核心概念
Assessing the impact of missing data on Earth observation model predictions.
要約
The content delves into the assessment of missing data's impact on model predictions for Earth observation applications. It covers various datasets, classification and regression tasks, and different methods' predictive quality when faced with missing data scenarios. The study highlights the importance of certain views, such as optical, and provides insights into techniques to mitigate the negative effects of missing data.
Structure:
- Abstract:
- EO applications commonly use machine learning models.
- Assessing impact of missing EO sources on trained models.
- Ensemble strategy shows robustness up to 100%.
- Introduction:
- Importance of multiple data sources in EO solutions.
- Challenges due to unavailability of data sources like noise or satellite failures.
- Multi-View Learning and Missing Views:
- Explanation of multi-view learning models with different fusion strategies.
- Evaluation:
- Description of datasets used in the study.
- Experiment Settings:
- Details about normalization, encoding, network architectures, and evaluation metrics used in experiments.
- Missing View Scenarios:
- Different degrees of missingness scenarios explored in the study.
- Experiment Results:
- Predictive quality results for classification and regression tasks under various missing view scenarios.
- Conclusion:
- Summary of findings regarding the impact of missing views on MVL models.
統計
"The Ensemble strategy achieves a prediction robustness up to 100%."
"The optical view is the most critical view when it is missing individually."
"Some MVL models are adapted to missing views by a dynamic fusion."
引用
"There are different situations in which data sources may not be available."
"We showed that missing specific views (such as optical) significantly affects the predictive quality."
"Ancillary data, like static and weather views, still provide valuable information to MVL models."