Title :
Self-Adaptive Probabilistic Roadmap Generation for Intelligent Virtual Agents
Author :
Samperi, Katrina ; Bencomo, Nelly ; Lewis, Peter R.
Author_Institution :
Sch. of Eng. & Appl. Sci., Aston Univ., Birmingham, UK
Abstract :
Agents inhabiting large scale environments are faced with the problem of generating maps by which they can navigate. One solution to this problem is to use probabilistic roadmaps which rely on selecting and connecting a set of points that describe the interconnectivity of free space. However, the time required to generate these maps can be prohibitive, and agents do not typically know the environment in advance. In this paper we show that the optimal combination of different point selection methods used to create the map is dependent on the environment, no point selection method dominates. This motivates a novel self-adaptive approach for an agent to combine several point selection methods. The success rate of our approach is comparable to the state of the art and the generation cost is substantially reduced. Self-adaptation therefore enables a more efficient use of the agent´s resources. Results are presented for both a set of archetypal scenarios and large scale virtual environments based in Second Life, representing real locations in London.
Keywords :
cartography; probability; software agents; virtual reality; Second Life; agent resources; free space interconnectivity; generation cost; intelligent virtual agents; large scale environments; large scale virtual environments; point selection methods; self-adaptation; self-adaptive probabilistic roadmap generation; Avatars; Face; Measurement; Navigation; Probabilistic logic; Second Life; Virtual environments; Map generation; Probabilistic Roadmaps; Route planning; Self-adaptive agents; Trails; Virtual Environments;
Conference_Titel :
Self-Adaptive and Self-Organizing Systems (SASO), 2014 IEEE Eighth International Conference on
Conference_Location :
London
DOI :
10.1109/SASO.2014.25