Author
Listed:
- Hui Geng
(College of Information Engineering, Tarim University, Alaer 843300, China)
- Zhiben Yin
(College of Information Science and Engineering, Xinjiang University of Science & Technology, Korla 841000, China)
- Mingdeng Shi
(College of Information Engineering, Tarim University, Alaer 843300, China
Key Laboratory of Tarim Oasis Agriculture, Ministry of Education, Tarim University, Alaer 843300, China)
- Junzhang Pan
(College of Information Engineering, Tarim University, Alaer 843300, China)
- Chunjing Si
(College of Information Engineering, Tarim University, Alaer 843300, China
Key Laboratory of Tarim Oasis Agriculture, Ministry of Education, Tarim University, Alaer 843300, China)
Abstract
Point cloud completion for cotton leaves is critical for accurately reconstructing complete shapes from sparse and significantly incomplete data. Traditional methods typically assume small missing ratios (≤25%), which limits their effectiveness for morphologically complex cotton leaves with severe sparsity (50–75%), large geometric distortions, and extensive point loss. To overcome these challenges, we introduce an end-to-end neural network that combines PF-Net and PointNet++ to effectively reconstruct dense, uniform point clouds from incomplete inputs. The model initially uses a multiresolution encoder to extract multiscale features from locally incomplete point clouds at different resolutions. By capturing both low-level and high-level attributes, these features significantly enhance the network’s ability to represent semantic content and geometric structure. Next, a point pyramid decoder generates missing point clouds hierarchically from layers at different depths, effectively reconstructing the fine details of the original structure. PointNet++ is then used to fuse and reshape the incomplete input point clouds with the generated missing points, yielding a fully reconstructed and uniformly distributed point cloud. To ensure effective task completion at different training stages, a loss function freezing strategy is employed, optimizing the network’s performance throughout the training process. Experimental evaluation on the cotton leaf dataset demonstrated that the proposed model outperformed PF-Net, reducing the Chamfer distance by 80.15% and the Earth Mover distance by 54.35%. These improvements underscore the model’s robustness in reconstructing sparse point clouds for precise agricultural phenotyping.
Suggested Citation
Hui Geng & Zhiben Yin & Mingdeng Shi & Junzhang Pan & Chunjing Si, 2025.
"Super-Resolution Point Cloud Completion for Large-Scale Missing Data in Cotton Leaves,"
Agriculture, MDPI, vol. 15(18), pages 1-25, September.
Handle:
RePEc:gam:jagris:v:15:y:2025:i:18:p:1989-:d:1754742
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