基于 YOLOv8 的高速铁路轨道部件检测框架与高性能模型部署

Youzhi Tang, Yu Qian
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引用次数: 0

摘要

由于在庞大的铁路网络中广泛使用各种部件,特别是高速铁路,铁路检测面临着巨大的挑战。这些网络对维护的要求很高,但只提供有限的检查窗口。为此,本研究的重点是为高速铁路和检查时间有限的铁路开发高性能铁路检查系统。该系统利用了最新的人工智能技术,采用 YOLOv8 进行检测。我们的研究引入了基于生产者-消费者模型的高效模型推理管道,有效利用并行处理和并发计算来提高性能。该流水线的部署使用 C++、TensorRT、float16 量化和 oneTBB 实现,与传统的顺序处理方法大相径庭。结果非常显著,显示了处理速度的大幅提升:在配备 Nvidia RTX A6000 GPU 的台式机系统上,处理速度从每秒 38.93 帧提升到 281.06 帧;在 Nvidia Jetson AGX Orin 边缘计算平台上,处理速度从 19.50 帧提升到 200.26 帧。这一拟议框架有望满足高速铁路的实时检测要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-speed railway track components inspection framework based on YOLOv8 with high-performance model deployment

Railway inspection poses significant challenges due to the extensive use of various components in vast railway networks, especially in the case of high-speed railways. These networks demand high maintenance but offer only limited inspection windows. In response, this study focuses on developing a high-performance rail inspection system tailored for high-speed railways and railroads with constrained inspection timeframes. This system leverages the latest artificial intelligence advancements, incorporating YOLOv8 for detection. Our research introduces an efficient model inference pipeline based on a producer-consumer model, effectively utilizing parallel processing and concurrent computing to enhance performance. The deployment of this pipeline, implemented using C++, TensorRT, float16 quantization, and oneTBB, represents a significant departure from traditional sequential processing methods. The results are remarkable, showcasing a substantial increase in processing speed: from 38.93 Frames Per Second (FPS) to 281.06 FPS on a desktop system equipped with an Nvidia RTX A6000 GPU and from 19.50 FPS to 200.26 FPS on the Nvidia Jetson AGX Orin edge computing platform. This proposed framework has the potential to meet the real-time inspection requirements of high-speed railways.

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