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--- |
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task_categories: |
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- other |
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tags: |
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- human-activity-recognition |
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- sensor-data |
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- time-series |
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- out-of-distribution |
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--- |
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# HAROOD: A Benchmark for Out-of-distribution Generalization in Sensor-based Human Activity Recognition |
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[**Paper**](https://huggingface.co/papers/2512.10807) | [**GitHub Repository**](https://github.com/AIFrontierLab/HAROOD) |
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HAROOD is a modular and reproducible benchmark framework for studying generalization in sensor-based human activity recognition (HAR). It unifies preprocessing pipelines, standardizes four realistic OOD scenarios (cross-person, cross-position, cross-dataset, and cross-time), and implements 16 representative algorithms across CNN and Transformer architectures. |
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## Key Features |
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- **6 public HAR datasets** unified under a single framework. |
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- **5 realistic OOD scenarios**: cross-person, cross-position, cross-dataset, cross-time, and cross-device. |
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- **16 generalization algorithms** spanning Data Manipulation, Representation Learning, and Learning Strategies. |
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- **Backbone support**: Includes both CNN and Transformer-based architectures. |
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- **Standardized splits**: Provides train/val/test model selection protocols. |
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## Usage |
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The benchmark is designed to be modular. Below are examples of how to run experiments using the official implementation: |
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### Run with a YAML config |
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```python |
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from core import train |
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results = train(config='./config/experiment.yaml') |
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``` |
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### Run with a Python dict |
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```python |
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from core import train |
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config_dict = { |
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'algorithm': 'CORAL', |
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'batch_size': 32, |
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} |
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results = train(config=config_dict) |
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``` |
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### Override parameters |
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```python |
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from core import train |
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results = train( |
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config='./config/experiment.yaml', |
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lr=2e-3, |
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max_epoch=200, |
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) |
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``` |
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## Supported Algorithms |
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The benchmark implements 16 algorithms across three main categories: |
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- **Data Manipulation**: Mixup, DDLearn. |
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- **Representation Learning**: ERM, DANN, CORAL, MMD, VREx, LAG. |
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- **Learning Strategy**: MLDG, RSC, GroupDRO, ANDMask, Fish, Fishr, URM, ERM++. |
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## Citation |
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If you use HAROOD in your research, please cite the following paper: |
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```bibtex |
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@inproceedings{lu2026harood, |
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title={HAROOD: A Benchmark for Out-of-distribution Generalization in Sensor-based Human Activity Recognition}, |
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author={Lu, Wang and Zhu, Yao and Wang, Jindong}, |
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booktitle={The 32rd ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD)}, |
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year={2026} |
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} |
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``` |