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Abstract Surveyors of classification societies review shipyard drawings during the design stage to ensure safety and regulatory compliance. When revisions are required, the surveyors issue comments, and the designers modify and resubmit the drawings; this process is repeated until all requirements are satisfied. In practice, designers are expected to mark each revision with symbols such as revision clouds; however, these marks may be unintentionally omitted. Moreover, iterative revisions may lead to additional changes occurring beyond the marked areas, making the revision markings incomplete and less reliable. As a result, surveyors typically must rely on direct visual comparison of the original and revised drawings to verify the revisions, which is a significant challenge. Particularly when the size of drawings is vast, it not only consumes immense time and effort but also carries a high risk of overlooking revisions or making errors in judgment. In addition, repeated scanning or exporting during resubmissions can introduce non-revision inconsistencies that further obscure true changes. Therefore, this study proposed a method for automatically identifying revisions in ship drawings using deep learning-based change detection technology. To overcome the limitation of acquiring a large number of real revised drawings, the proposed method introduced a technique utilizing image inpainting and segmentation from the field of computer vision to generate synthetic revised drawings from original drawings. Specifically, we defined revisions as three representative types—addition, removal, and replacement—and generated synthetic revisions that closely resemble real revision patterns by reflecting these types. By generating numerous revised drawings with natural modifications applied to the original, we effectively constructed a synthetic training dataset. The change detection model, trained on the synthetic training dataset, rapidly and accurately identified revisions in actual drawings and presented them to the surveyors. Consequently, the surveyors could perform rapid, intensive reviews centered on the identified areas, significantly enhancing the efficiency of the iterative drawing review process.
Publication Date 2026-09-14
In-Su Han, Myung-Il Roh, Min-Chul Kong, Seong-Won Choi, Hwasup Jang, Yeonhwa Jo, Gapheon Lee, "A Method for the Automatic Revision Identification in Ship Drawings", Proceedings of ICCAS (International Conference on Computer Applications in Shipbuilding) 2026, Singapore, 2026.09.14-16

List of Articles
번호 분류 제목 Publication Date
164 International Conference Yun-Sik Kim, Myung-Il Roh, Ha-Yun Kim, In-Chang Yeo, Nam-Sun Son, "An Improved Method for Detection and Tracking of Maritime Obstacles Using Multiple-Sensor Fusion in Real-World Maritime Environments", G-NAOE 2026, Houston, USA, 2026.10.20-24 2026-10-20
163 International Conference Ha-Yun Kim, Myung-Il Roh, Do-Hyuk Ahn, In-Chang Yeo, Seong-Won Choi, "A Method for the Virtual Modeling and Performance Prediction of a Ship to Replace Sea Trials", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
162 International Conference Seung-Jun Oh, Myung-Il Roh, Jin-Hyeok Kim, Do-Hyeok Ahn, "Hull Form Optimization Method Using an Uncertainty-Based, Automatically Updated Surrogate Model", Proceedings of ACSMO 2026, Busan, Korea, 2026.05.17-21. file 2026-05-19
161 International Conference Gyeong-Hyeon Kang, Myung-Il Roh, In-Chang Yeo, "A Simulation Method for the Coastal Patrol Mission of Multiple Unmanned Surface Vehicles", Proceedings of ACSMO 2026, Busan, Korea, 2026.05.17-21. file 2026-05-19
160 International Conference Myung-Il Roh, "Introduction to AI-driven Improvements in Ship Design", International Expert Workshop on Design and Safety of Next-Generation Ships, Seoul, 2026.04.07-09 file 2026-04-07
159 International Conference Seong-Won Choi, Myung-Il Roh, Min-Chul Kong, In-Su Han, "A Method for Ship Pipe Routing Based on Transformer Architecture with Expert Knowledge", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
158 International Conference In-Su Han, Myung-Il Roh, In-Chang Yeo, Seong-Won Choi, Dohyun Chun, "A Method of Exemplar-Based Symbol Detection for Enhancing the Accuracy and Efficiency of Ship Fire and Safety Plan Review Processes", Proceedings of G-NAOE 2026, Houston, USA 2026-10-20
» International Conference In-Su Han, Myung-Il Roh, Min-Chul Kong, Seong-Won Choi, Hwasup Jang, Yeonhwa Jo, Gapheon Lee, "A Method for the Automatic Revision Identification in Ship Drawings", Proceedings of ICCAS 2026, Singapore, 2026.09.14-16 2026-09-14
156 International Conference Seong-Won Choi, Myung-Il Roh, In-Chang Yeo, "A Method for Ship Collision Avoidance Based on Deep Reinforcement Learning Considering Uncertainty", Proceedings of OMAE 2026, Tokyo, Japan, 2026.06.07-12 file 2026-06-09
155 International Conference Yun-Sik Kim, Myung-Il Roh, Ha-Yun Kim, In-Chang Yeo, Nam-Sun Son, "An Improved Method for Detection and Tracking of Maritime Obstacles Using Multiple-Sensor Fusion", Proceedings of OMAE 2026, Tokyo, Japan, 2026.06.07-12 file 2026-06-09
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