Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks

Uncertainties in the real world mean that is impossible for system designers to anticipate and explicitly design for all scenarios that a robot might encounter. Thus, robots designed like this are fragile and fail outside of highly-controlled environments. Causal models provide a principled framewor...

Full description

Bibliographic Details
Main Authors: Cannizzaro, R, Routley, J, Kunze, L
Format: Internet publication
Language:English
Published: 2023
_version_ 1797112862616846336
author Cannizzaro, R
Routley, J
Kunze, L
author_facet Cannizzaro, R
Routley, J
Kunze, L
author_sort Cannizzaro, R
collection OXFORD
description Uncertainties in the real world mean that is impossible for system designers to anticipate and explicitly design for all scenarios that a robot might encounter. Thus, robots designed like this are fragile and fail outside of highly-controlled environments. Causal models provide a principled framework to encode formal knowledge of the causal relationships that govern the robot's interaction with its environment, in addition to probabilistic representations of noise and uncertainty typically encountered by real-world robots. Combined with causal inference, these models permit an autonomous agent to understand, reason about, and explain its environment. In this work, we focus on the problem of a robot block-stacking task due to the fundamental perception and manipulation capabilities it demonstrates, required by many applications including warehouse logistics and domestic human support robotics. We propose a novel causal probabilistic framework to embed a physics simulation capability into a structural causal model to permit robots to perceive and assess the current state of a block-stacking task, reason about the next-best action from placement candidates, and generate post-hoc counterfactual explanations. We provide exemplar next-best action selection results and outline planned experimentation in simulated and real-world robot block-stacking tasks.
first_indexed 2024-04-09T03:55:33Z
format Internet publication
id oxford-uuid:e7a4eebd-1e21-4296-b96a-0873a39014b9
institution University of Oxford
language English
last_indexed 2024-04-09T03:55:33Z
publishDate 2023
record_format dspace
spelling oxford-uuid:e7a4eebd-1e21-4296-b96a-0873a39014b92024-03-07T15:52:14ZTowards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasksInternet publicationhttp://purl.org/coar/resource_type/c_7ad9uuid:e7a4eebd-1e21-4296-b96a-0873a39014b9EnglishSymplectic Elements2023Cannizzaro, RRoutley, JKunze, LUncertainties in the real world mean that is impossible for system designers to anticipate and explicitly design for all scenarios that a robot might encounter. Thus, robots designed like this are fragile and fail outside of highly-controlled environments. Causal models provide a principled framework to encode formal knowledge of the causal relationships that govern the robot's interaction with its environment, in addition to probabilistic representations of noise and uncertainty typically encountered by real-world robots. Combined with causal inference, these models permit an autonomous agent to understand, reason about, and explain its environment. In this work, we focus on the problem of a robot block-stacking task due to the fundamental perception and manipulation capabilities it demonstrates, required by many applications including warehouse logistics and domestic human support robotics. We propose a novel causal probabilistic framework to embed a physics simulation capability into a structural causal model to permit robots to perceive and assess the current state of a block-stacking task, reason about the next-best action from placement candidates, and generate post-hoc counterfactual explanations. We provide exemplar next-best action selection results and outline planned experimentation in simulated and real-world robot block-stacking tasks.
spellingShingle Cannizzaro, R
Routley, J
Kunze, L
Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title_full Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title_fullStr Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title_full_unstemmed Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title_short Towards a causal probabilistic framework for prediction, action-selection & explanations for robot block-stacking tasks
title_sort towards a causal probabilistic framework for prediction action selection explanations for robot block stacking tasks
work_keys_str_mv AT cannizzaror towardsacausalprobabilisticframeworkforpredictionactionselectionexplanationsforrobotblockstackingtasks
AT routleyj towardsacausalprobabilisticframeworkforpredictionactionselectionexplanationsforrobotblockstackingtasks
AT kunzel towardsacausalprobabilisticframeworkforpredictionactionselectionexplanationsforrobotblockstackingtasks