王者之剑:鼓励和评估具身探索

Hao Zhu, Raghav Kapoor, So Yeon Min, Winson Han, Jiatai Li, Kaiwen Geng, Graham Neubig, Yonatan Bisk, Aniruddha Kembhavi, Luca Weihs
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引用次数: 1

摘要

经验先于理解。人类出于好奇,不断探索和了解周围的环境,收集信息,更新自己的世界模型。另一方面,机器要么被训练被动地从静态和固定的数据集中学习,要么被教导完成特定的目标条件任务。为了鼓励探索性互动代理的发展,我们提出了EXCALIBUR基准。《王者之剑》允许智能体长时间探索环境,然后通过诸如“这个又小又重的红碗是玻璃做的吗?”或者“有比鸡蛋重的银勺吗?”该设计鼓励智能体进行自由形式的家庭探索,而不会因目标条件反射而导致近视。一旦智能体回答了一系列问题,他们就可以进入场景来完善他们的知识,更新他们的信念,并提高他们在问题上的表现。我们的实验证明了该数据集对当今最先进的具体化系统和开发新的创新方法所提供的空间所构成的挑战。最后,我们提出了一个虚拟现实界面,使人类能够在模拟世界中无缝交互,并使用它来收集人类的表现指标。与目前的基准相比,EXCALIBUR提供了独特的挑战,并代表了具体化人工智能研究的下一个前沿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EXCALIBUR: Encouraging and Evaluating Embodied Exploration
Experience precedes understanding. Humans constantly explore and learn about their environment out of curiosity, gather information, and update their models of the world. On the other hand, machines are either trained to learn passively from static and fixed datasets, or taught to complete specific goal-conditioned tasks. To encourage the development of exploratory interactive agents, we present the EXCALIBUR benchmark. EXCALIBUR allows agents to explore their environment for long durations and then query their understanding of the physical world via inquiries like: “is the small heavy red bowl made from glass?” or “is there a silver spoon heavier than the egg?”. This design encourages agents to perform free-form home exploration without myopia induced by goal conditioning. Once the agents have answered a series of questions, they can renter the scene to refine their knowledge, update their beliefs, and improve their performance on the questions. Our experiments demonstrate the challenges posed by this dataset for the present-day state-of-the-art embodied systems and the headroom afforded to develop new innovative methods. Finally, we present a virtual reality interface that enables humans to seamlessly interact within the simulated world and use it to gather human performance measures. EXCALIBUR affords unique challenges in comparison to presentday benchmarks and represents the next frontier for embodied AI research.
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