Back to Search Start Over

Toward explainable and advisable model for self‐driving cars

Authors :
Jinkyu Kim
Anna Rohrbach
Zeynep Akata
Suhong Moon
Teruhisa Misu
Yi‐Ting Chen
Trevor Darrell
John Canny
Source :
Applied AI Letters, Vol 2, Iss 4, Pp n/a-n/a (2021)
Publication Year :
2021
Publisher :
Wiley, 2021.

Abstract

Abstract Humans learn to drive through both practice and theory, for example, by studying the rules, while most self‐driving systems are limited to the former. Being able to incorporate human knowledge of typical causal driving behavior should benefit autonomous systems. We propose a new approach that learns vehicle control with the help of human advice. Specifically, our system learns to summarize its visual observations in natural language, predict an appropriate action response (eg, “I see a pedestrian crossing, so I stop”), and predict the controls, accordingly. Moreover, to enhance the interpretability of our system, we introduce a fine‐grained attention mechanism that relies on semantic segmentation and object‐centric RoI pooling. We show that our approach of training the autonomous system with human advice, grounded in a rich semantic representation, matches or outperforms prior work in terms of control prediction and explanation generation. Our approach also results in more interpretable visual explanations by visualizing object‐centric attention maps. We evaluate our approach on a novel driving dataset with ground‐truth human explanations, the Berkeley DeepDrive eXplanation (BDD‐X) dataset.

Details

Language :
English
ISSN :
26895595
Volume :
2
Issue :
4
Database :
Directory of Open Access Journals
Journal :
Applied AI Letters
Publication Type :
Academic Journal
Accession number :
edsdoj.0b03332c2c2646a1a21cfb885107a291
Document Type :
article
Full Text :
https://doi.org/10.1002/ail2.56