displacement error (=1.157), and miss rate (=0.126), achieving 1% and 15.1% error reduction in endpoint prediction compared to HiVT and LaneGCN respectively. simulation of urban mobility, SUMO simulations reveal 5% deviation between predicted and actual risks, with risk fluctuation amplitude reduced by 33.3% and 18.75% against time to collision (TTC) and dynamic safety index (DSI) methods. The proposed model shows enhanced stability in continuous driving scenarios (risk fluctuation=0.3) and demonstrates superior accuracy in forecasting potential collision risks through systematic integration of trajectory prediction and probabilistic analysis. These findings validate the framework's effectiveness in proactive safety warning for intelligent vehicles.
SMOTE-LSTM Vehicle Accident Detection Method for Imbalanced Data
WANG Tianshuo, GAO Jingbo, TONG Shengjun, LI Zhenglong, ZHAO Xiaohua
2025, 43(1): 52-60.   doi: 10.3963/j.jssn.1674-4861.2025.01.005
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Abstract:
In vehicle accident detection, the imbalance between the small number of accident vehicles and the large number of normal vehicles can lead to difficulties in accurately identifying accident vehicles, increasing the risk of misclassifying them as normal vehicles. Therefore, a vehicle accident detection algorithm based on SMOTE-LSTM is proposed. To address the data imbalance between accident and normal samples, the synthetic minority over-sampling technique (SMOTE) is employed to randomly insert samples between accident data points, increasing their quantity and achieving data balance between the two categories. Furthermore, when oversampling accident data, the optimal number of neighbors is selected by comparing the detection accuracy under different neighbor counts to improve the recognition rate of accident samples while minimizing noise interference. On this basis, long short-term memory (LSTM) networks are employed to accurately capture the temporal features of data when vehicle accidents occur. Additionally, a Dropout layer is introduced to reduce overfitting and enhance the model's generalization ability, ensuring accurate accident detection. To minimize the misclassification of accident vehicles as normal, class weights are incorporated into the loss function, adjusting the weights to make the model more focused on accident sample detection. Finally, six groups of comparative experiments were conducted on a collected vehicle driving state time-series dataset. The first three groups did not use the SMOTE-LSTM-based algorithm, performing vehicle accident detection under balanced, mildly imbalanced, and moderately imbalanced conditions by increasing the number of normal samples. The latter three groups employ the SMOTE-LSTM-based algorithm to address mild, moderate, and severely imbalanced conditions. Experimental results show that, with the proposed method, the values of Precision, Recall, F1-score, G-mean, and AUC are significantly improved. Specifically, under mildly class imbalance, these five evaluation metrics increase by 56.2%, 2.5%, 38.7%, 5.8%, and 5.4%, respectively. Under moderate class imbalance, the improvements are 75%, 14.1%, 59%, 8.2%, and 7.8%. The results demonstrate that the proposed algorithm effectively addresses the class imbalance issue in vehicle accident detection, significantly enhancing all evaluation metrics. Particularly in mildly and moderately imbalanced scenarios, the algorithm effectively enhances the recognition ability of the minority class, exhibiting strong robustness and better classification performance.
Analysis of Influencing Factors for Nighttime Pedestrian-vehicle Crash Injury Severity Considering Temporal Instability
TANG Yujie, JIAO Pengpeng, WANG Jianyu, LI Rujian
2025, 43(1): 61-73.   doi: 10.3963/j.jssn.1674-4861.2025.01.006
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Abstract:
Nighttime pedestrian-vehicle crashes exhibit significantly higher injury severity than daytime crashes due to visibility limitations and other factors. To accurately identify influencing factors, this study develops a hybrid model integrating a random parameters Logit model with heterogeneity in means and variances and a random forest (RF) algorithm based on SHapley Additive exPlanation (SHAP), i.e. RF-SHAP, using crash data from 2017 to 2022. The log-likelihood ratio test confirms temporal instability in the dataset, necessitating separate models for 2017—2019, 2020, 2021, and 2022 with calculated average marginal effects for significant variables. Results demonstrate that random effects exist for drinking pedestrians (2017—2019), ambulance required (2020), local street crashes (2021), and 48—56 km/h speed limits (2022), with their mean/variance influenced by traffic control and road classification. Drinking pedestrians, pedestrians aged over 45 to 60 years, driver injuries, vehicle types (pickup trucks and trucks), divided roadways, speed limits (32—40, 48—56, 64—72 km/h), weekends, and winter conditions have begun to exhibit statistically significant effects on nighttime pedestrian-vehicle crashes in recent years. In addition, the RF-SHAP algorithm quantifies heterogeneous contributions of all sub-variables within four random parameters to crash severity. Policy implications highlight three priorities: addressing pedestrian drinking behavior, enhancing nighttime crash prevention on expressways and arterial routes, and establishing appropriate speed limits while avoiding excessively high or low values.
Multi-objective Route Optimization of Wind-assisted Ships Considering Sail Angle-of-attach Control
ZHANG Jinfeng, QIAO Fuqi, MA Weihao, ZHANG Yueqi, XIONG Maolin, WANG Yuchuan
2025, 43(1): 74-84.   doi: 10.3963/j.jssn.1674-4861.2025.01.007
