|  | --- | 
					
						
						|  |  | 
					
						
						|  |  | 
					
						
						|  | language: | 
					
						
						|  | - en | 
					
						
						|  | license: mit | 
					
						
						|  | tags: | 
					
						
						|  | - robotics | 
					
						
						|  | - manipulation | 
					
						
						|  | - rearrangement | 
					
						
						|  | - computer-vision | 
					
						
						|  | - reinforcement-learning | 
					
						
						|  | - imitation-learning | 
					
						
						|  | - rgbd | 
					
						
						|  | - rgb | 
					
						
						|  | - depth | 
					
						
						|  | - low-level-control | 
					
						
						|  | - whole-body-control | 
					
						
						|  | - home-assistant | 
					
						
						|  | - simulation | 
					
						
						|  | - maniskill | 
					
						
						|  | annotations_creators: | 
					
						
						|  | - machine-generated | 
					
						
						|  | language_creators: | 
					
						
						|  | - machine-generated | 
					
						
						|  | language_details: en-US | 
					
						
						|  | pretty_name: ManiSkill-HAB TidyHouse Dataset | 
					
						
						|  | size_categories: | 
					
						
						|  | - 1M<n<10M | 
					
						
						|  |  | 
					
						
						|  | task_categories: | 
					
						
						|  | - robotics | 
					
						
						|  | - reinforcement-learning | 
					
						
						|  | task_ids: | 
					
						
						|  | - grasping | 
					
						
						|  | - task-planning | 
					
						
						|  |  | 
					
						
						|  | configs: | 
					
						
						|  | - config_name: pick-002_master_chef_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/002_master_chef_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/002_master_chef_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-003_cracker_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/003_cracker_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/003_cracker_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-004_sugar_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/004_sugar_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/004_sugar_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-005_tomato_soup_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/005_tomato_soup_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/005_tomato_soup_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-007_tuna_fish_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/007_tuna_fish_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/007_tuna_fish_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-008_pudding_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/008_pudding_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/008_pudding_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-009_gelatin_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/009_gelatin_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/009_gelatin_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-010_potted_meat_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/010_potted_meat_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/010_potted_meat_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: pick-024_bowl | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: pick/024_bowl.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: pick/024_bowl.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-002_master_chef_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/002_master_chef_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/002_master_chef_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-003_cracker_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/003_cracker_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/003_cracker_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-004_sugar_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/004_sugar_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/004_sugar_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-005_tomato_soup_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/005_tomato_soup_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/005_tomato_soup_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-007_tuna_fish_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/007_tuna_fish_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/007_tuna_fish_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-008_pudding_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/008_pudding_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/008_pudding_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-009_gelatin_box | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/009_gelatin_box.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/009_gelatin_box.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-010_potted_meat_can | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/010_potted_meat_can.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/010_potted_meat_can.json | 
					
						
						|  |  | 
					
						
						|  | - config_name: place-024_bowl | 
					
						
						|  | data_files: | 
					
						
						|  | - split: trajectories | 
					
						
						|  | path: place/024_bowl.h5 | 
					
						
						|  | - split: metadata | 
					
						
						|  | path: place/024_bowl.json | 
					
						
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						|  | --- | 
					
						
						|  |  | 
					
						
						|  | # ManiSkill-HAB TidyHouse Dataset | 
					
						
						|  |  | 
					
						
						|  | **[Paper](https://arxiv.org/abs/2412.13211)** | 
					
						
						|  | | **[Website](https://arth-shukla.github.io/mshab)** | 
					
						
						|  | | **[Code](https://github.com/arth-shukla/mshab)** | 
					
						
						|  | | **[Models](https://huggingface.co/arth-shukla/mshab_checkpoints)** | 
					
						
						|  | | **[(Full) Dataset](https://arth-shukla.github.io/mshab/#dataset-section)** | 
					
						
						|  | | **[Supplementary](https://sites.google.com/view/maniskill-hab)** | 
					
						
						|  |  | 
					
						
						|  |  | 
					
						
						|  | <!-- Provide a quick summary of the dataset. --> | 
					
						
						|  |  | 
					
						
						|  | Whole-body, low-level control/manipulation demonstration dataset for ManiSkill-HAB TidyHouse. | 
					
						
						|  |  | 
					
						
						|  | ## Dataset Details | 
					
						
						|  |  | 
					
						
						|  | ### Dataset Description | 
					
						
						|  |  | 
					
						
						|  | <!-- Provide a longer summary of what this dataset is. --> | 
					
						
						|  |  | 
					
						
						|  | Demonstration dataset for ManiSkill-HAB TidyHouse. Each subtask/object combination (e.g pick 002_master_chef_can) has 1000 successful episodes (200 samples/demonstration) gathered using [RL policies](https://huggingface.co/arth-shukla/mshab_checkpoints) fitered for safe robot behavior with a rule-based event labeling system. | 
					
