딥러닝 기반 BIM 부재 자동분류 학습모델의 성능 향상을 위한 Ensemble 모델 구축에 관한 연구

Translated title of the contribution: Advanced Approach for Performance Improvement of Deep Learningbased BIM Elements Classification Model Using Ensemble Model

Research output: Contribution to journalArticlepeer-review

Abstract

To increase the usability of Building Information Modeling (BIM) in construction projects, it is critical to ensure the interoperability of data between heterogeneous BIM software. The Industry Foundation Classes (IFC), an international ISO format, has been established for this purpose, but due to its structural complexity, geometric information and properties are not always transmitted correctly. Recently, deep learning approaches have been used to learn the shapes of the BIM elements and thereby verify the mapping between BIM elements and IFC entities. These models performed well for elements with distinct shapes but were limited when their shapes were highly similar. This study proposed a method to improve the performance of the element type classification by using an Ensemble model that leverages not only shapes characteristics but also the relational information between individual BIM elements. The accuracy of the Ensemble model, which merges MVCNN and MLP, was improved 0.03 compared to the existing deep learning model that only learned shape information.
Translated title of the contributionAdvanced Approach for Performance Improvement of Deep Learningbased BIM Elements Classification Model Using Ensemble Model
Original languageKorean
Pages (from-to)12-25
Number of pages14
Journal한국BIM학회 논문집
Volume12
Issue number2
DOIs
StatePublished - Dec 2022

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