Maize LAI Retrieval Using PointNet++ and Transfer Learning with Integrated 3D Radiative Transfer Modeling and LiDAR Point Clouds
Highlights
- Effective RTM-Simulated Dataset and Transfer Learning Strategy: The integration of 3D RTM-simulated LiDAR point clouds and transfer learning effectively alleviated the limitation of insufficient measured samples and improved the adaptability of the model to real canopy conditions.
- Improved LAI Retrieval Performance: The proposed “RTM simulation + PointNet++ + transfer learning” framework significantly improved maize LAI retrieval accuracy. Comparative experiments further demonstrated that TLS observations, moderate scan angles, and medium stem diameter conditions produced relatively higher retrieval accuracy.
- The proposed framework provides a promising LiDAR-based strategy for crop structural parameter retrieval under limited measured data conditions and complex canopy structures.
- The integration of RTM-simulated datasets, deep learning, and transfer learning demonstrates potential applicability for crop phenotyping, precision agriculture, and future UAV-/ALS-based LiDAR monitoring applications.
Abstract
1. Introduction
2. Materials and Methods
2.1. Data
2.1.1. Synthetic Dataset
2.1.2. Field-Observed Maize Canopy
2.2. Method
2.2.1. LAI Retrieval Method Based on PointNet++
- Point Cloud Preprocessing
- 2.
- Network Architecture
- 3.
- Transfer Learning Strategy
2.2.2. Model Performance Comparison
2.2.3. Model Accuracy Evaluation
3. Results
3.1. Availability of Synthetic Datasets
3.2. Correlation Between Point Cloud Structural Features and LAI
3.3. Comparison of Different Training Strategies for LAI Retrieval
3.4. Comparison of LAI Retrieval Between Deep Learning and Traditional Methods
3.5. Analysis of the Effects of Observation Conditions and Structural Parameters on LAI Retrieval Accuracy
4. Discussion
4.1. The Importance of Synthetic Datasets from 3D RTM
4.2. Uncertainty and Limitations of LiDAR-Based LAI Retrieval
4.3. Simulation–Reality Gap and Model Generalization
4.4. Future Perspectives
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Parameter | Value | Unit |
|---|---|---|
| Sensor type | TLS | —— |
| Sensor height | 1.7 | m |
| Zenith scan range | 180 | ° |
| Azimuth scan range | 360 | ° |
| Zenith angular resolution | 0.5 | ° |
| Maximum range | 15 | m |
| Parameter | Value | Unit |
|---|---|---|
| Sensor type | ALS | —— |
| Sensor receiving area | 0.1 | m2 |
| Beam divergence half-angle | 1.25 × 10−4 | rad |
| Field-of-view half-angle | 2.0 × 10−4 | rad |
| Sampling interval | 0.1333 | ns |
| Flying height | 80.0 | m |
| Point density | ~1000 | pts/m2 |
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Li, Q.; Chen, S.; Cui, L.; Zhang, Y.; Chen, H.; Zhu, J.; Wu, M.; Zhang, A.; Yang, J. Maize LAI Retrieval Using PointNet++ and Transfer Learning with Integrated 3D Radiative Transfer Modeling and LiDAR Point Clouds. Remote Sens. 2026, 18, 1660. https://doi.org/10.3390/rs18101660
Li Q, Chen S, Cui L, Zhang Y, Chen H, Zhu J, Wu M, Zhang A, Yang J. Maize LAI Retrieval Using PointNet++ and Transfer Learning with Integrated 3D Radiative Transfer Modeling and LiDAR Point Clouds. Remote Sensing. 2026; 18(10):1660. https://doi.org/10.3390/rs18101660
Chicago/Turabian StyleLi, Qiqi, Shengbo Chen, Liang Cui, Yaqi Zhang, Hao Chen, Jinchen Zhu, Menghan Wu, Aonan Zhang, and Jiaqi Yang. 2026. "Maize LAI Retrieval Using PointNet++ and Transfer Learning with Integrated 3D Radiative Transfer Modeling and LiDAR Point Clouds" Remote Sensing 18, no. 10: 1660. https://doi.org/10.3390/rs18101660
APA StyleLi, Q., Chen, S., Cui, L., Zhang, Y., Chen, H., Zhu, J., Wu, M., Zhang, A., & Yang, J. (2026). Maize LAI Retrieval Using PointNet++ and Transfer Learning with Integrated 3D Radiative Transfer Modeling and LiDAR Point Clouds. Remote Sensing, 18(10), 1660. https://doi.org/10.3390/rs18101660

