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Home/Authors/Qingwen Pu

Qingwen Pu

1 indexed paper

Recent (6 mo)
1
With code
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Publications per year

1
26

Top categories

AI×1

Frequent co-authors

Kun Xie1×
Hong Yang1×
Di Yang1×
Junqing Wang1×

Research Timeline

2026
Modeling Vehicle-Type-Specific Pedestrian Crash Avoidance Behavior in Safety-Critical Interactions Using Smooth-Mamba Deep Reinforcement Learning

The paper develops a novel deep reinforcement learning framework, SMamba-DDPG, to accurately model vehicle-type-specific pedestrian crash avoidance behavior, finding that pedestrians react faster and more cautiously to automated vehicles (AVs) than to human-driven vehicles (HDVs).

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Papers

cs.AIRecentMay 27, 2026

Modeling Vehicle-Type-Specific Pedestrian Crash Avoidance Behavior in Safety-Critical Interactions Using Smooth-Mamba Deep Reinforcement Learning

Qingwen Pu, Kun Xie, Hong Yang, Di Yang +1 more

The paper develops a novel deep reinforcement learning framework, SMamba-DDPG, to accurately model vehicle-type-specific pedestrian crash avoidance behavior, finding that pedestrians react faster and…

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