ReliOcc: Towards Reliable Semantic Occupancy Prediction via Uncertainty Learning
Vision-centric semantic occupancy prediction plays a crucial role in autonomous driving, which requires accurate and reliable predictions from low-cost sensors. Although having notably narrowed the accuracy gap with LiDAR, there is still few research effort to explore the reliability in predicting s...
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Zusammenfassung: | Vision-centric semantic occupancy prediction plays a crucial role in
autonomous driving, which requires accurate and reliable predictions from
low-cost sensors. Although having notably narrowed the accuracy gap with LiDAR,
there is still few research effort to explore the reliability in predicting
semantic occupancy from camera. In this paper, we conduct a comprehensive
evaluation of existing semantic occupancy prediction models from a reliability
perspective for the first time. Despite the gradual alignment of camera-based
models with LiDAR in term of accuracy, a significant reliability gap persists.
To addresses this concern, we propose ReliOcc, a method designed to enhance the
reliability of camera-based occupancy networks. ReliOcc provides a
plug-and-play scheme for existing models, which integrates hybrid uncertainty
from individual voxels with sampling-based noise and relative voxels through
mix-up learning. Besides, an uncertainty-aware calibration strategy is devised
to further enhance model reliability in offline mode. Extensive experiments
under various settings demonstrate that ReliOcc significantly enhances model
reliability while maintaining the accuracy of both geometric and semantic
predictions. Importantly, our proposed approach exhibits robustness to sensor
failures and out of domain noises during inference. |
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DOI: | 10.48550/arxiv.2409.18026 |