MSFA-Net: A Multiscale Feature Aggregation Network for Semantic Segmentation of Historical Building Point Clouds

Author:

Zhang Ruiju123,Xue Yaqian1,Wang Jian14,Song Daixue5,Zhao Jianghong123ORCID,Pang Lei1ORCID

Affiliation:

1. School of Geomantic and Urban Information, Beijing University of Civil Engineering and Architecture, Beijing 102616, China

2. Engineering Research Center of Representative Building and Architectural Heritage Database, Ministry of Education, Beijing 102616, China

3. Beijing Key Laboratory for Architectural Heritage Fine Reconstruction & Health Monitoring, Beijing 102616, China

4. Institute of Science and Technology Development, Beijing University of Civil Engineering and Architecture, Beijing 100044, China

5. Beijing Urban Construction Design & Development Group Co., Ltd., Beijing 100037, China

Abstract

In recent years, research on the preservation of historical architecture has gained significant attention, where the effectiveness of semantic segmentation is particularly crucial for subsequent repair, protection, and 3D reconstruction. Given the sparse and uneven nature of large-scale historical building point cloud scenes, most semantic segmentation methods opt to sample representative subsets of points, often leading to the loss of key features and insufficient segmentation accuracy of architectural components. Moreover, the geometric feature information at the junctions of components is cluttered and dense, resulting in poor edge segmentation. Based on this, this paper proposes a unique semantic segmentation network design called MSFA-Net. To obtain multiscale features and suppress irrelevant information, a double attention aggregation module is first introduced. Then, to enhance the model’s robustness and generalization capabilities, a contextual feature enhancement and edge interactive classifier module are proposed to train edge features and fuse the context data. Finally, to evaluate the performance of the proposed model, experiments were conducted on a self-curated ancient building dataset and the S3DIS dataset, achieving OA values of 95.2% and 88.7%, as well as mIoU values of 86.2% and 71.6%, respectively, further confirming the effectiveness and superiority of the proposed method.

Funder

Beijing Municipal Natural Science Foundation

Publisher

MDPI AG

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