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Benchmarking and Improving Bird's Eye View Perception Robustness in Autonomous Driving

Computer Science

Benchmarking and Improving Bird's Eye View Perception Robustness in Autonomous Driving

S. Xie, L. Kong, et al.

Explore the groundbreaking RoboBEV benchmark, which rigorously evaluates the robustness of BEV-based perception models across diverse conditions. This research, conducted by Shaoyuan Xie, Lingdong Kong, Wenwei Zhang, Jiawei Ren, Liang Pan, Kai Chen, and Ziwei Liu, reveals critical insights into enhancing resilience in advanced 3D perception systems.... show more
Abstract
Recent advancements in bird's eye view (BEV) representations have shown remarkable promise for in-vehicle 3D perception. However, while these methods have achieved impressive results on standard benchmarks, their robustness in varied conditions remains insufficiently assessed. In this study, we present RoboBEV, an extensive benchmark suite designed to evaluate the resilience of BEV algorithms. This suite incorporates a diverse set of camera corruption types, each examined over three severity levels. Our benchmarks also consider the impact of complete sensor failures that occur when using multi-modal models. Through RoboBEV, we assess 33 state-of-the-art BEV-based perception models spanning tasks like detection, map segmentation, depth estimation, and occupancy prediction. Our analyses reveal a noticeable correlation between the model's performance on in-distribution datasets and its resilience to out-of-distribution challenges. Our experimental results also underline the efficacy of strategies like pre-training and depth-free BEV transformations in enhancing robustness against out-of-distribution data. Furthermore, we observe that leveraging extensive temporal information significantly improves the model's robustness. Based on our observations, we design an effective robustness enhancement strategy based on the CLIP model. The insights from this study pave the way for the development of future BEV models that seamlessly combine accuracy with real-world robustness. The benchmark toolkit and model checkpoints are publicly accessible at: https://github.com/Daniel-xsy/RoboBEV.
Publisher
Published On
Authors
Shaoyuan Xie, Lingdong Kong, Wenwei Zhang, Jiawei Ren, Liang Pan, Kai Chen, Ziwei Liu
Tags
bird's eye view
3D perception
benchmarking
robustness
sensor failures
corruption types
model assessment
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