						
						|  |  | 
					
						
						|  | TidyHouse contains the Pick and Place subtasks. Relative to the other MS-HAB long-horizon tasks (PrepareGroceries, SetTable), TidyHouse Pick is approximately medium difficulty, while TidyHouse Place is medium-to-hard difficulty (on a scale of easy-medium-hard). | 
					
						
						|  |  | 
					
						
						|  | ### Related Datasets | 
					
						
						|  |  | 
					
						
						|  | Full information about the MS-HAB datasets (size, difficulty, links, etc), including the other long horizon tasks, are available [on the ManiSkill-HAB website](https://arth-shukla.github.io/mshab/#dataset-section). | 
					
						
						|  |  | 
					
						
						|  | - [ManiSkill-HAB PrepareGroceries Dataset](https://huggingface.co/datasets/arth-shukla/MS-HAB-PrepareGroceries) | 
					
						
						|  | - [ManiSkill-HAB SetTable Dataset](https://huggingface.co/datasets/arth-shukla/MS-HAB-SetTable) | 
					
						
						|  |  | 
					
						
						|  | ## Uses | 
					
						
						|  |  | 
					
						
						|  | <!-- Address questions around how the dataset is intended to be used. --> | 
					
						
						|  |  | 
					
						
						|  | ### Direct Use | 
					
						
						|  |  | 
					
						
						|  | This dataset can be used to train vision-based learning from demonstrations and imitation learning methods, which can be evaluated with the [MS-HAB environments](https://github.com/arth-shukla/mshab). This dataset may be useful as synthetic data for computer vision tasks as well. | 
					
						
						|  |  | 
					
						
						|  | ### Out-of-Scope Use | 
					
						
						|  |  | 
					
						
						|  | While blind state-based policies can be trained on this dataset, it is recommended to train vision-based policies to handle collisions and obstructions. | 
					
						
						|  |  | 
					
						
						|  | ## Dataset Structure | 
					
						
						|  |  | 
					
						
						|  | Each subtask/object combination has files `[SUBTASK]/[OBJECT].json` and `[SUBTASK]/[OBJECT].h5`. The JSON file contains episode metadata, event labels, etc, while the HDF5 file contains the demonstration data. | 
					
						
						|  |  | 
					
						
						|  | ## Dataset Creation | 
					
						
						|  |  | 
					
						
						|  | <!-- TODO (arth): link paper appendix, maybe html, for the event labeling system --> | 
					
						
						|  | The data is gathered using [RL policies](https://huggingface.co/arth-shukla/mshab_checkpoints) fitered for safe robot behavior with a rule-based event labeling system. | 
					
						
						|  |  | 
					
						
						|  | ## Bias, Risks, and Limitations | 
					
						
						|  |  | 
					
						
						|  | <!-- This section is meant to convey both technical and sociotechnical limitations. --> | 
					
						
						|  |  | 
					
						
						|  | The dataset is purely synthetic. | 
					
						
						|  |  | 
					
						
						|  | While MS-HAB supports high-quality ray-traced rendering, this dataset uses ManiSkill's default rendering for data generation due to efficiency. However, users can generate their own data with the [data generation code](https://github.com/arth-shukla/mshab/blob/main/mshab/utils/gen/gen_data.py). | 
					
						
						|  |  | 
					
						
						|  | <!-- TODO (arth): citation --> | 
					
						
						|  | ## Citation | 
					
						
						|  |  | 
					
						
						|  | ``` | 
					
						
						|  | @inproceedings{shukla2025maniskillhab, | 
					
						
						|  | author       = {Arth Shukla and | 
					
						
						|  | Stone Tao and | 
					
						
						|  | Hao Su}, | 
					
						
						|  | title        = {ManiSkill-HAB: {A} Benchmark for Low-Level Manipulation in Home Rearrangement | 
					
						
						|  | Tasks}, | 
					
						
						|  | booktitle    = {The Thirteenth International Conference on Learning Representations, | 
					
						
						|  | {ICLR} 2025, Singapore, April 24-28, 2025}, | 
					
						
						|  | publisher    = {OpenReview.net}, | 
					
						
						|  | year         = {2025}, | 
					
						
						|  | url          = {https://openreview.net/forum?id=6bKEWevgSd}, | 
					
						
						|  | timestamp    = {Thu, 15 May 2025 17:19:05 +0200}, | 
					
						
						|  | biburl       = {https://dblp.org/rec/conf/iclr/ShuklaTS25.bib}, | 
					
						
						|  | bibsource    = {dblp computer science bibliography, https://dblp.org} | 
					
						
						|  | } | 
					
						
						|  | ``` | 
					
						
						|  |  |