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license: cc-by-4.0 |
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# Dataset Card for MPI3D-complex |
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## Dataset Description |
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The **MPI3D-complex dataset** is a **real-world image dataset** of **complex everyday objects**, designed for benchmarking algorithms in **disentangled representation learning** and **robustness to object variability**. It is an **extension** of the broader MPI3D dataset suite, which also includes [synthetic toy](https://huggingface.co/datasets/randall-lab/mpi3d-toy), [realistic simulated](https://huggingface.co/datasets/randall-lab/mpi3d-realistic), and [real-world geometric shape](https://huggingface.co/datasets/randall-lab/mpi3d-real) variants. |
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The **complex version** was recorded using the same **robotic platform** as the other MPI3D datasets, but with a new set of **real-world objects** (coffee-cup, tennis-ball, croissant, beer-cup) and a reduced color set. Images were captured using **real cameras**, with realistic lighting and background conditions. This allows researchers to assess how well models trained on simpler domains generalize to more complex object appearances. |
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All images depict **real-world objects** under **controlled variations of 7 known factors**: |
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- Object color (4 values) |
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- Object shape (4 values) |
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- Object size (2 values) |
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- Camera height (3 values) |
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- Background color (3 values) |
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- Robotic arm horizontal axis (40 values) |
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- Robotic arm vertical axis (40 values) |
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The dataset contains **460,800 images** at a resolution of **64×64 pixels**. The factors of variation are consistent with the other MPI3D datasets, but with **different factor sizes** for object shape and color. |
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## Dataset Source |
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- **Homepage**: [https://github.com/rr-learning/disentanglement_dataset](https://github.com/rr-learning/disentanglement_dataset) |
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- **License**: [Creative Commons Attribution 4.0 International](https://creativecommons.org/licenses/by/4.0/) |
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- **Paper**: Muhammad Waleed Gondal et al. _On the Transfer of Inductive Bias from Simulation to the Real World: A New Disentanglement Dataset_. NeurIPS 2019. |
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## Dataset Structure |
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|Factors|Possible Values| |
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|---|---| |
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|object_color|yellow=0, green=1, olive=2, red=3| |
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|object_shape|coffee-cup=0, tennis-ball=1, croissant=2, beer-cup=3| |
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|object_size|small=0, large=1| |
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|camera_height|top=0, center=1, bottom=2| |
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|background_color|purple=0, sea green=1, salmon=2| |
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|horizontal_axis (DOF1)|0,...,39| |
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|vertical_axis (DOF2)|0,...,39| |
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Each image corresponds to a unique combination of these 7 factors. The images are stored in a **row-major order** (fastest-changing factor is `vertical_axis`, slowest-changing factor is `object_color`). |
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### Why no train/test split? |
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The MPI3D-complex dataset does not provide an official train/test split. It is designed for **representation learning research** and for testing **robustness to object complexity and appearance variation**. Since the dataset is a complete Cartesian product of all factor combinations, models typically require access to the full dataset to explore factor-wise variations. |
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## Example Usage |
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Below is a quick example of how to load this dataset via the Hugging Face Datasets library: |
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```python |
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from datasets import load_dataset |
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# Load the dataset |
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dataset = load_dataset("randall-lab/mpi3d-complex", split="train", trust_remote_code=True) |
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# Access a sample from the dataset |
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example = dataset[0] |
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image = example["image"] |
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label = example["label"] # [object_color: 0, object_shape: 0, object_size: 0, camera_height: 0, background_color: 0, horizontal_axis: 0, vertical_axis: 0] |
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color = example["color"] # 0 |
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shape = example["shape"] # 0 |
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size = example["size"] # 0 |
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height = example["height"] # 0 |
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background = example["background"] # 0 |
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dof1 = example["dof1"] # 0 |
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dof2 = example["dof2"] # 0 |
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image.show() # Display the image |
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print(f"Label (factors): {label}") |
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``` |
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If you are using colab, you should update datasets to avoid errors |
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``` |
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pip install -U datasets |
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``` |
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## Citation |
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``` |
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@article{gondal2019transfer, |
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title={On the transfer of inductive bias from simulation to the real world: a new disentanglement dataset}, |
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author={Gondal, Muhammad Waleed and Wuthrich, Manuel and Miladinovic, Djordje and Locatello, Francesco and Breidt, Martin and Volchkov, Valentin and Akpo, Joel and Bachem, Olivier and Sch{\"o}lkopf, Bernhard and Bauer, Stefan}, |
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journal={Advances in Neural Information Processing Systems}, |
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volume={32}, |
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year={2019} |
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} |
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``` |