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To address the challenges in the route optimization of wind-assisted ships, namely insufficient quantification of wind energy utilization efficiency, limited accuracy in fuel consumption prediction, and lack of multi-objective coordinated optimization mechanism, this study proposes a multi-objective route optimization method integrating dynamic sail control with hybrid propulsion prediction. A dynamic sail control strategy model based on aerodynamic characteristics is developed to achieve spatial vector analysis of auxiliary thrust from sails. This model overcomes the limitations of conventional static angle-of-attack configurations by enabling real-time dynamic adjustment of sail parameters, thereby maintaining a high level of wind energy conversion efficiency. To resolve the dual constraints of poor environmental adaptability in traditional physical models and weak physical interpretability in data-driven approaches, a physics-constrained hierarchical artificial neural network architecture is constructed. This architecture establishes feature space bases using ship kinematic equations and employs attention-guided neural networks for residual learning. The proposed method preserves the underlying physical principles of energy consumption while enabling bidirectional coupling between data features and fluid dynamics equations. Validation on North Atlantic routes demonstrates that the proposed method reduces the mean absolute percentage error (MAPE) of fuel consumption prediction by 21.9% compared to purely physical models, while offering significantly enhanced inter-pretability over purely data-driven methods. Furthermore, a multi-objective optimization model incorporating both time costs and fuel consumption is established. A coordinated optimization algorithm combining non-dominated sorting genetic algorithm (NSGA-Ⅱ) and technique for order preference by similarity to ideal solution (TOPSIS) is developed, which improves the convergence rates of the non-dominated solution sets compared to standard algorithms. An empirical study conducted on the wind-assisted vessel"NEW ADEN"demonstrates that, during typical voyages in the North Atlantic, the effective operational efficiency of the sail is improved. Compared with the traditional recommended routes, the optimized route reduces voyage time by approximately 5%, fuel consumption costs and fixed costs by 9.1% and 4.95%, respectively, and total operational costs by over 7.2%. This optimization improves the economic benefits of wind-assisted ships while effectively reducing environmental pollution.
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Intelligent Vehicles Localization Based on Semantic Map Representation from 3D Point Clouds
ZHU Yuntao, LI Fei, HU Zhaozheng, WU Huawei
[Abstract](11860) [PDF 4082KB](415)
Abstract:
In order to improve the accuracy of node localization for intelligent vehicles,an intelligent vehicles localization method based on three-dimensional point clouds semantic map representation is proposed. The method is divided into three parts. Semantic segmentation based on 3D laser point clouds includes ground segmentation,traffic signs segmentation and pole-shaped target segmentation. Semantic map representation for intelligent vehicles uses segmented targets to project. Finally directional projections with weight,semantic roads and semantic codeing are generated. The codeing and global location from high-precision GPS make up representation model. Localization based on semantic representation model includes coarse localization from GPS matching and node localization from semantic coding matching. The experiments are carried out in three road scenes with different length and complexity,and the localization accuracy is 98.5%,97.6% and 97.8%,respectively. The results show that proposed method has high accuracy and strong robustness, which is suitable for different road scenes.
Companion Relationship Discovering Algorithm for Passengers in the Cruise Based on UWB Positioning
YAN Sixun, WU Bing, SHANG Lei, LYU Jieyin, WANG Yang
[Abstract](11167) [PDF 1759KB](314)
Abstract:
To accurately discover the companion relationship among passengers in the interior space of a cruise, UWB positioning is employed in the cruise to carry out on-board personnel location experiment. An improved Haussdorff-DBSCAN based scheme combined with indoor positional semantics is proposed to realize the trajectory clustering of the passenger trajectories, considering the characteristics of the UWB location data. Afterwards, the LSTM neural network is applied to predict the changing similarity of the suspected companions. Traditional Hausdorff algorithm does not consider the consistency of trajectory timing while calculating the trajectory similarity, and the introduction of positional semantic sequence can solve this problem well. In the first phase, the passenger trajectory data set is input to the improved Hausdorff-DBSCAN algorithm, and the clustering radius is determined according to the overall similarity threshold of trajectories. The outputs are the emerging clusters of passenger trajectories in the same companion group. In the second phase, the LSTM neural network takes the point similarity sequence with a fixed time window as the input to predict the point similarity value at the next time. The sequential change of passengers companion relationship is analyzed by the similarity threshold and prediction results. The validity of the presented algorithm is demonstrated by the trajectory data obtained from the passengers simulation on one deck of the cruise under study, which is modeled in Anylogic. The results indicate that the precision of the proposed algorithm reaches 0.92, the recall value reaches 0.95 and the F1 value is 0.934, which are at least 5.7 percent, 8.0 percent and 6.7 percent higher than the comparing algorithm. The LSTM neural network also shows a promising effect in predicting the changing trend of the similarity, for the loss is at a stable level of 3 to 4 percent.

Journal of Transport Information and Safety

(Founded in 1983 bimonthly )

Former Name:Computer and Communications

Supervised by:Ministry of Education of P. R. CHINA

Sponsored by:Wuhan University of Technology
Network of Computer Application Information in Transportation

In Association With:Intelligent Transportation Committee of China Association of Artificial Intelligence

Editor-in-Chief:ZHONG Ming

Edited and Published by:Editorial Office of Transport Information and Safety

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Postal Code:38-94

Domestic Issue:
CN 42-1781/U

Publication No.:ISSN 1674-4861

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