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Update license to OpenMDW 1.1

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  1. README.md +4 -2
README.md CHANGED
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  ---
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- license: cc-by-4.0
 
 
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  language:
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  - en
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  size_categories:
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  Previous Version(s): None. <br>
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- **License / terms of use.** Released under the Creative Commons Attribution 4.0 International (CC BY 4.0) license.
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  **Intended usage.** SDG-Warehouse is intended for research and development of physical-AI models — including but not limited to video understanding (action recognition, anomaly and incident detection, multi-camera person re-identification, worker activity recognition), pixel-level perception (monocular depth estimation, instance segmentation, edge prediction, 2D and 3D object detection and tracking), video generation and world modeling (text-to-video, conditional video generation, long-horizon prediction), and policy or planning research that benefits from controllable, reproducible safety-event footage. It is also a useful resource for studying sim-to-real transfer in warehouse and industrial settings, and as a controlled benchmark for evaluating model robustness across viewpoints, lighting, and agent appearance.
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+ license: other
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+ license_name: openmdw-1.1
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+ license_link: https://openmdw.ai/
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  language:
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  - en
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  size_categories:
 
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  Previous Version(s): None. <br>
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+ **License / terms of use.** This dataset is released under the [OpenMDW1.1](https://openmdw.ai/)
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  **Intended usage.** SDG-Warehouse is intended for research and development of physical-AI models — including but not limited to video understanding (action recognition, anomaly and incident detection, multi-camera person re-identification, worker activity recognition), pixel-level perception (monocular depth estimation, instance segmentation, edge prediction, 2D and 3D object detection and tracking), video generation and world modeling (text-to-video, conditional video generation, long-horizon prediction), and policy or planning research that benefits from controllable, reproducible safety-event footage. It is also a useful resource for studying sim-to-real transfer in warehouse and industrial settings, and as a controlled benchmark for evaluating model robustness across viewpoints, lighting, and agent appearance.
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