| [1] |
毛天宇. 中国铁路运营里程[OL]. 北京: 新京报, 2024. (2024-01-10) [2024-07-01]. .
|
|
MAO T Y. China railway operating mileage[OL]. Beijing: New Beijing News, 2024. (2024-01-10) [2024-07-01]. (in Chinese).
|
| [2] |
王薇. 京沪高铁线遭彩钢板撞击[OL]. 北京: 北京青年报, 2018. (2018-08-14) [2024-07-01]. .
|
|
WANG W. Beijing-Shanghai High speed rail line hit by color steel plate[OL]. Beijing: Beijing Youth Daily, 2018. (2018-08-14) [2024-07-01]. (in Chinese).
|
| [3] |
晓明. 飘物侵袭接触网逼停动车[OL]. 泉州: 泉州网, 2024. (2024-06-27) [2024-07-01]. .
|
|
XIAO M. Floating objects invade the catenary and force the train to stop[OL]. Quanzhou: Quanzhou Network, 2024. (2024-06-27) [2024-07-01]. (in Chinese).
|
| [4] |
刘楒睿. 泥石流致D2809次列车脱线[OL]. 长沙: 极目新闻, 2022. (2022-06-04) [2024-07-01]. .
|
|
LIU S X. Debris flow causing derailment of train D2809[OL]. Changsha: Jimu News, 2022. (2022-06-04) [2024-07-01]. (in Chinese).
|
| [5] |
川黔铁路突发山体崩塌落石抢修[OL]. 北京: 中国政府网, 2013. (2013-04-02) [2024-07-01]. .
|
|
Sudden mountain collapse and rockfall on the Sichuan Guizhou Railway[OL]. Beijing: Chinese government website, 2013. (2013-04-02) [2024-07-01]. (in Chinese).
|
| [6] |
WU Y P, CHEN P, QIN Y, et al. Automatic railroad track components inspection using hybrid deep learning framework[J]. IEEE Transactions on Instrumentation and Measurement, 2023, 72: 5011415.
|
| [7] |
WU Y P, QIN Y, QIAN Y, et al. Hybrid deep learning architecture for rail surface segmentation and surface defect detection[J]. Computer-Aided Civil and Infrastructure Engineering, 2022, 37(2): 227-244.
|
| [8] |
CUI J, QIN Y, WU Y P, et al. Skip connection YOLO architecture for noise barrier defect detection using UAV-based images in high-speed railway[J]. IEEE Transactions on Intelligent Transportation Systems, 2023, 24(11): 12180-12195.
|
| [9] |
WU Y P, QIN Y, QIAN Y, et al. Automatic detection of arbitrarily oriented fastener defect in high-speed railway[J]. Automation in Construction, 2021, 131: 103913.
|
| [10] |
WU Y P, MENG F T, QIN Y, et al. UAV imagery based potential safety hazard evaluation for high-speed railroad using Real-time instance segmentation[J]. Advanced Engineering Informatics, 2023, 55: 101819.
|
| [11] |
TONG L, WANG Z P, JIA L M, et al. Fully decoupled residual ConvNet for real-time railway scene parsing of UAV aerial images[J]. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(9): 14806-14819.
|
| [12] |
CHEN P, WU Y P, QIN Y, et al. All-in-one YOLO architecture for safety hazard detection of environment along high-speed railway[C]∥ 2022 Global Reliability and Prognostics and Health Management (PHM-Yantai). Piscataway: IEEE Press, 2022: 1-7.
|
| [13] |
ZOHAR O, WANG K C, YEUNG S. PROB: Probabilistic objectness for open world object detection[EB/OL]. 2022: 2212.01424. .
|
| [14] |
DU X F, WANG Z N, CAI M, et al. VOS: Learning what you don’t know by virtual outlier synthesis[EB/OL]. 2022: 2202.01197. .
|
| [15] |
WU A M, DENG C. TIB: Detecting unknown objects via two-stream information bottleneck[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2024, 46(1): 611-625.
|
| [16] |
TONG L, JIA L M, GENG Y X, et al. Anchor-adaptive railway track detection from unmanned aerial vehicle images[J]. Computer-Aided Civil and Infrastructure Engineering, 2023, 38(18): 2666-2684.
|
| [17] |
MU Z H, QIN Y, YU C C, et al. Adaptive cropping shallow attention network for defect detection of bridge girder steel using unmanned aerial vehicle images[J]. Journal of Zhejiang University: Science A, 2023, 24(3): 243-256.
