基于fpga的铁路维修六角螺栓自动检测体系结构

G. D. Ruvo, P. D. Ruvo, F. Marino, G. Mastronardi, P. Mazzeo, E. Stella
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引用次数: 17

摘要

钢轨检查是铁路维修中一项非常重要的工作,需要定期检查以防止危险情况的发生。检查由训练有素的操作员手动操作,沿着轨道行走,搜索视觉异常。这种监测速度缓慢,缺乏客观性,是不可接受的,因为监测结果与观察员识别危急情况的能力有关。本文提出了一种基于fpga的原型结构,可以自动检测将轨道固定在枕木上的紧固螺栓的存在/不存在。一个简单的预测算法,利用铁路的几何形状,从数字线扫描摄像机获得的长视频序列中提取出几个预计会出现螺栓的窗口。这些窗口根据哈尔变换进行预处理,然后提供给多层感知器神经分类器(mlpnc),该分类器显示紧固螺栓的存在/不存在,检测可见螺栓的准确率为99.6%,检测缺失螺栓的准确率为95%。基于fpga的架构以13.29 /spl mu/s的速度执行这些任务,允许对以190 km/h的速度获取的视频序列进行实时分析。
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A FPGA-based architecture for automatic hexagonal bolts detection in railway maintenance
Rail inspection is a very important task in railway maintenance and it is periodically needed for preventing dangerous situations. Inspection is operated manually by trained human operator walking along the track searching for visual anomalies. This monitoring is unacceptable for slowness and lack of objectivity, because the results are related to the ability of the observer to recognize critical situations. The paper presents a prototypal FPGA-based architecture which automatically detects presence/absence of the fastening bolts that fix the rails to the sleepers. A simple predicting algorithm, exploiting the geometry of the railways, extracts, from the long video sequence acquired by a digital line scan camera, few windows where the presence of bolts is expected. These windows are preprocessed according to a Haar transform and then provided to a multilayer perceptron neural classifiers (MLPNCs) which reveals the presence/absence of the fastening bolts with an accuracy of 99.6% in detecting visible bolts and of 95% in detecting missing bolts. A FPGA-based architecture performs these tasks in 13.29 /spl mu/s, allowing an on-the-fly analysis of a video sequence acquired up at 190 km/h.
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