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19 results

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1. A Survey on Deep Learning Techniques for Stereo-Based Depth Estimation.

2. An automated prediction of remote sensing data of Queensland-Australia for flood and wildfire susceptibility using BISSOA-DBMLA scheme.

3. Deep learning framework with Bayesian data imputation for modelling and forecasting groundwater levels.

4. Advanced extreme learning machines vs. deep learning models for peak wave energy period forecasting: A case study in Queensland, Australia.

5. Forecasting small area populations with long short-term memory networks.

6. Prediction of Water Quality in Reservoirs: A Comparative Assessment of Machine Learning and Deep Learning Approaches in the Case of Toowoomba, Queensland, Australia.

7. A novel approach based on integration of convolutional neural networks and echo state network for daily electricity demand prediction.

8. IRMAC: Interpretable Refined Motifs in Binary Classification for smart grid applications.

9. Optimized Gated Recurrent Unit for Mid-Term Electricity Price Forecasting.

10. Deep learning for pollen allergy surveillance from twitter in Australia.

12. Novel hybrid deep learning model for satellite based PM10 forecasting in the most polluted Australian hotspots.

13. Boosting solar radiation predictions with global climate models, observational predictors and hybrid deep-machine learning algorithms.

14. Dynamic prediction of global monthly burned area with hybrid deep neural networks.

15. Interval Prediction of Photovoltaic Power Using Improved NARX Network and Density Peak Clustering Based on Kernel Mahalanobis Distance.

16. Forecasting Australia's real house price index: A comparison of time series and machine learning methods.

17. Data on Skin Cancer Reported by Researchers at University of Newcastle (A Novel Vision Transformer Model for Skin Cancer Classification).

18. Stacked LSTM Sequence-to-Sequence Autoencoder with Feature Selection for Daily Solar Radiation Prediction: A Review and New Modeling Results.

19. The Impact of Pan-Sharpening and Spectral Resolution on Vineyard Segmentation through Machine Learning.