Rotor Winding Image Detection Method Based on Model-Based Transfer Learning

Jia Youbin, Zhang Xiaoguo, Chen Gang
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引用次数: 2

Abstract

Rotor is a core component of the electric motor. The qualification of rotor winding is one of the core factors for the proper functioning of the rotor, which is still detected by manual operation. Hence, it is important to achieve automatic detection of the rotor windings and enhance the detection accuracy. Recently, convolutional neural network (CNN) has been successfully applied to image recognition., but it requires a large number of labeled samples and there is almost no dataset bias between the target dataset and the source dataset. The challenges of using CNN to recognize rotor winding are that the winding image dataset of different types of rotor exist large dataset bias and the labeled examples are limited. We proposed a new model-based transfer learning method to deal with the challenges. To solve the dataset bias problem., we proposed a new image binarization method to get binary rotor winding images. Using the binary images to train and test model can significantly reduce the interference of dataset bias. Meanwhile., we proposed a method to build model-based transfer learning model which is based on the pre-trained Inception-V3 model trained with the ImageNet dataset., the method is used to solve the problem of limited labeled samples. The comparing experiments show that the model-based transfer learning model trained and tested with binary images significantly outperform existing other models., and can achieve stable and accurate detection of the rotor images.
基于模型迁移学习的转子绕组图像检测方法
转子是电动机的核心部件。转子绕组是否合格是转子能否正常工作的核心因素之一,目前仍需人工操作来检测。因此,实现转子绕组的自动检测,提高检测精度具有重要意义。近年来,卷积神经网络(CNN)已成功应用于图像识别。,但它需要大量的标记样本,并且目标数据集和源数据集之间几乎没有数据偏差。使用CNN进行转子绕组识别的挑战在于,不同类型转子的绕组图像数据集存在较大的数据偏差,并且标记的样例有限。我们提出了一种新的基于模型的迁移学习方法来应对这些挑战。解决数据集偏差问题。提出了一种新的图像二值化方法来获取转子绕组的二值图像。利用二值图像对模型进行训练和测试,可以显著减少数据集偏差的干扰。与此同时。提出了一种基于ImageNet数据集训练的Inception-V3预训练模型构建基于模型的迁移学习模型的方法。,该方法用于解决标记样本有限的问题。对比实验表明,用二值图像训练和测试的基于模型的迁移学习模型明显优于现有的其他模型。,可以实现稳定、准确的转子图像检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.60
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0.00%
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