期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
用于学习和解释行人预期行为的群体交互场
1
作者 Xueyang Wang Xuecheng Chen +6 位作者 Puhua Jiang Haozhe Lin Xiaoyun Yuan Mengqi Ji Yuchen Guo ruqi huang Lu Fang 《Engineering》 SCIE EI CAS CSCD 2024年第3期70-82,共13页
Anticipating others’actions is innate and essential in order for humans to navigate and interact well with others in dense crowds.This ability is urgently required for unmanned systems such as service robots and self... Anticipating others’actions is innate and essential in order for humans to navigate and interact well with others in dense crowds.This ability is urgently required for unmanned systems such as service robots and self-driving cars.However,existing solutions struggle to predict pedestrian anticipation accurately,because the influence of group-related social behaviors has not been well considered.While group relationships and group interactions are ubiquitous and significantly influence pedestrian anticipation,their influence is diverse and subtle,making it difficult to explicitly quantify.Here,we propose the group interaction field(GIF),a novel group-aware representation that quantifies pedestrian anticipation into a probability field of pedestrians’future locations and attention orientations.An end-to-end neural network,GIFNet,is tailored to estimate the GIF from explicit multidimensional observations.GIFNet quantifies the influence of group behaviors by formulating a group interaction graph with propagation and graph attention that is adaptive to the group size and dynamic interaction states.The experimental results show that the GIF effectively represents the change in pedestrians’anticipation under the prominent impact of group behaviors and accurately predicts pedestrians’future states.Moreover,the GIF contributes to explaining various predictions of pedestrians’behavior in different social states.The proposed GIF will eventually be able to allow unmanned systems to work in a human-like manner and comply with social norms,thereby promoting harmonious human-machine relationships. 展开更多
关键词 Human behavior modeling and prediction Implicit representation of pedestrian ANTICIPATION Group interaction Graph neural network
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部