论文标题
一种自适应的人类在循环的方法,用于对添加剂制造过程的排放检测和计算机视觉的积极学习
An adaptive human-in-the-loop approach to emission detection of Additive Manufacturing processes and active learning with computer vision
论文作者
论文摘要
添加剂制造(AM)(也称为3D打印)中的原位监视和过程控制的最新发展允许在制造零件的构建过程中收集大量排放数据。该数据可用作3D打印零件的3D和2D表示。但是,分析和使用以及该数据的表征仍然是手动过程。本文的目的是使用机器学习技术提出一种自适应的人类在循环方法中,该技术会自动检查和注释在AM过程中产生的排放数据。更具体地说,本文将研究两种情况:首先,首先,使用卷积神经网络(CNN)自动检查和分类通过原位监视和第二,将主动学习技术应用于开发的分类模型,以构建人类在循环机制中,以加速人类的循环机制,以加速发射数据的标记过程。基于CNN的方法依赖于转移学习和微调,这使该方法适用于其他工业形象模式。通过不确定性抽样策略来自动选择可以向人类专家提供注释的样品,可以使该方法的适应性。
Recent developments in in-situ monitoring and process control in Additive Manufacturing (AM), also known as 3D-printing, allows the collection of large amounts of emission data during the build process of the parts being manufactured. This data can be used as input into 3D and 2D representations of the 3D-printed parts. However the analysis and use, as well as the characterization of this data still remains a manual process. The aim of this paper is to propose an adaptive human-in-the-loop approach using Machine Learning techniques that automatically inspect and annotate the emissions data generated during the AM process. More specifically, this paper will look at two scenarios: firstly, using convolutional neural networks (CNNs) to automatically inspect and classify emission data collected by in-situ monitoring and secondly, applying Active Learning techniques to the developed classification model to construct a human-in-the-loop mechanism in order to accelerate the labeling process of the emission data. The CNN-based approach relies on transfer learning and fine-tuning, which makes the approach applicable to other industrial image patterns. The adaptive nature of the approach is enabled by uncertainty sampling strategy to automatic selection of samples to be presented to human experts for annotation.