19 results on '"Qian, Xiaohua"'
Search Results
2. A Generalizable Causal-Invariance-Driven Segmentation Model for Peripancreatic Vessels
3. Generalizable Pancreas Segmentation via a Dual Self-Supervised Learning Framework
4. Diagnosis of Glioblastoma Multiforme Progression via Interpretable Structure-Constrained Graph Neural Networks
5. A Causality-driven Graph Convolutional Network for Postural Abnormality Diagnosis in Parkinsonians
6. Causality-Driven Graph Neural Network for Early Diagnosis of Pancreatic Cancer in Non-Contrast Computerized Tomography
7. Generalizable Pancreas Segmentation Modeling in CT Imaging via Meta-Learning and Latent-Space Feature Flow Generation
8. A Contrastive Graph Convolutional Network for Toe-Tapping Assessment in Parkinson’s Disease
9. A Self-Supervised Metric Learning Framework for the Arising-From-Chair Assessment of Parkinsonians With Graph Convolutional Networks
10. Utilizing GCN and Meta-Learning Strategy in Unsupervised Domain Adaptation for Pancreatic Cancer Segmentation
11. Multi-Scale Sparse Graph Convolutional Network For the Assessment of Parkinsonian Gait
12. Auto-Metric Graph Neural Network Based on a Meta-Learning Strategy for the Diagnosis of Alzheimer's Disease
13. Combined Spiral Transformation and Model-Driven Multi-Modal Deep Learning Scheme for Automatic Prediction of TP53 Mutation in Pancreatic Cancer
14. Model-driven Deep Learning Method for Pancreatic Cancer Segmentation Based on Spiral-transformation
15. Sparse Adaptive Graph Convolutional Network for Leg Agility Assessment in Parkinson’s Disease
16. Generating Stereoscopic Images With Convergence Control Ability From a Light Field Image Pair
17. Depth Estimation From a Light Field Image Pair With a Generative Model
18. Cascaded Hidden Space Feature Mapping, Fuzzy Clustering, and Nonlinear Switching Regression on Large Datasets
19. supp1-3163959.pdf
Catalog
Books, media, physical & digital resources
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.