[1] Li J, Pei X, Wang X, et al. Transportation mode identification with GPS trajectory data and GIS information [J]. Tsinghua Science and Technology, 2021, 26(4): 403-416. [2] Cheng X, Zhang R, Zhou J, et al. Deeptransport: learning spatial-temporal dependency for traffic condition forecasting [C]//International Joint Conference on Neural Networks (IJCNN), 2018: 1-8. [3] Sun F, Hao W, Zou A, et al. A survey on spatio-temporal series prediction with deep learning: taxonomy, applications, and future directions [J]. Neural Computing and Applications, 2024, 36(17): 9919-9943. [4] Dabbas H, Friedrich B. Benchmarking machine learning algorithms by inferring transportation modes from unlabeled GPS data [J]. Transportation Research Procedia, 2022, 62: 383-392. [5] Zheng Y, Li Q, Chen Y, et al. Understanding mobility based on GPS data [C]//10th International Conference on Ubiquitous Computing, 2008: 312-321. [6] Xiao G, Juan Z, Zhang C. Detecting trip purposes from smartphone-based travel surveys with artificial neural networks and particle swarm optimization [J]. Transportation Research Part C: Emerging Technologies, 2016, 71: 447-463. [7] Dabiri S, Heaslip K. Inferring transportation modes from GPS trajectories using a convolutional neural network [J]. Transportation Research Part C: Emerging Technologies, 2018, 86: 360-371. [8] James J. Travel mode identification with GPS trajectories using wavelet transform and deep learning [J]. IEEE Transactions on Intelligent Transportation Systems, 2020, 22(2): 1093-1103. [9] Tang Q, Jahan K, Roth M. Deep CNN-BiLSTM model for transportation mode detection using smartphone accelerometer and magnetometer [C]//IEEE Intelligent Vehicles Symposium (Ⅳ), 2022: 772-778. [10] Ma Y, Guan X, Cao J, et al. A multi-stage fusion network for transportation mode identification with varied scale representation of GPS trajectories [J]. Transportation Research Part C: Emerging Technologies, 2023, 150: 104088. [11] Tang Q, Cheng H. Feature pyramid BiLSTM: using smartphone sensors for transportation mode detection [J]. Transportation Research Interdisciplinary Perspectives, 2024, 26: 101181. [12] Moiseeva A, Jessurun J, Timmermans H. Semiautomatic imputation of activity travel diaries: use of global positioning system traces, prompted recall, and context-sensitive learning algorithms [J]. Transportation Research Record, 2010, 2183(1): 60-68. [13] Prelipcean A C, Gidófalvi G, Susilo Y O. Mobility collector [J]. Journal of Location Based Services, 2014, 8(4): 229-255. [14] Jiang X, De Souza E N, Pesaranghader A, et al. TrajectoryNet: an embedded GPS trajectory representation for point-based classification using recurrent neural networks [C]// 27th Annual International Conference on Computer Science and Software Engineering (CASCON’17), 2017: 1-9. [15] Dutta S, Patra B K. Inferencing transportation mode using unsupervised deep learning approach exploiting GPS point-level characteristics [J]. Applied Intelligence, 2023, 53(10): 12489- 12503. [16] Li R, Yang Z, Pei X, et al. A novel one-stage approach for pointwise transportation mode identification inspired by point cloud processing [J]. Transportation Research Part C: Emerging Technologies, 2023, 152: 104127. [17] Mücke N T. Deep learning for real-time inverse problems and data assimilation with uncertainty quantification for digital twins [D]. Utrecht: Utrecht University, 2024. [18] Muhasshanah M, Tohir M, Ningsih D A, et al. Comparison of the performance results of c4.5 and random forest algorithm in data mining to predict childbirth process [J]. CommIT (Communication and Information Technology) Journal, 2023, 17(1): 51-59. [19] Feng T, Timmermans H J. Transportation mode recognition using GPS and accelerometer data [J]. Transportation Research Part C: Emerging Technologies, 2013, 37: 118-130. [20] Roy S, Singh Y P, Biswas U, et al. Machine learning in smart transportation systems for mode detection [C]//2021 IEEE 18th India Council International Conference (INDICON), 2021: 1-6. [21] Zheng Y, Xie X, Ma W Y. GeoLife: a collaborative social networking service among user, location and trajectory [J]. IEEE Data Eng Bull, 2010, 33(2): 32-39. |