A High-Voltage Electric Switch Classification System Based on K-Nearest Neighbor Classifier

Haien Wang, Jing Zhang, Yang Zhao, Jun Wang, Xiaorong Du
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Abstract

Classification of high-voltage electric switches is an important operation in industrial manufacturing. However, the electrical shock hazards make it dangerous to human. Therefore, classifying high-voltage electric switches automatically is of great interest for factories. For this purpose, we designed a system based on k-nearest neighbor algorithm and bag of visual words model, which performs well in classifying 3 states of highvoltage electric switches. We achieve the classifying task by 3 steps: extracting features of high-voltage electric switch pictures by using SIFT algorithm; clustering SIFT features of all training pictures as visual words and set up a bag of visual words model; calculating the visual words frequency of each picture and using them as inputs of k-nearest neighbor classifier. With the trained model, we extract SIFT features and count visual words frequency of a new picture to be classified, then predict its state by looking for the k nearest training pictures. An experimental study performed on a set of pictures reveals some good performance of this system, compared to other classification methods such as SVM and VGG-16.
基于k -最近邻分类器的高压开关分类系统
高压电气开关的分类是工业制造中的一项重要操作。然而,它的触电危险使其对人体有危险。因此,对高压电气开关进行自动分类是工厂非常感兴趣的问题。为此,我们设计了一个基于k近邻算法和视觉词袋模型的系统,该系统可以很好地对高压开关的3种状态进行分类。我们通过三个步骤来完成分类任务:利用SIFT算法提取高压开关图像的特征;将所有训练图片的SIFT特征聚类为视觉词,建立视觉词袋模型;计算每张图片的视觉词频率,并将其作为k近邻分类器的输入。利用训练好的模型提取SIFT特征,对待分类新图片的视觉词频率进行计数,然后通过寻找k个最接近的训练图片来预测其状态。在一组图片上进行的实验研究表明,与SVM和VGG-16等其他分类方法相比,该系统具有良好的性能。
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