Digital Manufacturing Technology https://ojs.wiserpub.com/index.php/DMT <p><em>Digital Manufacturing Technology</em> is an interdisciplinary publication that involves manufacturing technology, computer technology, network technology and management science and mainly focuses on the innovative research results of the theory, models, solutions, methodologies and algorithms, technology, and application of artificial intelligence in manufacturing.</p> <p>The topics include but are not limited to computer-integrated manufacturing systems, human-robot collaborative manufacturing, big data analytics in manufacturing, 3D printing, Industry 4.0, and so on.</p> <p>Contributions of research papers, research notes, short communications, and critical reviews across the broad field of digital manufacturing technology from both academia and industry are equally encouraged.</p> en-US dmt@universalwiser.com (DMT Editorial Office) dmt@universalwiser.com (DMT Editorial Office) Tue, 25 Jun 2024 00:00:00 +0800 OJS 3.3.0.10 http://blogs.law.harvard.edu/tech/rss 60 Detection and Segmentation of Defects in CNC Machine Inserts Using Transfer Learning with Dataset Similarity Evaluation https://ojs.wiserpub.com/index.php/DMT/article/view/3812 <p>The transfer of knowledge from one product to another product has been a highly demanded technique in industrial domains, since it does not need a large training dataset which is often costly available. However, this technique performance may not be always satisfying, due to several issues such as target dataset size or large difference between the source and target datasets. In this paper, we perform transfer learning for segmentation of CNC machine inserts to detect defective inserts using a pre-trained segmentation network. DeepLabv3 framework is adopted for the segmentation task with a modified loss function to speed up its training. A transfer learning strategy with pre-trained model backbone fixed and classifier fine-tuned is applied and the transfer learning performance is investigated on how it relates to the properties such as dataset size. A similarity measure between datasets is proposed to determine which source dataset is the most appropriate for transfer learning on a target dataset.</p> Chunling Du, Gnanaprakasam Naveen, Zhenbiao Wang Copyright (c) 2024 Chunling Du, et al. https://creativecommons.org/licenses/by/4.0 https://ojs.wiserpub.com/index.php/DMT/article/view/3812 Mon, 03 Jun 2024 00:00:00 +0800