基于更快LSTM-CNN网络的电气设备识别

Xiaoping Xiong, Shuang Xu, Wenliang Wu, Deran Tu, Jie Zhang, Zhi Wei
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引用次数: 1

摘要

电力设备巡检是保障电网安全稳定运行的重要任务之一。传统的电力设备检测方法虽然简单,但在复杂的室外环境下性能不稳定。在本文中,我们将LSTM结构集成到Faster R-CNN网络中,设计了一个Faster LSTM- cnn网络。我们收集了正常样本和特殊样本,并使用多种识别神经网络模型进行了各种实验。实验结果表明,与Faster R-CNN和R-FCN等其他方法相比,本文提出的Faster LSTM-CNN网络对正常样本和特殊样本都具有更好的识别性能。
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Identification of Electrical Equipment Based on Faster LSTM-CNN Network
Power equipment inspection is one of the most important tasks to guarantee safe and stable operation of power grids. Although traditional power equipment detection methods are simple, their performances are not stable under complex outdoor environments. In this paper, we integrated the LSTM structure into the Faster R-CNN network, and designed a Faster LSTM-CNN network. We collected both normal samples and special samples, and used a variety of identification neural network models to conduct various experiments. The experimental results show that, compared with other methods such as Faster R-CNN and R-FCN, the proposed Faster LSTM-CNN network has better recognition performance for both normal samples and special samples.
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