A New Method for Feature Enhancement of Grid Equipment Images

Honghui Zhou, Ruyi Qin, Jian Wu, Ying Qian, Xiaoming Ju
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引用次数: 1

Abstract

With the continuous development of the state grid, power transmission equipment is also increasing, and how to efficiently inspect and maintain power transmission equipment has become a key concern in the industry. In order to reduce the consumption of manpower in the inspection process, the current method is mainly to send drones to take patrol photos and then use deep learning to identify faulty equipment. However, in the actual process, power transmission equipment is generally built in areas with more natural vegetation, so the pictures obtained from drones have problems such as unclear targets and too many irrelevant areas, which become the main factors affecting the effect of abnormality identification. Based on this, this paper proposes a method of image feature enhancement from the perspective of image processing, which can effectively improve the feature representation in the original image. Experiments are conducted on three datasets constructed by ourselves, and it can be seen that the image processing method proposed in this paper achieves good experimental results, which can effectively improve the detection effect of deep learning models on faulty equipment photos.
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网格设备图像特征增强的新方法
随着国家电网的不断发展,输变电设备也在不断增多,如何高效地对输变电设备进行检测和维护已成为业界关注的重点问题。为了减少巡检过程中的人力消耗,目前的方法主要是派出无人机拍摄巡逻照片,然后利用深度学习识别故障设备。但在实际过程中,输电设备一般建在天然植被较多的区域,因此无人机获得的图像存在目标不清晰、无关区域过多等问题,成为影响异常识别效果的主要因素。基于此,本文从图像处理的角度提出了一种图像特征增强的方法,可以有效地改善原始图像中的特征表示。在自己构建的三个数据集上进行了实验,可以看出本文提出的图像处理方法取得了良好的实验结果,可以有效提高深度学习模型对故障设备照片的检测效果。
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