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Where Will They Go? Predicting Fine-Grained Adversarial Multi-agent Motion Using Conditional Variational Autoencoders

机译:他们会去哪里?使用条件变分自动编码器预测细粒度的对抗多主体运动

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Simultaneously and accurately forecasting the behavior of many interacting agents is imperative for computer vision applications to be widely deployed (e.g., autonomous vehicles, security, surveillance, sports). In this paper, we present a technique using conditional variational autoencoder which learns a model that "personalizes" prediction to individual agent behavior within a group representation. Given the volume of data available and its adversarial nature, we focus on the sport of basketball and show that our approach efficiently predicts context-specific agent motions. We find that our model generates results that are three times as accurate as previous state of the art approaches (5.74ft vs. 17.95ft).
机译:同时且准确地预测许多交互代理的行为对于广泛部署计算机视觉应用(例如自动驾驶汽车,安全性,监视,运动)至关重要。在本文中,我们提出了一种使用条件变分自动编码器的技术,该技术可学习一种模型,该模型可“个性化”对组表示形式内个体行为的预测。考虑到可用的数据量及其对抗性,我们将重点放在篮球运动上,并证明我们的方法有效地预测了特定情境下的特工动作。我们发现,我们的模型产生的结果准确度是以前的最新方法的三倍(5.74英尺对17.95英尺)。

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