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Automated Model Evaluation for Object Detection via Prediction Consistency and Reliablity
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本文提出PCR框架,通过评估非最大值抑制前后框的空间一致性和保留框的可靠性,实现目标检测性能的自动评估,并构建元数据集以提升评估的全面性和可扩展性。

arXiv:2508.12082v1 Announce Type: cross Abstract: Recent advances in computer vision have made training object detectors more efficient and effective; however, assessing their performance in real-world applications still relies on costly manual annotation. To address this limitation, we develop an automated model evaluation (AutoEval) framework for object detection. We propose Prediction Consistency and Reliability (PCR), which leverages the multiple candidate bounding boxes that conventional detectors generate before non-maximum suppression (NMS). PCR estimates detection performance without ground-truth labels by jointly measuring 1) the spatial consistency between boxes before and after NMS, and 2) the reliability of the retained boxes via the confidence scores of overlapping boxes. For a more realistic and scalable evaluation, we construct a meta-dataset by applying image corruptions of varying severity. Experimental results demonstrate that PCR yields more accurate performance estimates than existing AutoEval methods, and the proposed meta-dataset covers a wider range of detection performance. The code is available at https://github.com/YonseiML/autoeval-det.

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目标检测 自动评估 PCR框架 元数据集 计算机视觉
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