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Deep Attention-based Sequential Ensemble Learning for BLE-Based Indoor Localization in Care Facilities

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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).

Minh Triet Pham, Quynh Chi Dang, Le Nhat Tan• 2026

Related benchmarks

TaskDatasetResultRank
Indoor LocalizationABC challenge dataset Fold 1 2026 (Day 4)
Macro F151.14
4
Indoor LocalizationABC challenge Fold 2 2026 (Day 3)
Macro F142.07
4
Indoor LocalizationABC challenge dataset Fold 3 2026 (Day 2)
Macro F143.4
4
Indoor LocalizationABC Challenge 2026 (Fold 4 Day 1)
Macro F140.82
4
Indoor LocalizationABC challenge 2026 (4-fold cross-val)
Mean Macro F144.38
4
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