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Abstract Drawings such as piping and instrument diagrams (P&ID) or ship safety plans have various equipment and components (lines, signs, and text). Every drawing has rules to express these objects with specific symbols. Generally, these drawings are very complex because they are large in size and consist of relationships between several objects. Therefore, the drawing investigators spend countless time and labor.
For the above reasons, this study uses a deep learning model that has been actively researched recently. An object detection model based on deep learning can quickly find various objects within the drawing. However, the drawing differs from the common images in size and characteristics, generally used as an input in deep learning. Therefore, we proposed a series of procedures for applying the deep learning model to the drawing. This study proposed an object detection algorithm specialized for drawings by combining the non-maximum suppression (NMS) algorithm with the sliding window algorithm. YOLOv7 was selected as an object detection model, which showed the best accuracy by comparing various deep learning models. First, we made a detection window that slides on the drawing. Then, the NMS algorithm was applied to remove duplicate objects from the overall detection results.
Training a deep learning model requires a large amount of training data, but it takes a lot of time to label drawings manually. Therefore, we proposed a data generation model for training data. Objects and background images were extracted from several drawings, and training data were generated by randomly mixing them as material and base. The optimal parameters for training data were selected by comparing the accuracy of the drawings. All models used in this study were trained only with the generated virtual training data.
Knowing how many objects are placed in each division of the ship is important in the inspecting process. Therefore, we developed an algorithm that automatically recognizes the division of the ship and organizes the types and numbers of equipment placed in each division. Furthermore, we developed an algorithm that can obtain the connection relationship between objects and detailed specification of objects by recognizing lines and texts connected to each object.
The method proposed in this study was applied to several actual plans. We confirmed the effectiveness of the proposed method by obtaining high average accuracy. By applying the proposed method, the review procedure, which took several days, can be reduced dramatically to a few minutes per drawing.
Publication Date 2023-06-22
Min-Chul Kong, Myung-Il Roh, In-Chang Yeo, Ki-Su Kim, Jeongyoul Lee, Jongoh Kim, Gapheon Lee, "A Detection Method of Objects with Text in Drawings Based on Deep Learning", Proceedings of ISOPE(International Society of Offshore and Polar Engineers) 2023, Ottawa, Canada, 2023.06.19-23

  1. No Image 13Feb
    by SyDLab
    in International Conference

    Min-Chul Kong, Myung-Il Roh, In-Chang Yeo, Ki-Su Kim, Jeongyoul Lee, Jongoh Kim, Gapheon Lee, "A Detection Method of Objects with Text in Drawings Based on Deep Learning", Proceedings of ISOPE 2023, Ottawa, Canada, 2023.06.19-23

  2. No Image 26Apr
    by SyDLab
    in Domestic Conference

    전도현, 노명일, 이혜원, 유동훈, 진은석 "입력 데이터의 불확실성과 복잡한 조우 상황을 고려한 충돌 위험도 평가 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 442, 2023.05.02-04

  3. No Image 26Apr
    by SyDLab
    in Domestic Conference

    여인창, 노명일, 공민철, 전도현, 하지상, 유동훈, 진은석, "선박의 자동 접이안을 위한 서라운드 뷰 생성 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp.315-316, 2023.05.02-04

  4. No Image 26Apr
    by SyDLab
    in Domestic Conference

    공민철, 노명일, 한인수, 김미진, 김정연, "P&ID 내 객체 및 문자 인식 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 313-314, 2023.05.02-04

  5. No Image 09Jun
    by SyDLab
    in Domestic Conference

    김진혁, 노명일, 여인창, "설계 요구 조건을 고려한 MLP 기반 상선의 선형 변환 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 309-310, 2023.05.02-04

  6. No Image 09Jun
    by SyDLab
    in Domestic Conference

    김하연, 노명일, 하지상, 조영민, 이혜원, "센서 데이터를 활용한 해상 장애물의 개선된 추적 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 436, 2023.05.02-04

  7. No Image 26Apr
    by SyDLab
    in Domestic Conference

    조영민, 노명일, 전도현, 하지상, 이혜원, 유동훈, 진은석, "개선된 센서 데이텨 연관 및 융합 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 261, 2023.05.02-04

  8. No Image 09Jun
    by SyDLab
    in Domestic Conference

    김동우, 노명일, 전도현, 우선홍, 김진혁, 김용태, 이혜원, "멤브레인형 액화가스 화물창 1차방벽 최적 형상 개발을 위한 딥러닝 기반 구조 안전성 예측 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 22-23, 2023.05.02-04

  9. No Image 09Jun
    by SyDLab
    in Domestic Conference

    하지상, 노명일, 공민철, 김기수, "장비 및 배관의 다단계 최적화를 활용한 선박의 기관실 배치 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 311, 2023.05.02-04

  10. No Image 27Feb
    by SyDLab
    in Domestic Conference

    노명일, "자율운항선박을 위한 핵심 AI 기술", 2023년도 스마트전기선박연구회 동계학술발표회, 대전, 2023.02.23-24

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