Community-aware evaluation and threshold calibration for open-set plankton image recognition
Xi Chen (1), Eryuan Huang (2), Yingjun Xiao (3), Gang Fang (4) ((1) School of Computer Science, Cyber Engineering, Guangzhou University, Guangzhou, China, (2) School of Environment, South China Normal University, Guangzhou, China, (3) School of Artificial Intelligence

TL;DR
This paper introduces community-aware evaluation and threshold calibration methods for open-set plankton image recognition, emphasizing ecological community-level metrics over traditional sample-level OOD detection metrics.
Contribution
It proposes a new community-aware error metric (OSCD) and calibration approach to improve ecological relevance in open-set plankton classification.
Findings
Community-aware calibration reduces ecological error (OSCD) on multiple datasets.
Sample-level OOD metrics are insufficient for ecological threshold setting.
Community-aware methods outperform fixed-recall baselines depending on dataset representativeness.
Abstract
Automated plankton image recognition is increasingly used in aquatic ecosystem monitoring, but deployed classifiers inevitably encounter unseen taxa and non-target particles. Open-set recognition methods are usually evaluated with sample-level metrics such as AUROC, AUPR, and FPR@95% unknown-recall operating points, whereas ecological monitoring depends on community-level estimates of taxon abundance and diversity. This study examines the mismatch between these objectives using controlled pseudo-communities and three datasets spanning marine zooplankton imaged by ZooScan, marine phytoplankton imaged by IFCB, and freshwater plankton imaged by an in-situ camera. We define Open-Set Community Distortion (OSCD), a Bray-Curtis-style error over known taxa plus an unknown bin, with directional components distinguishing known-taxon overestimation from underestimation. Closed-set classifiers…
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