Adaptive and intelligent robot task planning for home service: A review
H Li, X Ding - Engineering Applications of Artificial Intelligence, 2023 - Elsevier
The uncertainty and dynamic of home environment present great challenges to the task
planning of service robots. The nature of the home environment is highly unstructured, with a …
planning of service robots. The nature of the home environment is highly unstructured, with a …
Peorl: Integrating symbolic planning and hierarchical reinforcement learning for robust decision-making
Reinforcement learning and symbolic planning have both been used to build intelligent
autonomous agents. Reinforcement learning relies on learning from interactions with real …
autonomous agents. Reinforcement learning relies on learning from interactions with real …
Reasoning with scene graphs for robot planning under partial observability
Robot planning in partially observable domains is difficult, because a robot needs to
estimate the current state and plan actions at the same time. When the domain includes …
estimate the current state and plan actions at the same time. When the domain includes …
REBA: A refinement-based architecture for knowledge representation and reasoning in robotics
This article describes REBA, a knowledge representation and reasoning architecture for
robots that is based on tightly-coupled transition diagrams of the domain at two different …
robots that is based on tightly-coupled transition diagrams of the domain at two different …
A survey of knowledge-based sequential decision-making under uncertainty
Abstract Reasoning with declarative knowledge (RDK) and sequential decision-making
(SDM) are two key research areas in artificial intelligence. RDK methods reason with …
(SDM) are two key research areas in artificial intelligence. RDK methods reason with …
Multimodal embodied attribute learning by robots for object-centric action policies
Robots frequently need to perceive object attributes, such as red, heavy, and empty, using
multimodal exploratory behaviors, such as look, lift, and shake. One possible way for robots …
multimodal exploratory behaviors, such as look, lift, and shake. One possible way for robots …
Robot representation and reasoning with knowledge from reinforcement learning
Reinforcement learning (RL) agents aim at learning by interacting with an environment, and
are not designed for representing or reasoning with declarative knowledge. Knowledge …
are not designed for representing or reasoning with declarative knowledge. Knowledge …
Knowledge-based hierarchical POMDPs for task planning
The main goal in task planning is to build a sequence of actions that takes an agent from an
initial state to a goal state. In robotics, this is particularly difficult because actions usually …
initial state to a goal state. In robotics, this is particularly difficult because actions usually …
Hybrid conditional planning for robotic applications
Robots who have partial observability of and incomplete knowledge about their
environments may have to consider contingencies while planning, and thus necessitate …
environments may have to consider contingencies while planning, and thus necessitate …
Semantic task planning for service robots in open worlds
G Cui, W Shuai, X Chen - Future Internet, 2021 - mdpi.com
This paper presents a planning system based on semantic reasoning for a general-purpose
service robot, which is aimed at behaving more intelligently in domains that contain …
service robot, which is aimed at behaving more intelligently in domains that contain …