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Automatic classification of insulator by combining k-nearest neighbor algorithm with multi-type feature for the Internet of Things

机译:通过将K-最近邻算法与多型特征结合克 - 最近邻算法对东西互联网的自动分类

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Abstract New algorithms and architectures in the context of 5G shall be explored to ensure the efficiency, robustness, and consistency in variable application environments which concern different issues, such as the smart grid, water supply, gas monitoring, etc. In power line monitoring, we can get lots of images through a wide range of sensors and can ensure the safe operation of the smart grid by analyzing images. Feature extraction is critical to identify insulators in the aerial image. Existing approaches have primarily addressed this problem by using a single type of feature such as color feature, texture feature, or shape feature. However, a single type of feature usually leads to poor classification rates and missed detection in identifying insulators. Aiming to fully describe the characteristics of insulator and enhance the robustness of insulator against the complex background in aerial images, we combine three types of feature including color feature, texture feature, and shape feature towards a multi-type feature. Then, the multi-type feature is integrated with k -nearest neighbor classifier for automatic classifying insulators. Our experiment with 4500 aerial images demonstrates that the recognition rate is 99% by using this multi-type feature. Comparing to a single type of feature, our method yielded a better classification performance.
机译:摘要探讨了5G范围内的新算法和架构,以确保可变应用环境中的效率,鲁棒性和一致性,这些应用环境涉及不同问题,例如智能电网,供水,气体监测等。电力线监测,我们可以通过各种传感器获得大量图像,可以通过分析图像来确保智能电网的安全操作。特征提取对于识别空中图像中的绝缘体至关重要。现有方法主要通过使用单一类型的功能(如颜色特征,纹理功能或形状特征)来解决此问题。然而,单一类型的特征通常会导致识别绝缘体的差的分类速率和错过检测。旨在充分描述绝缘体的特征,并增强绝缘体对空中图像中复杂背景的鲁棒性,我们将包括彩色特征,纹理特征和形状特征在内的三种类型的特征与多型特征相结合。然后,多型功能与用于自动分类绝缘体的K-Nearest邻居分类器集成。我们的4500个航拍图像的实验表明,通过使用这种多型特征,识别率为99%。与单一类型的功能相比,我们的方法产生了更好的分类性能。

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