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arXiv 提交日期: 2026-02-26
📄 Abstract - Sensor Generalization for Adaptive Sensing in Event-based Object Detection via Joint Distribution Training

Bio-inspired event cameras have recently attracted significant research due to their asynchronous and low-latency capabilities. These features provide a high dynamic range and significantly reduce motion blur. However, because of the novelty in the nature of their output signals, there is a gap in the variability of available data and a lack of extensive analysis of the parameters characterizing their signals. This paper addresses these issues by providing readers with an in-depth understanding of how intrinsic parameters affect the performance of a model trained on event data, specifically for object detection. We also use our findings to expand the capabilities of the downstream model towards sensor-agnostic robustness.

顶级标签: computer vision model training data
详细标签: event cameras object detection sensor generalization joint distribution training adaptive sensing 或 搜索:

通过联合分布训练实现基于事件的目标检测中自适应感知的传感器泛化 / Sensor Generalization for Adaptive Sensing in Event-based Object Detection via Joint Distribution Training


1️⃣ 一句话总结

这篇论文研究了事件相机内部参数如何影响目标检测模型的性能,并提出了一种训练方法,使模型能适应不同传感器的信号特性,从而提升其通用性和鲁棒性。

源自 arXiv: 2602.23357