人工智能
计算机科学
分割
稳健性(进化)
计算机视觉
熔丝制造
数字光处理
3D打印
探测器
工程类
机械工程
电信
生物化学
基因
投影机
化学
作者
Arya Shabani,Uriel Martínez-Hernández
标识
DOI:10.1109/iros55552.2023.10341406
摘要
Measuring geometry of the printing road is key for detection of anomalies in 3D printing processes. Although commercial 3D printers can measure the extrusion height using various distance sensors, measuring of the width in real-time remains a challenge. This paper presents a visual in-situ monitoring system to measure width of the printing filament road in 2D patterns. The proposed system is composed of a printable shroud with embedded camera setup and a visual detection approach based on a two-stage instance segmentation method. Each of the segmentation and localization stages can use multiple computational approaches including Gaussian mixture model, color filter, and deep neural network models. The visual monitoring system is mounted on a standard 3D printer and validated with the measurement of printed filament roads of sub-millimeter widths. The results on accuracy and robustness reveal that combinations of deep models for both segmentation and localization stages have better performance. Particularly, fully connected CNN segmentation model combined with YOLO object detector can measure sub-millimeter extrusion width with 90 μm accuracy at 125 ms speed. This visual monitoring system has potential to improve the control of printing processes by the real-time measurement of printed filament geometry.
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