基于掩模R-CNN的电气设备面板检测与分割

Meng Zhaona, Wang Zishuo, L. Shang
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引用次数: 0

摘要

提出了一种基于深度学习技术的电力机房设备面板检测方法。对于实时图像,可以达到设备面板检测和分割的目的,便于设备监控任务的完成。我们使用Mask R-CNN算法来检测图片中有多少个目标设备,并找到每个设备对应的类别。在每个目标设备中,前景和背景在像素级进行区分。方法描述如下。首先,我们收集了60类动力室设备共4500张图片用于实验。接下来,我们使用开源的数据标注软件Labelimg对所有图片进行标注,将标记好的图片作为数据集进行预处理,用于训练和测试所提出的模型。实验结果表明,该方法具有一定的可实施性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electric Equipment Panel Detection and Segmentation based on Mask R-CNN
This paper proposed a method for detecting the panel of equipment in the power room based on deep learning technology. For a real-time image, we can achieve the purpose of equipment panel detection and segmentation, which facilitate the task of equipment monitoring. We use the Mask R-CNN algorithm to detect how many target devices there are in the picture and to find the category corresponding to each device. In each target device, the foreground and background are distinguished at the pixel level. The method is described as follows. First of all, we collected a total of 4,500 pictures in 60 categories of power room equipment for our experiments. Next, we labeled all the pictures using Labelimg, which is an open source software for data annotation, the marked pictures were preprocessed as the data set to train and test the proposed model. The well performance on the test set shows that our proposed method has a certain implementability and effectiveness.
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