Two-step Constructive Approaches for Dungeon Generation

Green, Michael Cerny, Khalifa, Ahmed, Alsoughayer, Athoug, Surana, Divyesh, Liapis, Antonios, Togelius, Julian

arXiv.org Artificial Intelligence 

This paper presents a two-step generative approach for creating While research on level generation focuses on level generators dungeons in the rogue-like puzzle game MiniDungeons 2. Generation based on stochastic search [14], constraint solving [11, 12], or machine is split into two steps, initially producing the architectural learning [13], level generation in published games is mostly layout of the level as its walls and floor tiles, and then furnishing it carried out via constructive algorithms. Unlike generate-and-test with game objects representing the player's start and goal position, processes, constructive generators do not evaluate and regenerate challenges and rewards. Three layout creators and three furnishers output; for example, cellular automata and grammars can be used are introduced in this paper, which can be combined in different for constructive generation, as well as more freeform approaches ways in the two-step generative process for producing diverse dungeons such as diggers [10]. Such generators are computationally lightweight levels. Layout creators generate the floors and walls of a level, since they do not evaluate their generated output. This while furnishers populate it with monsters, traps, and treasures.

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