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.
@article{arxiv.2602.23357,
title = {Sensor Generalization for Adaptive Sensing in Event-based Object Detection via Joint Distribution Training},
author = {Aheli Saha and René Schuster and Didier Stricker},
journal= {arXiv preprint arXiv:2602.23357},
year = {2026}
}
Comments
12 pages, International Conference on Pattern Recognition Applications and Methods