作者
Mathias Lechner*, Ramin Hasani*, Alexander Amini, Thomas A Henzinger, Daniela Rus, Radu Grosu
发表日期
2020/10
期刊
Nature Machine Intelligence
卷号
2
期号
10
页码范围
642-652
出版商
Nature Publishing Group
简介
A central goal of artificial intelligence in high-stakes decision-making applications is to design a single algorithm that simultaneously expresses generalizability by learning coherent representations of their world and interpretable explanations of its dynamics. Here, we combine brain-inspired neural computation principles and scalable deep learning architectures to design compact neural controllers for task-specific compartments of a full-stack autonomous vehicle control system. We discover that a single algorithm with 19 control neurons, connecting 32 encapsulated input features to outputs by 253 synapses, learns to map high-dimensional inputs into steering commands. This system shows superior generalizability, interpretability and robustness compared with orders-of-magnitude larger black-box learning systems. The obtained neural agents enable high-fidelity autonomy for task-specific parts of a complex …
引用总数
学术搜索中的文章
M Lechner, R Hasani, A Amini, TA Henzinger, D Rus… - Nature Machine Intelligence, 2020