CVAILGFeb 7, 2024

Combining shape and contour features to improve tool wear monitoring in milling processes

arXiv:2402.05978v120 citationsh-index: 21Int J Prod Res
Originality Incremental advance
AI Analysis

This incremental improvement addresses automated insert classification for the manufacturing community.

The paper tackled tool wear monitoring in milling processes by proposing a new system combining shape and contour descriptors, achieving 91.44% accuracy for binary classification and 82.90% for three-class classification, outperforming individual descriptors.

In this paper, a new system based on combinations of a shape descriptor and a contour descriptor has been proposed for classifying inserts in milling processes according to their wear level following a computer vision based approach. To describe the wear region shape we have proposed a new descriptor called ShapeFeat and its contour has been characterized using the method BORCHIZ that, to the best of our knowledge, achieves the best performance for tool wear monitoring following a computer vision-based approach. Results show that the combination of BORCHIZ with ShapeFeat using a late fusion method improves the classification performance significantly, obtaining an accuracy of 91.44% in the binary classification (i.e. the classification of the wear as high or low) and 82.90% using three target classes (i.e. classification of the wear as high, medium or low). These results outperform the ones obtained by both descriptors used on their own, which achieve accuracies of 88.70 and 80.67% for two and three classes, respectively, using ShapeFeat and 87.06 and 80.24% with B-ORCHIZ. This study yielded encouraging results for the manufacturing community in order to classify automatically the inserts in terms of their wear for milling processes.

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