CVApr 4

SciLT: Long-Tailed Classification in Scientific Image Domains

arXiv:2604.0368738.1h-index: 2
AI Analysis

For researchers working on long-tailed classification in scientific domains, this work provides a practical baseline and insights into adapting foundation models under domain shift.

The paper investigates long-tailed recognition in scientific image domains, finding that fine-tuning foundation models yields limited gains. The proposed SciLT framework, using multi-level feature fusion and dual-supervision, consistently outperforms existing methods on three scientific benchmarks.

Long-tailed recognition has benefited from foundation models and fine-tuning paradigms, yet existing studies and benchmarks are mainly confined to natural image domains, where pre-training and fine-tuning data share similar distributions. In contrast, scientific images exhibit distinct visual characteristics and supervision signals, raising questions about the effectiveness of fine-tuning foundation models in such settings. In this work, we investigate scientific long-tailed recognition under a purely visual and parameter-efficient fine-tuning (PEFT) paradigm. Experiments on three scientific benchmarks show that fine-tuning foundation models yields limited gains, and reveal that penultimate-layer features play an important role, particularly for tail classes. Motivated by these findings, we propose SciLT, a framework that exploits multi-level representations through adaptive feature fusion and dual-supervision learning. By jointly leveraging penultimate- and final-layer features, SciLT achieves balanced performance across head and tail classes. Extensive experiments demonstrate that SciLT consistently outperforms existing methods, establishing a strong and practical baseline for scientific long-tailed recognition and providing valuable guidance for adapting foundation models to scientific data with substantial domain shifts.

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