Deep Attention-based Sequential Ensemble Learning for BLE-Based Indoor Localization in Care Facilities
About
Indoor localization systems in care facilities enable optimization of staff allocation, workload management, and quality of care delivery. Traditional machine learning approaches to Bluetooth Low Energy (BLE)-based localization treat each temporal measurement as an independent observation, fundamentally limiting their performance. To address this limitation, this paper introduces Deep Attention-based Sequential Ensemble Learning (DASEL), a novel framework that reconceptualizes indoor localization as a sequential learning problem. The framework integrates frequency-based feature engineering, bidirectional GRU networks with attention mechanisms, multi-directional sliding windows, and confidence-weighted temporal smoothing to capture human movement trajectories. Evaluated on real-world data from a care facility using 4-fold temporal cross-validation, DASEL achieves a macro F1 score of 0.4438, representing a 53.1% improvement over the best traditional baseline (0.2898).
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Indoor Localization | ABC challenge dataset Fold 1 2026 (Day 4) | Macro F151.14 | 4 | |
| Indoor Localization | ABC challenge Fold 2 2026 (Day 3) | Macro F142.07 | 4 | |
| Indoor Localization | ABC challenge dataset Fold 3 2026 (Day 2) | Macro F143.4 | 4 | |
| Indoor Localization | ABC Challenge 2026 (Fold 4 Day 1) | Macro F140.82 | 4 | |
| Indoor Localization | ABC challenge 2026 (4-fold cross-val) | Mean Macro F144.38 | 4 |