CVNov 18, 2024

SignEye: Traffic Sign Interpretation from Vehicle First-Person View

arXiv:2411.11507v115 citationsh-index: 8IEEE transactions on intelligent transportation systems (Print)
Originality Incremental advance
AI Analysis

This addresses a gap in autonomous driving by enabling better regulation assessment and navigation, though it appears incremental as it builds on existing sign understanding methods.

The paper tackles the problem of traffic sign interpretation from a vehicle's first-person view to support autonomous driving systems, introducing a new task (TSI-FPV) and a traffic guidance assistant (TGA) application, with experiments showing achievability and complementary benefits.

Traffic signs play a key role in assisting autonomous driving systems (ADS) by enabling the assessment of vehicle behavior in compliance with traffic regulations and providing navigation instructions. However, current works are limited to basic sign understanding without considering the egocentric vehicle's spatial position, which fails to support further regulation assessment and direction navigation. Following the above issues, we introduce a new task: traffic sign interpretation from the vehicle's first-person view, referred to as TSI-FPV. Meanwhile, we develop a traffic guidance assistant (TGA) scenario application to re-explore the role of traffic signs in ADS as a complement to popular autonomous technologies (such as obstacle perception). Notably, TGA is not a replacement for electronic map navigation; rather, TGA can be an automatic tool for updating it and complementing it in situations such as offline conditions or temporary sign adjustments. Lastly, a spatial and semantic logic-aware stepwise reasoning pipeline (SignEye) is constructed to achieve the TSI-FPV and TGA, and an application-specific dataset (Traffic-CN) is built. Experiments show that TSI-FPV and TGA are achievable via our SignEye trained on Traffic-CN. The results also demonstrate that the TGA can provide complementary information to ADS beyond existing popular autonomous technologies.

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