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Insulator Fault Recognition Based on Spatial Pyramid Pooling Networks with Transfer Learning (Match 2018)

机译:基于带传输学习的空间金字塔池网络的绝缘子故障识别(2018年匹配)

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The insulators are the key component in the power transmission systems. In general, the images of insulators are difficult to obtain and the size of it may variance due to shooting angle and distance. The size of images has a great importance in computer vision and image processing. In this paper, a method of Insulator Fault Recognition Based on Spatial Pyramid Pooling networks (SPP-Net) with transfer learning is proposed to process the dataset which is small and the size of images are variance. The proposed method mainly employs the SPP-Net and with a transfer learning. The SPP-Net is used to relieve the constraint of fixed-size of the Deep Convolutional Neural Networks and learn the information from ImageNet Large Scale Visual Recognition Challenge (ILSVRC). Then the method of transfer learning is used to transfer the information learned by SPP-Net to the new model which will be used to the small dataset of insulators to improve the detection of the status of insulators. This paper conduct a thorough evaluation experiment on a real image-dataset of insulators. The experimental results indicate that the proposed method is suitable for this kind of insulators.
机译:绝缘子是动力传输系统中的关键组件。通常,很难获得绝缘子的图像,并且绝缘子的大小可能会因拍摄角度和距离而变化。图像的大小在计算机视觉和图像处理中非常重要。提出了一种基于带转移学习的空间金字塔池网络(SPP-Net)的绝缘子故障识别方法,以处理数据量小,图像大小变化较大的数据集。所提出的方法主要利用SPP-Net并具有转移学习。 SPP-Net用于缓解深度卷积神经网络固定大小的限制,并从ImageNet大规模视觉识别挑战赛(ILSVRC)中学习信息。然后,采用转移学习的方法,将通过SPP-Net学习的信息转移到新模型中,该模型将用于较小的绝缘子数据集,以改善对绝缘子状态的检测。本文对绝缘子的真实图像数据集进行了全面的评估实验。实验结果表明,该方法适用于这种绝缘子。

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