CVROSep 27, 2024

UniCal: Unified Neural Sensor Calibration

arXiv:2409.18953v110 citationsh-index: 116
Originality Highly original
AI Analysis

This addresses the costly and infrastructure-heavy calibration process for self-driving vehicle fleets, offering a more scalable solution.

The paper tackles the problem of calibrating LiDARs and cameras for self-driving vehicles by proposing UniCal, a unified framework that uses differentiable scene representation and volume rendering to achieve calibration without fiducials, reducing costs and matching or outperforming existing methods in accuracy.

Self-driving vehicles (SDVs) require accurate calibration of LiDARs and cameras to fuse sensor data accurately for autonomy. Traditional calibration methods typically leverage fiducials captured in a controlled and structured scene and compute correspondences to optimize over. These approaches are costly and require substantial infrastructure and operations, making it challenging to scale for vehicle fleets. In this work, we propose UniCal, a unified framework for effortlessly calibrating SDVs equipped with multiple LiDARs and cameras. Our approach is built upon a differentiable scene representation capable of rendering multi-view geometrically and photometrically consistent sensor observations. We jointly learn the sensor calibration and the underlying scene representation through differentiable volume rendering, utilizing outdoor sensor data without the need for specific calibration fiducials. This "drive-and-calibrate" approach significantly reduces costs and operational overhead compared to existing calibration systems, enabling efficient calibration for large SDV fleets at scale. To ensure geometric consistency across observations from different sensors, we introduce a novel surface alignment loss that combines feature-based registration with neural rendering. Comprehensive evaluations on multiple datasets demonstrate that UniCal outperforms or matches the accuracy of existing calibration approaches while being more efficient, demonstrating the value of UniCal for scalable calibration.

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