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Deep Learning Approaches on Defect Detection in High Resolution Aerial Images of Insulators

机译:绝缘子高分辨率空中图像缺陷检测深度学习方法

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摘要

By detecting the defect location in high-resolution insulator images collected by unmanned aerial vehicle (UAV) in various environments, the occurrence of power failure can be timely detected and the caused economic loss can be reduced. However, the accuracies of existing detection methods are greatly limited by the complex background interference and small target detection. To solve this problem, two deep learning methods based on Faster R-CNN (faster region-based convolutional neural network) are proposed in this paper, namely Exact R-CNN (exact region-based convolutional neural network) and CME-CNN (cascade the mask extraction and exact region-based convolutional neural network). Firstly, we proposed an Exact R-CNN based on a series of advanced techniques including FPN (feature pyramid network), cascade regression, and GIoU (generalized intersection over union). RoI Align (region of interest align) is introduced to replace RoI pooling (region of interest pooling) to address the misalignment problem, and the depthwise separable convolution and linear bottleneck are introduced to reduce the computational burden. Secondly, a new pipeline is innovatively proposed to improve the performance of insulator defect detection, namely CME-CNN. In our proposed CME-CNN, an insulator mask image is firstly generated to eliminate the complex background by using an encoder-decoder mask extraction network, and then the Exact R-CNN is used to detect the insulator defects. The experimental results show that our proposed method can effectively detect insulator defects, and its accuracy is better than the examined mainstream target detection algorithms.
机译:通过在各种环境中检测由无人空中车辆(UAV)收集的高分辨率绝缘体图像中的缺陷位置,可以及时检测电力故障的发生,并且可以降低导致的经济损失。然而,现有检测方法的准确性受到复杂背景干扰和小目标检测的极大限制。为了解决这个问题,本文提出了一种基于R-CNN(基于区域的卷积性神经网络)的两个深度学习方法,即精确的R-CNN(基于精确的基于区域的卷积神经网络)和CME-CNN(级联掩模提取和基于精确的基于区域的卷积神经网络)。首先,我们提出了一种基于一系列先进技术的精确R-CNN,包括FPN(特征金字塔网络),级联回归和Giou(Unitize Over Engine)。 ROI对齐(兴趣区对齐)被引入替换ROI池(利息池区域)以解决未对准问题,并引入深度可分离的卷积和线性瓶颈来降低计算负担。其次,创新了一种新的管道,提出了提高绝缘体缺陷检测的性能,即CME-CNN。在我们提出的CME-CNN中,首先生成绝缘体掩模图像以通过使用编码器 - 解码器掩模提取网络来消除复杂背景,然后精确的R-CNN用于检测绝缘体缺陷。实验结果表明,我们所提出的方法可以有效地检测绝缘体缺陷,其精度优于检查的主流目标检测算法。

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