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TaxonRL: Reinforcement Learning with Intermediate Rewards for Interpretable Fine-Grained Visual Reasoning

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Traditional vision-language models struggle with contrastive fine-grained taxonomic reasoning, particularly when distinguishing between visually similar species within the same genus or family. We introduce TaxonRL, a reinforcement learning approach using Group Relative Policy Optimization with intermediate rewards that decomposes the reasoning process into hierarchical taxonomic predictions. Our method incentivizes models to explicitly reason about species-level, genus-level, and family-level features before making final classifications. This structured approach is designed not only to boost accuracy but also to yield a transparent, verifiable decision-making process. On the challenging Birds-to-Words dataset, TaxonRL achieves 91.7\% average accuracy, exceeding human performance (77.3\%) while generating interpretable reasoning traces. We demonstrate strong cross-domain generalization, showing substantial gains in primate and marine species verification. Our results establish that enforcing structured, hierarchical reasoning provides a powerful and transferable framework for fine-grained visual discrimination.

Maximilian von Klinski, Maximilian Schall• 2026

Related benchmarks

TaskDatasetResultRank
Pairwise taxonomic verification accuracyBirds-to-Words
Visual Accuracy79.4
7
Fine-grained Image ClassificationFungi--
6
Identity VerificationGorilla
Accuracy78.2
4
Identity VerificationChimpFace
Accuracy87.4
4
Identity VerificationSeaStar
Accuracy95.6
4
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