Safety-Aligned 3D Object Detection: Single-Vehicle, Cooperative, and End-to-End Perspectives
Brian Hsuan-Cheng Liao, Chih-Hong Cheng, Hasan Esen, Alois Knoll

TL;DR
This paper advocates for safety-aligned evaluation and optimization in 3D object detection for autonomous vehicles, demonstrating that safety-focused metrics and training improve real-world safety outcomes.
Contribution
It introduces safety-oriented metrics and loss functions, evaluates their impact across various models and modalities, and integrates them into end-to-end systems to enhance safety.
Findings
Safety-aware fine-tuning improves safety-critical detection performance.
Cooperative perception models outperform vehicle-only models in safety evaluation.
Safety-aware perception hardening reduces collision rates by nearly 30%.
Abstract
Perception plays a central role in connected and autonomous vehicles (CAVs), underpinning not only conventional modular driving stacks, but also cooperative perception systems and recent end-to-end driving models. While deep learning has greatly improved perception performance, its statistical nature makes perfect predictions difficult to attain. Meanwhile, standard training objectives and evaluation benchmarks treat all perception errors equally, even though only a subset is safety-critical. In this paper, we investigate safety-aligned evaluation and optimization for 3D object detection that explicitly characterize high-impact errors. Building on our previously proposed safety-oriented metric, NDS-USC, and safety-aware loss function, EC-IoU, we make three contributions. First, we present an expanded study of single-vehicle 3D object detection models across diverse neural network…
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