ROAICVLGJul 16, 2021

Autonomy 2.0: Why is self-driving always 5 years away?

arXiv:2107.08142v349 citations
AI Analysis

This addresses scalability issues in self-driving for the automotive industry, but it is incremental as it builds on existing ideas.

The paper tackles the slow progress in self-driving technology by identifying bottlenecks like excessive hand-engineering and high costs, and proposes Autonomy 2.0 as an ML-first approach to improve scalability.

Despite the numerous successes of machine learning over the past decade (image recognition, decision-making, NLP, image synthesis), self-driving technology has not yet followed the same trend. In this paper, we study the history, composition, and development bottlenecks of the modern self-driving stack. We argue that the slow progress is caused by approaches that require too much hand-engineering, an over-reliance on road testing, and high fleet deployment costs. We observe that the classical stack has several bottlenecks that preclude the necessary scale needed to capture the long tail of rare events. To resolve these problems, we outline the principles of Autonomy 2.0, an ML-first approach to self-driving, as a viable alternative to the currently adopted state-of-the-art. This approach is based on (i) a fully differentiable AV stack trainable from human demonstrations, (ii) closed-loop data-driven reactive simulation, and (iii) large-scale, low-cost data collections as critical solutions towards scalability issues. We outline the general architecture, survey promising works in this direction and propose key challenges to be addressed by the community in the future.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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