Laser cutting is a widely adopted technology in material processing across various industries, but it generates a significant amount of dust, smoke, and aerosols during operation, posing a risk to both the environment and workers' health. Speckle sensing has emerged as a promising method to monitor the cutting process and identify material types in real-time. This paper proposes a material classification technique using a speckle pattern of the material's surface based on deep learning to monitor and control the laser cutting process. The proposed method involves training a convolutional neural network (CNN) on a dataset of laser speckle patterns to recognize distinct material types for safe and efficient cutting. Previous methods for material classification using speckle sensing may face issues when the color of the laser used to produce the speckle pattern is changed. Experiments conducted in this study demonstrate that the proposed method achieves high accuracy in material classification, even when the laser color is changed. The model achieved an accuracy of 98.30 % on the training set and 96.88% on the validation set. Furthermore, the model was evaluated on a set of 3000 new images for 30 different materials, achieving an F1-score of 0.9643. The proposed method provides a robust and accurate solution for material-aware laser cutting using speckle sensing.
翻译:激光切割是各行业材料加工中广泛采用的技术,但在操作过程中会产生大量粉尘、烟雾和气溶胶,对环境和工人健康构成风险。散斑传感已成为一种有前景的方法,用于实时监测切割过程并识别材料类型。本文提出了一种基于深度学习的材料表面散斑图案分类技术,以监测和控制激光切割过程。该方法通过在激光散斑图案数据集上训练卷积神经网络(CNN),以识别不同材料类型,从而实现安全高效的切割。先前基于散斑传感的材料分类方法在用于生成散斑图案的激光颜色改变时可能面临问题。本研究的实验表明,即使激光颜色发生变化,所提出的方法在材料分类中仍能实现高精度。该模型在训练集上的准确率达到98.30%,在验证集上达到96.88%。此外,模型在包含30种不同材料的3000张新图像上进行了评估,F1分数达到0.9643。所提出的方法为基于散斑传感的材料感知激光切割提供了稳健且精确的解决方案。