Info: Zenodo’s user support line is staffed on regular business days between Dec 23 and Jan 5. Response times may be slightly longer than normal.

Published April 16, 2021 | Version v1
Conference paper Open

An Agent-based Architecture for AI-Enhanced Automated Testing for XR Systems, a Short Paper

  • 1. Utrecht University
  • 2. INESC-ID and Instituto Superior Técnico, Univ. de Lisboa

Description

This short paper presents an architectural overview of an agent-based framework called iv4XR for automated testing that is currently under development by an H2020 project with the same name.  The framework's intended main use case of is testing the family of Extended Reality (XR) based systems (e.g. 3D games, VR sytems, AR systems), though the approach can indeed be adapted to target other types of interactive systems. The framework is unique in that it is an agent-based system. Agents are inherently reactive, and therefore are arguably a natural match to deal with interactive systems. Moreover, it is also a natural vessel for mounting and combining different AI capabilities, e.g. reasoning, navigation, and learning.

Files

An_Agent_based_Architecture_for_AI_Enhanced_Automated_Testing.pdf

Files (683.8 kB)

Additional details

Funding

iv4XR – Intelligent Verification/Validation for Extended Reality Based Systems 856716
European Commission