论文标题
想象力的深度学习以实现目标识别
Imagination-Augmented Deep Learning for Goal Recognition
论文作者
论文摘要
能够推断我们观察,与之互动或阅读故事的人的目标是人类智能的标志之一。当前目标识别研究中的一个重要想法是,从对计划成本的估计到代理商可能实现的不同目标,推断了代理人目标的可能性。不同的方法仅依靠手工制作的符号表示来实现这一想法。但是,它们在现实世界中的应用非常有限,主要是因为提取影响目标行为的因素仍然是一项复杂的任务。在本文中,我们介绍了一种新颖的想法,即使用符号规划师来计算计划成本的见解,从而增强具有想象力的深层神经网络,从而提高了实际和合成领域的目标识别准确性,而与符号识别器相比或仅具有深度学习的目标识别器相比。
Being able to infer the goal of people we observe, interact with, or read stories about is one of the hallmarks of human intelligence. A prominent idea in current goal-recognition research is to infer the likelihood of an agent's goal from the estimations of the costs of plans to the different goals the agent might have. Different approaches implement this idea by relying only on handcrafted symbolic representations. Their application to real-world settings is, however, quite limited, mainly because extracting rules for the factors that influence goal-oriented behaviors remains a complicated task. In this paper, we introduce a novel idea of using a symbolic planner to compute plan-cost insights, which augment a deep neural network with an imagination capability, leading to improved goal recognition accuracy in real and synthetic domains compared to a symbolic recognizer or a deep-learning goal recognizer alone.