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Title Lcl_Fda: Local Context Learning And Full-Level Decoder Aggregation Network For Large-Scale Point Cloud Semantic Segmentation
ID_Doc 34830
Authors Li Y.; Ye Z.; Huang X.; HeLi Y.; Shuang F.
Year 2025
Published Neurocomputing, 621
DOI http://dx.doi.org/10.1016/j.neucom.2024.129321
Abstract Point cloud semantic segmentation is a key techno-logy for autonomous driving, intelligent power inspection, and smart city planning, etc. However, many existing methods still face limitations in capturing local contextual information and learning long-range dependencies in point cloud representations. To adder-ss these problems, we propose a novel local context learning and full-level aggregation network for point cloud semantic segmen-tation in large-scale scenes. Firstly, we construct a local geometry feature extraction module using both coordinate and angular information. This module aims to acquire global information within local regions, thereby enhancing locally discriminative features. Secondly, we combine single-point channel attention pooling and rotation axis cross attention pooling to effectively enhance the capability of network to exploit local details. Finally, we devised a full-level decoder aggregation module, which expands the receptive field of each decoder to enhance the learning capability of the network for long-range dependencies. We evaluate our method on three large-scale point cloud datasets, including our self-constructed DW_3D dataset and the publicly available datasets Toronto3D and S3DIS. The experiment results validate the effectiveness of our method. The mIoU of the proposed method on DW_3D, Toronto-3D and S3DIS dataset can reach 72.9 %, 82.2 %, 72.3 %(6-fold). Code is avaiable https://github.com/yzq-stu/LCL_FDA. © 2025 Elsevier B.V.
Author Keywords Attention mechanism; Large-scale point cloud; Point cloud dataset in power scene; Semantic segmentation


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