cs.AI updates on arXiv.org 07月23日 12:03
Edge-case Synthesis for Fisheye Object Detection: A Data-centric Perspective
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本文提出一种针对鱼眼相机图像的检测模型优化方法,通过数据驱动的流程,系统性地提高检测性能,特别关注模型盲点的识别与处理,最终实现性能提升。

arXiv:2507.16254v1 Announce Type: cross Abstract: Fisheye cameras introduce significant distortion and pose unique challenges to object detection models trained on conventional datasets. In this work, we propose a data-centric pipeline that systematically improves detection performance by focusing on the key question of identifying the blind spots of the model. Through detailed error analysis, we identify critical edge-cases such as confusing class pairs, peripheral distortions, and underrepresented contexts. Then we directly address them through edge-case synthesis. We fine-tuned an image generative model and guided it with carefully crafted prompts to produce images that replicate real-world failure modes. These synthetic images are pseudo-labeled using a high-quality detector and integrated into training. Our approach results in consistent performance gains, highlighting how deeply understanding data and selectively fixing its weaknesses can be impactful in specialized domains like fisheye object detection.

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鱼眼相机 目标检测 数据驱动 模型优化
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