Alsaleh et al., 2021 - Google Patents
Markov-game modeling of cyclist-pedestrian interactions in shared spaces: A multi-agent adversarial inverse reinforcement learning approachAlsaleh et al., 2021
- Document ID
- 11201580330666881555
- Author
- Alsaleh R
- Sayed T
- Publication year
- Publication venue
- Transportation research part C: emerging technologies
External Links
Snippet
Understanding and modeling road user dynamics and their microscopic interaction behaviour at shared space facilities are curial for several applications including safety and performance evaluations. Despite the multi-agent nature of road user interactions, the …
- 230000003993 interaction 0 title abstract description 117
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