Digital image processing algorithm for industrial on-site roughness evaluation in Ti-alloy machining

Sílvia Daniela RIBEIRO CARVALHO
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引用次数: 0

Abstract

Abstract. The surface texture is normally observed after the machining process, but nowadays it is important to use on-site analysis to improve the process automatically via smart processing. This study introduces a contactless roughness inspection method employing digital image processing on Ti6Al4V samples in turning using three different feed. Texture analysis with grey-level co-occurrence matrix (GLCM) extracted features that were correlated with the arithmetic average roughness (Ra), leading to the establishment of predictive models. The study encompassed diverse image testing, incorporating variations in resolution and brightness distributions. It was found that the pixel pair spacing (PPS) in GLCM analysis was influenced by the image resolution and feed rate. The predictive models developed with high-quality images, i.e., higher resolution and better brightness distribution, yielded similar results to those created using lower-quality images.
用于钛合金加工中工业现场粗糙度评估的数字图像处理算法
摘要表面纹理通常是在加工过程后观察到的,但如今利用现场分析通过智能加工自动改进加工过程非常重要。本研究介绍了一种采用数字图像处理技术的非接触式粗糙度检测方法,该方法适用于使用三种不同进给方式进行车削加工的 Ti6Al4V 样品。利用灰度级共现矩阵 (GLCM) 进行纹理分析,提取与算术平均粗糙度 (Ra) 相关的特征,从而建立预测模型。这项研究涵盖了各种图像测试,包括分辨率和亮度分布的变化。研究发现,GLCM 分析中的像素对间距 (PPS) 受图像分辨率和进给量的影响。使用高质量图像(即分辨率更高、亮度分布更好)建立的预测模型与使用低质量图像建立的预测模型得出的结果相似。
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