Event-aided Semantic Scene Completion
Shangwei Guo, Hao Shi, Song Wang, Xiaoting Yin, Kailun Yang, Kaiwei, Wang

TL;DR
This paper introduces EvSSC, a novel event-aided framework for semantic scene completion in autonomous driving, leveraging event cameras and a new benchmark to improve robustness under challenging conditions.
Contribution
It presents the first real-world event-aided SSC benchmark, a novel RGB-Event fusion framework with an Event-aided Lifting Module, and demonstrates significant accuracy improvements under adverse conditions.
Findings
EvSSC improves prediction accuracy across multiple models.
Achieves up to 52.5% relative mIoU improvement under sensor failure.
Superiority validated under motion blur and extreme weather conditions.
Abstract
Autonomous driving systems rely on robust 3D scene understanding. Recent advances in Semantic Scene Completion (SSC) for autonomous driving underscore the limitations of RGB-based approaches, which struggle under motion blur, poor lighting, and adverse weather. Event cameras, offering high dynamic range and low latency, address these challenges by providing asynchronous data that complements RGB inputs. We present DSEC-SSC, the first real-world benchmark specifically designed for event-aided SSC, which includes a novel 4D labeling pipeline for generating dense, visibility-aware labels that adapt dynamically to object motion. Our proposed RGB-Event fusion framework, EvSSC, introduces an Event-aided Lifting Module (ELM) that effectively bridges 2D RGB-Event features to 3D space, enhancing view transformation and the robustness of 3D volume construction across SSC models. Extensive…
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Taxonomy
TopicsVideo Analysis and Summarization · Topic Modeling · Time Series Analysis and Forecasting
