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Roughness Classification of End Milling Based on Machine Vision

机译:基于机器视觉的终端铣削粗糙度分类

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At present, the sample comparison method is often used in the industrial field to classify the roughness of end milling, which has some problems such as high requirements to inspectors and subjective inspection results. So this paper proposes a classification method of end milling roughness based on machine vision. Firstly, the image acquisition device combined by a mobile phone camera and a miniature microscope is used to capture surface images of the end milling sample. Secondly, the image dataset is constructed by expanding the image sample size and preprocessing image. Then the classification results of the improved LeNet-5 and AlexNet are compared to determine the more appropriate structure. Finally, particle swarm optimization (PSO) is used to optimize the model. The experimental results prove that the classification accuracy of the improved PSO- AlexNet is higher than the improved LeNet-5 and AlexNet, and can meet the roughness classification requirements. So this method can eliminate the influence of human factors and evaluate the classification results of end milling roughness objectively and accurately.
机译:目前,样品比较方法通常用于工业领域,以分类端铣的粗糙度,这对检查员和主观检查结果具有一些问题。因此,本文提出了一种基于机器视觉的端铣粗糙度的分类方法。首先,通过移动电话相机和微型显微镜组合的图像采集装置用于捕获端部铣削样品的表面图像。其次,通过扩展图像样本大小和预处理图像来构造图像数据集。然后比较改进的LENET-5和AlexNet的分类结果以确定更合适的结构。最后,粒子群优化(PSO)用于优化模型。实验结果证明,改进的PSOXNET的分类准确性高于改进的LENET-5和AlexNet,并且可以满足粗糙度分类要求。因此,这种方法可以消除人类因素的影响,并客观准确地评估端铣粗糙度的分类结果。

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