Department of Electrical Engineering and Automation, Jiangxi University of Science and Technology, Ganzhou, Jiangxi Province, 341000, China.
Jiangxi Provincial Key Laboratory of Maglev Technology, Ganzhou, Jiangxi Province, 341000, China.
Sci Data. 2024 Jan 16;11(1):72. doi: 10.1038/s41597-024-02918-9.
Artificial intelligence models play a crucial role in monitoring and maintaining railroad infrastructure by analyzing image data of foreign objects on power transmission lines. However, the availability of publicly accessible datasets for railroad foreign objects is limited, and the rarity of anomalies in railroad image data, combined with restricted data sharing, poses challenges for training effective foreign object detection models. In this paper, the aim is to present a new dataset of foreign objects on railroad transmission lines, and evaluating the overall performance of mainstream detection models in this context. Taking a unique approach and leveraging large-scale models such as ChatGPT (Chat Generative Pre-trained Transformer) and text-to-image generation models, we synthesize a series of foreign object data. The dataset includes 14,615 images with 40,541 annotated objects, covering four common foreign objects on railroad power transmission lines. Through empirical research on this dataset, we validate the performance of various baseline models in foreign object detection, providing valuable insights for the monitoring and maintenance of railroad facilities.
人工智能模型在监测和维护铁路基础设施方面发挥着关键作用,它们可以分析输电线路上异物的图像数据。然而,可公开访问的铁路异物数据集有限,铁路图像数据中的异常情况很少见,再加上数据共享受限,这给训练有效的异物检测模型带来了挑战。本文旨在介绍一个新的铁路输电线路异物数据集,并评估主流检测模型在这一背景下的整体性能。我们采用独特的方法,利用大规模模型,如 ChatGPT(Chat Generative Pre-trained Transformer)和文本到图像生成模型,合成了一系列异物数据。该数据集包含 14615 张图像和 40541 个标注物体,涵盖了铁路输电线路上的四种常见异物。通过对该数据集的实证研究,我们验证了各种基线模型在异物检测方面的性能,为铁路设施的监测和维护提供了有价值的见解。