Summary: Documentation and files about the Grounded QA component, as part of the GUT-AI Initiative.
Table of Contents
The purpose of this component is to perform Grounded Question Answering (Grounded QA) by applying Grounded Cognition on QA tasks on multiple mobile robots or multiple aerial robots (drones) or a combination of them using Multimodal Learning (i.e. visuo-linguistic abilities)
- Kourouklides, I. (2022). Bayesian Deep Multi-Agent Multimodal Reinforcement Learning for Embedded Systems in Games, Natural Language Processing and Robotics. OSF Preprints. https://doi.org/10.31219/osf.io/sjrkh
See References.
Thanks to OSF (by the Center for Open Science), the project is temporarily hosted at:
Project identifier: https://doi.org/10.17605/OSF.IO/8FRXM
This component depends on the following components of GUT-AI:
See Simulators.
See Datasets.
See Model Zoos.
- Community Discord for collaboration and discussion.
If you want to do so, feel free to cite this component in your publications:
@article{kourouklides2022gqa, author = {Ioannis Kourouklides}, journal = {OSF Preprints}, title = {Grounded QA}, year = {2022}, doi = {10.17605/osf.io/8frxm}, license = {Creative Commons Zero CC0 1.0} }