Corpus ID: 202614720

Project Proposal : Deep Learning AI for Racing Games

@inproceedings{Capo2018ProjectP,
  title={Project Proposal : Deep Learning AI for Racing Games},
  author={Emilio Capo},
  year={2018}
}
  • Emilio Capo
  • Published 2018
  • This is especially true in racing games, where AI is typically provided with a simplified physics and vehicle model with respect to the ones the players is subject to. This leads to noticeable incoherencies, such as opponents overcoming physical limitations under the same conditions as the player. Moreover, these agents also struggle with handling adversarial contexts with different computer-controlled cars, which are usually solved through heuristics. 

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