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BogieSeg: A Dataset for Railway Bogie Component and Wheel Defect Detection

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Zenodo2026-03-17 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.18831526
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BogieSeg is a high-resolution annotated image dataset designed for deep learning-based automated detection and instance segmentation of railway bogie components and external wheel defects. It is the first publicly available benchmark dataset that simultaneously covers both bogie sub-assembly components and external wheel surface defects from a real-world operational railway environment. The dataset was collected at Kotri Railway Junction, Pakistan, using an indigenously designed camera stand equipped with a GoPro Hero 9 (3840 × 2160 pixels, 30 FPS). The system was deployed trackside to capture moving trains at operational speeds of 10–40 km/h, providing realistic and challenging image conditions including variable lighting, motion blur, and surface corrosion. Dataset Composition Total images: 905 high-resolution images (augmented from 391 manually annotated frames) Source video frames extracted: ~8,000 (from multiple train passages) Frames selected for annotation: 391 Image resolution: 3840 × 2160 pixels Annotation type: Instance segmentation (polygon annotations) + bounding boxes Classes (9 categories) Class Description Axle Box Bearing housing connecting axle to bogie frame Binding Screw Fastening component in bogie assembly Connecting Rod Structural linkage between bogie parts Crack / Scratch Surface defects on wheel or metal components Nut Small fastening component Primary Suspension Spring Main vibration-absorbing spring element Support Beam Main structural support of the bogie Support Rod Secondary structural support element Wheel Railway wheel including tread surface Dataset Structure The dataset is provided in the following forms: Original images — Raw high-resolution frames before augmentation Labeled / Annotated images — Polygon-annotated instance segmentation images Annotation Formats Ground truth annotations are available in five standard formats: TXT — YOLO format (normalized bounding box / polygon coordinates + class label) XML — PASCAL VOC format JSON — COCO format (instance segmentation with polygon coordinates) CSV — Tabular format with class information and coordinates TFRecord — TensorFlow native binary format This makes BogieSeg natively compatible with major DL frameworks including YOLOv8, Detectron2, Mask R-CNN, FastInst, SparseInst, and vision transformer-based models. Data Split Split Images Proportion Training 634 70% Validation 181 20% Test 90 10% Stratified sampling was used to ensure proportional class representation across all three splits. Data Augmentation To improve model generalization, 391 manually annotated images were augmented to 905 images using the following transformations (applied to both images and annotations): Cropping (horizontal and vertical) Horizontal and vertical flipping Brightness adjustment Shear (horizontal and vertical) Rotation (90°, 180°, 270°) Hue shifting Saturation variation (±10%) Exposure adjustment Blur Gaussian noise Baseline Model Performance The dataset was validated by training YOLOv8-seg (instance segmentation variant): Metric Result Overall Accuracy 93% mAP@0.5 88% Axle Box / Binding Screw / Connecting Rod / Support Beam / Wheel 100% each Primary Suspension Spring 98% Nut 94% Crack / Scratch 78% Training hardware: Intel Core i7 (9th Gen), 16 GB RAM, NVIDIA GeForce RTX 2060 Super (8 GB VRAM). Data Collection Details Location: Kotri Railway Junction, Sindh, Pakistan Camera: GoPro Hero 9, mounted 3 inches from ground and 10 inches from track centerline Speed of trains: 10–40 km/h Trains covered: 10 different trains (5 Up / 5 Down), including Karachi Express, Karakoram Express, Mehran Express, Millat Express, and Pak Business Express Collection period: Afternoon to evening (post 12:00 hrs) to capture variable natural and artificial lighting Government authorization: Collected with permission from Pakistan Railways and the Government of Pakistan Annotations were performed using Roboflow and validated in direct collaboration with railway inspection personnel from the Pakistan Railways department. Relation to Prior Work BogieSeg extends the authors' previously published FaultSeg dataset (Scientific Data, 2025), which focused solely on wheel defect detection. BogieSeg adds complete bogie sub-assembly components alongside wheel and surface defects, enabling a comprehensive rolling stock inspection benchmark. FaultSeg on Zenodo: https://doi.org/10.5281/ZENODO.13162335 FaultSeg on Figshare: https://springernature.figshare.com/articles/dataset/FaultSeg_A_Dataset_for_Train_Wheel_Defect_Detection/27996866 Applications Training and benchmarking object detection and instance segmentation models for railway inspection Automated bogie component identification and defect localization Predictive maintenance systems for rolling stock Safety protocol development for railway operations Transfer learning for related industrial inspection tasks License This dataset is released under an open license for educational and research purposes. Citation If you use this dataset, please cite the associated paper: Muhammad Zakir Shaikh, Enrique Nava Baro, Bushra Abro, Elidia Beatriz Blázquez-Parra, Sahil Jatoi, and Bhawani Shankar Chowdhry. BogieSeg: A Dataset for Railway Bogie Component Detection and Wheel Defect Instance Segmentation. [Journal name], [Year]. Authors and Affiliations Muhammad Zakir Shaikh — National Center for Robotics, Automation and Artificial Intelligence (NCRAAI), Mehran University of Engineering and Technology (MUET), Pakistan; University of Malaga, Spain Enrique Nava Baro — Departamento de Ingeniería de Comunicaciones, Universidad de Malaga, Spain Bushra Abro — NCRAAI, MUET, Pakistan Elidia Beatriz Blázquez-Parra — Department of Graphical Engineering, Design and Projects, Universidad de Malaga, Spain Sahil Jatoi — NCRAAI, MUET, Pakistan Bhawani Shankar Chowdhry — NCRAAI, MUET, Pakistan Corresponding author: zakir.shaikh@faculty.muet.edu.pk Acknowledgements This research was supported by the Departamento de Ingeniería de Comunicaciones, Universidad de Malaga (Spain); National Center for Robotics, Automation and Artificial Intelligence (NCRAAI MUET); Higher Education Commission Pakistan; Sindh Higher Education Commission Pakistan; and the EU Funded Erasmus Plus Capacity Building in Higher Education ACTIVE Climate Action Project and CENTRAL Project (ID: 598914). Special thanks to Pakistan Railways, Kotri Railway Station, and the Carriage and Wagon Workshop, Hyderabad for their support during data collection.
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创建时间:
2026-03-17
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