计算机科学
多样性(控制论)
联营
对抗制
生成语法
序列(生物学)
运动(物理)
人工智能
鉴别器
机器学习
机器人
骨料(复合)
透视图(图形)
弹道
生成模型
人机交互
探测器
生物
电信
物理
遗传学
复合材料
材料科学
天文
作者
Agrim Gupta,Justin Johnson,Li Fei-Fei,Silvio Savarese,Alexandre Alahi
标识
DOI:10.1109/cvpr.2018.00240
摘要
Understanding human motion behavior is critical for autonomous moving platforms (like self-driving cars and social robots) if they are to navigate human-centric environments. This is challenging because human motion is inherently multimodal: given a history of human motion paths, there are many socially plausible ways that people could move in the future. We tackle this problem by combining tools from sequence prediction and generative adversarial networks: a recurrent sequence-to-sequence model observes motion histories and predicts future behavior, using a novel pooling mechanism to aggregate information across people. We predict socially plausible futures by training adversarially against a recurrent discriminator, and encourage diverse predictions with a novel variety loss. Through experiments on several datasets we demonstrate that our approach outperforms prior work in terms of accuracy, variety, collision avoidance, and computational complexity.
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