17 results on '"Cheng, Xijie"'
Search Results
2. KSTAGE: A knowledge-guided spatial-temporal attention graph learning network for crop yield prediction
3. An improved categorical cross entropy for remote sensing image classification based on noisy labels
4. Enhanced contextual representation with deep neural networks for land cover classification based on remote sensing images
5. Improved Categorical Cross-Entropy Loss for Training Deep Neural Networks with Noisy Labels
6. Exploring multiple crowdsourced data to learn deep convolutional neural networks for road extraction
7. Crop yield prediction from multi-spectral, multi-temporal remotely sensed imagery using recurrent 3D convolutional neural networks
8. Multi-Scale Attention Network for Building Extraction from High-Resolution Remote Sensing Images
9. Improved Categorical Cross-Entropy Loss for Training Deep Neural Networks with Noisy Labels
10. MSCANet: multiscale context information aggregation network for Tibetan Plateau lake extraction from remote sensing images
11. Corrigendum to “Exploring multiple crowdsourced data to learn deep convolutional neural networks for road extraction” [Int. J. Appl. Earth Observ. Geoinf. 104 (2021) 102544]
12. Multi-view Graph Convolutional Network with Spectral Component Decompose for Remote Sensing Images Classification
13. LR‐RoadNet: A long‐range context‐aware neural network for road extraction via high‐resolution remote sensing images
14. Robust Deep Neural Networks for Road Extraction From Remote Sensing Images
15. Exploiting Hierarchical Features for Crop Yield Prediction Based on 3-D Convolutional Neural Networks and Multikernel Gaussian Process
16. Exploring Label Probability Sequence to Robustly Learn Deep Convolutional Neural Networks for Road Extraction with Noisy Datasets
17. Object Extraction From Very High-Resolution Images Using a Convolutional Neural Network Based on a Noisy Large-Scale Dataset
Catalog
Books, media, physical & digital resources
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.