Machine learning-based high-precision and real-time focus detection for laser material processing systems
Abstract
This work explores a real-time and high precision focus finding for the ultrafast laser material processing for a different types of materials. Focus detection is essential for laser machining because an unfocused beam cannot affect the material and, at worst, a destructive effect. Here, we compare CNN and non-CNN-based approaches to focus detection, ultimately proposing a robust CNN model that can achieve high performance when only trained on a portion of the dataset. We use an ordinary lens (11 mm focal length, 0.25 NA) and a CMOS camera. Our robust CNN model achieved a focus prediction accuracy of 95% when identifying focus distances in {-150, -140,…,0,…,150} µm, each step is about 7% of the Rayleigh length, and a high processing speed of 1000+ Hz on a CPU
Type
Publication
Optics, Photonics and Digital Technologies for Imaging Applications VII