|
| [18] |
GUDOVSKIY D, ISHIZAKA S, KOZUKA K. CFLOW-AD: Real-time unsupervised anomaly detection with localization via conditional normalizing flows[C]∥ 2022 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV). Piscataway: IEEE Press, 2022: 1819-1828.
|
| [19] |
YU J W, ZHENG Y, WANG X, et al. FastFlow: Unsupervised anomaly detection and localization via 2D normalizing flows[EB/OL]. 2021: 2111.07677. .
|
| [20] |
YOU Z Y, CUI L, SHEN Y J, et al. A unified model for multi-class anomaly detection[C]∥ 36th Conference on Neural Information Processing Systems (NeurIPS 2022). New Orleans: NeurIPS Proceedings, 2022: 1-14.
|
| [21] |
BATZNER K, HECKLER L, KÖNIG R. EfficientAD: Accurate visual anomaly detection at millisecond-level latencies[C]∥ 2024 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV). Piscataway: IEEE Press, 2024: 127-137.
|
| [22] |
BERGMANN P, FAUSER M, SATTLEGGER D, et al. MVTec AD: A comprehensive real-world dataset for unsupervised anomaly detection[C]∥ 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). IEEE, 2019: 9592-9600.
|
| [23] |
LIU W T, WANG X Y, OWENS J D, et al. Energy-based out-of-distribution detection[C]∥ Proceedings of the 34th International Conference on Neural Information Processing Systems. New York: ACM, 2020: 21464-21475.
|
| [24] |
MING Y F, FAN Y, LI Y X. POEM: Out-of-distribution detection with posterior sampling[C]∥ Proceedings of the 39th International Conference on Machine Learning. Baltimore: PMLR, 2022:15650-15665.
|
| [25] |
JOSEPH K J, KHAN S, KHAN F S, et al. Towards open world object detection[C]∥ 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE Press, 2021: 5826-5836.
|
| [26] |
WU Z H, LU Y, CHEN X Y, et al. UC-OWOD: Unknown-classified open world object detection[M]∥ Computer Vision-ECCV 2022. Cham: Springer Nature Switzerland, 2022: 193-210.
|
| [27] |
GUPTA A, NARAYAN S, JOSEPH K J, et al. OW-DETR: Open-world detection transformer[C]∥ 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE Press, 2022: 9225-9234.
|
| [28] |
REN S Q, HE K M, GIRSHICK R, et al. Faster R-CNN: Towards real-time object detection with region proposal networks[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2017, 39(6): 1137-1149.
|
| [29] |
HE K M, ZHANG X Y, REN S Q, et al. Deep residual learning for image recognition[C]∥ 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE Press, 2016: 770-778.
|
| [30] |
LIN T Y, DOLLÁR P, GIRSHICK R, et al. Feature pyramid networks for object detection[C]∥ 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE Press, 2017: 936-944.
|
| [31] |
WANG Z Y, LI Y, CHEN X, et al. Detecting everything in the open world: Towards universal object detection[C]∥ 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE Press, 2023: 11433-11443.
|
| [32] |
FRAUNDORFER F, ZHANG J, D’URSO M,et al. Semantic drone dataset[DB/OL]. (2019-01-25)[2024-07-01]. .
|
| [33] |
ZHANG S F, CHI C, YAO Y Q, et al. Bridging the gap between anchor-based and anchor-free detection via adaptive training sample selection[C]∥ 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). IEEE, 2020: 9759-9768.
|
| [34] |
JOCHER G, CHAURASIA A, STOKEN A, et al. Ultralytics/YOLOv5: v7.0-YOLOv5 sota realtime instance segmentation[OL].(2022-11-22)[2024-07-01]. .
|
| [35] |
JOCHER G, CHAURASIA A, QIU J. YOLO by Ultralytics (Version 8.0.0)[OL]. (2023-01-10)[2024-07-01]. .
|
| [36] |
WANG C Y, YEH I H, MARK LIAO H Y. YOLOv9: Learning what you want to learn using programmable gradient information[M]∥ Computer Vision-ECCV 2024. Cham: Springer Nature Switzerland, 2024: 1-21.
|
| [37] |
WANG A, CHEN H, LIU L H, et al. YOLOv10: Real-time end-to-end object detection[OL]. arXiv: 2405, 2024: 14458.
|