language:
- en
tags:
- multimodal-learning
Dataset Card for TST-ProcTHOR
Dataset Description
- Homepage: https://tst-vision.epfl.ch
- Repository: TST official repository
- Paper: Arxiv
Dataset Summary
This custom TST-ProcTHOR dataset is used in research work "Multimodality as Supervision: Self-Supervised Specialization to the Test Environment via Multimodality".
pretrain/is a multimodal pretraining dataset collected using ProcTHOR environment. It contains RGB images, and 9 additional tokenized modalities.segmentation/trainis the associated downstream dataset used to finetune TST pretrained models on semantic segmentation tasks.segmentation/testcontains the test dataset used for evaluation/testing on semantic segmentation task. This data corresponds to samples obtained from the test-space itself.captioning/trainis the associated downstream dataset used to finetune TST pretrained models on captioning task.captioning/testcontains the test dataset used for evaluation/testing on captioning task. This data corresponds to samples obtained from the test-space itself.
Dataset Structure
TST-ProcTHOR/
├── pretrain/
│ ├── test_spaces/
│ │ ├── crop_settings/ # Contains .tar shards
│ │ ├── det/ # Contains .tar shards
│ │ ├── rgb/ # Contains .tar shards
│ │ ├── tok_canny_edge@224/ # Contains .tar shards
│ │ ├── ... # More tokenized feature directories
│ │ └── tok_semseg@224/ # Contains .tar shards
│ └── transfer/
│ ├── crop_settings/ # Contains .tar shards
│ ├── det/ # Contains .tar shards
│ ├── rgb/ # Contains .tar shards
│ ├── tok_canny_edge@224/ # Contains .tar shards
│ ├── ... # More tokenized feature directories
│ └── tok_semseg@224/ # Contains .tar shards
├── segmentation/
│ ├── train/ # Training data for segmentation
│ └── test/ # Test data for segmentation
├── captioning/
│ ├── train/ # Training data for captioning
│ └── test/ # Test data for captioning
└── README.md
Dataset Creation
It includes procedurally generated house-like environments. We use 5 procedurally generated houses as our test space. Dataset is collected by randomly sample various agent x, y, z positions and orientations along its axis in the test space, and collect RGB-D images at these points.
Source Data
Dataset is collected from ProcTHOR simulator.
Citation Information
@inproceedings{singh2026tst,
title={Multimodality as Supervision: Self-Supervised Specialization to the Test Environment via Multimodality},
author={Kunal Pratap Singh and Ali Garjani and Rishubh Singh and Muhammad Uzair Khattak and Efe Tarhan and Jason Toskov and Andrei Atanov and O{\u{g}}uzhan Fatih Kar and Amir Zamir},
booktitle={International Conference on Learning Representations (ICLR)},
year={2026}
}