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Engineering Vehicles Detection Based on Modified Faster R-CNN for Power Grid Surveillance

机译:基于改进的R-CNN的工程车辆电网监测

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摘要

Engineering vehicles intrusion detection is a key problem for the security of power grid operation, which can warn of the regional invasion and prevent external damage from architectural construction. In this paper, we propose an intelligent surveillance method based on the framework of Faster R-CNN for locating and identifying the invading engineering vehicles. In our detection task, the type of the objects is varied and the monitoring scene is large and complex. In order to solve these challenging problems, we modify the network structure of the object detection model by adjusting the position of the ROI pooling layer. The convolutional layer is added to the feature classification part to improve the accuracy of the detection model. We verify that increasing the depth of the feature classification part is effective for detecting engineering vehicles in realistic transmission lines corridors. We also collect plenty of scene images taken from the monitor site and label the objects to create a fine-tuned dataset. We train the modified deep detection model based on the technology of transfer learning and conduct training and test on the newly labeled dataset. Experimental results show that the proposed intelligent surveillance method can detect engineering vehicles with high accuracy and a low false alarm rate, which can be used for the early warning of power grid surveillance.
机译:工程车辆入侵检测是电网运行安全的关键问题,可以警告区域入侵并防止建筑施工对外部的破坏。在本文中,我们提出了一种基于Faster R-CNN的智能监视方法,用于对入侵的工程车辆进行定位和识别。在我们的检测任务中,对象的类型多种多样,监视场景又大又复杂。为了解决这些具有挑战性的问题,我们通过调整ROI合并层的位置来修改对象检测模型的网络结构。卷积层被添加到特征分类部分,以提高检测模型的准确性。我们验证了增加特征分类部分的深度对于检测现实传输线走廊中的工程车辆是有效的。我们还收集了大量从监控站点获取的场景图像,并标记了对象以创建经过微调的数据集。我们基于迁移学习技术训练经过修改的深度检测模型,并对新标记的数据集进行训练和测试。实验结果表明,本文提出的智能监控方法能够对工程车辆进行高精度,低误报率的检测,可用于电网监控的预警。

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