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Temperature Recognition for Normal Temperature Metal Based on The Statistical Features of Visible Image and K-nearest Neighbor Algorithm

机译:基于可见图像和k最近邻算法的统计特征的常温金属温度识别

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摘要

The temperature status monitoring of power equipment is very important to ensure the safe operation of the power grid, and the fault temperature is generally in the normal temperature range. Under normal temperature conditions, the magnitude of the thermal radiation intensity in the visible waveband is small and changes slightly with temperature. Therefore, infrared detection is generally used to detect temperature. In this paper, the chromaticity information of visible images of the copper plate and aluminum plate caused by normal temperature changes is studied. First, establish image libraries of copper plate and aluminum plate at 10°C-100°C, extract the chromaticity gray values of the R, G, and B components of the images at different temperatures, and calculate the frequencies of each gray level to obtain the gray frequency distribution of each component. Then, the change law of the gray frequency distribution curve with temperature is analyzed qualitatively, and the statistical features of the gray frequency distribution of each component are calculated. Some of features are selected by the Fisher criterion. Finally, the k-Nearest Neighbor (KNN) algorithm is used for temperature recognition whose input features is a combination of the selected features. The results show that the average test error of the KNN temperature prediction model is within 1°C, which achieves a good prediction effect, and the dimension of the input feature can influence the prediction effect. The above results provide a new technical route for detecting normal temperature using visible image information.
机译:温度状态监控电力设备是非常重要的,保证了电网的安全运行,故障温度一般在正常温度范围。在正常温度条件下,在可见光波段的热辐射强度的大小是小的,并与温度稍有变化。因此,红外线检测通常用于检测温度。在本文中,铜板和由正常的温度变化的铝板的可视图像的色度信息进行了研究。首先,建立铜板和铝板的图像库在10℃-100℃,提取R,G,和在不同温度下的图像的B分量的色度的灰度值,并计算每个灰度级的频率,以获得各成分的灰度频率分布。然后,随着温度的灰度频率分布曲线的变化规律进行了定性分析,并计算各成分的灰度频率分布的统计特征。其中一些功能是由Fisher准则选择。最后,k近邻(KNN)算法被用于温度识别其输入特征是所选择的特征的组合。该结果表明,KNN温度预测模型的平均测试误差是在1℃以内,这实现了良好的预测效果,并且输入特征可以影响预测效果的尺寸。上述结果提供了使用可见光图像信息检测常温下为新的技术路线。

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