MSTNet-KD: Multilevel transfer networks using knowledge distillation for the dense prediction of remote-sensing images
Recently, methods based on convolutional neural networks have achieved good results in
the dense prediction of remote-sensing images, particularly when employing normalized …
the dense prediction of remote-sensing images, particularly when employing normalized …
Open-set domain adaptation for scene classification using multi-adversarial learning
Abstract Domain adaptation methods are able to transfer knowledge across different
domains, tackling multi-sensor, multi-temporal or cross-regional remote sensing scenarios …
domains, tackling multi-sensor, multi-temporal or cross-regional remote sensing scenarios …
A framework for fully automated reconstruction of semantic building model at urban-scale using textured LoD2 data
Abstract The CityGML Level of Detail 3 (LoD3), a widely adopted standard for three-
dimensional (3D) city modeling, has been accessible for an extended period. However, its …
dimensional (3D) city modeling, has been accessible for an extended period. However, its …
EIDU-Net: edge-preserved inception DenseGCN U-Net for LiDAR point cloud segmentation
X Xu, J Wang, Q Zhu, P Zhou, G Geng, K Li, L Su… - Scientific Reports, 2024 - nature.com
With the development of laser scanners and machine learning, point cloud semantic
segmentation plays a significant role in autonomous driving, scene reconstruction, human …
segmentation plays a significant role in autonomous driving, scene reconstruction, human …
Semantic-aware for point cloud domain adaptation with self-distillation learning
J Yang, F Da, R Hong - Image and Vision Computing, 2025 - Elsevier
Unsupervised domain adaptation aims to apply knowledge gained from a label-rich domain,
ie, the source domain, to a label-scare domain, ie, the target domain. However, direct …
ie, the source domain, to a label-scare domain, ie, the target domain. However, direct …
BEMF-Net: Semantic Segmentation of Large-Scale Point Clouds via Bilateral Neighbor Enhancement and Multi-Scale Fusion
H Ji, S Yang, Z Jiang, J Zhang, S Guo, G Li, S Zhong… - Remote Sensing, 2023 - mdpi.com
The semantic segmentation of point clouds is a crucial undertaking in 3D reconstruction and
holds great importance. However, achieving precise semantic segmentation represents a …
holds great importance. However, achieving precise semantic segmentation represents a …
Domain Incremental Learning for Remote Sensing Semantic Segmentation with Multi-Feature Constraints in Graph Space
W Huang, M Ding, F Deng - IEEE Transactions on Geoscience …, 2024 - ieeexplore.ieee.org
The use of deep learning techniques for semantic segmentation in remote sensing has been
increasingly prevalent. Effectively modeling remote contextual information and integrating …
increasingly prevalent. Effectively modeling remote contextual information and integrating …
[HTML][HTML] GeoSparseNet: A Multi-Source Geometry-Aware CNN for Urban Scene Analysis
The convolutional neural networks (CNNs) functioning on geometric learning for the urban
large-scale 3D meshes are indispensable because of their substantial, complex, and …
large-scale 3D meshes are indispensable because of their substantial, complex, and …
Cross-Domain Incremental Feature Learning for ALS Point Cloud Semantic Segmentation with Few Samples
M Dai, S **ng, Q Xu, P Li, J Pan… - IEEE Transactions on …, 2024 - ieeexplore.ieee.org
Feature learning of airborne laser scanning (ALS) point clouds is challenged by both the
limited annotated samples and imbalanced class distribution. An intuitive way involves …
limited annotated samples and imbalanced class distribution. An intuitive way involves …
OPOCA: One Point One Class Annotation for LiDAR Point Cloud Semantic Segmentation
This article tackles the problem of requiring a large amount of data annotation in the LiDAR
point cloud semantic segmentation (PCSS) task by proposing OPOCA, a weakly supervised …
point cloud semantic segmentation (PCSS) task by proposing OPOCA, a weakly supervised …