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PoseDriver: A Unified Approach to Multi-Category Skeleton Detection for Autonomous Driving

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Object skeletons offer a concise representation of structural information, capturing essential aspects of posture and orientation that are crucial for autonomous driving applications. However, a unified architecture that simultaneously handles multiple instances and categories using only the input image remains elusive. In this paper, we introduce PoseDriver, a unified framework for bottom-up multi-category skeleton detection tailored to common objects in driving scenarios. We model each category as a distinct task to systematically address the challenges of multi-task learning. Specifically, we propose a novel approach for lane detection based on skeleton representations, achieving state-of-the-art performance on the OpenLane dataset. Moreover, we present a new dataset for bicycle skeleton detection and assess the transferability of our framework to novel categories. Experimental results validate the effectiveness of the proposed approach.

Yasamin Borhani, Taylor Mordan, Yihan Wang, Reyhaneh Hosseininejad, Javad Khoramdel, Alexandre Alahi• 2026

Related benchmarks

TaskDatasetResultRank
Lane DetectionCULane (test)
F1 Score (Total)80.01
285
2D Lane DetectionOpenLane (val)
F-Score (All)71.5
19
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