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SortedAP: Rethinking evaluation metrics for instance segmentation

Authors :
Chen, Long
Wu, Yuli
Stegmaier, Johannes
Merhof, Dorit
Publication Year :
2023

Abstract

Designing metrics for evaluating instance segmentation revolves around comprehensively considering object detection and segmentation accuracy. However, other important properties, such as sensitivity, continuity, and equality, are overlooked in the current study. In this paper, we reveal that most existing metrics have a limited resolution of segmentation quality. They are only conditionally sensitive to the change of masks or false predictions. For certain metrics, the score can change drastically in a narrow range which could provide a misleading indication of the quality gap between results. Therefore, we propose a new metric called sortedAP, which strictly decreases with both object- and pixel-level imperfections and has an uninterrupted penalization scale over the entire domain. We provide the evaluation toolkit and experiment code at https://www.github.com/looooongChen/sortedAP.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.04887
Document Type :
Working Paper