Static Segmentation by Tracking: A Label-Efficient Approach for Fine-Grained Specimen Image Segmentation
Abstract
We study image segmentation in the biological domain, particularly trait segmentation from specimen images (e.g., butterfly wing stripes, beetle elytra). This fine-grained task is crucial for understanding the biology of organisms, but it traditionally requires manually annotating segmentation masks for hundreds of images per species, making it highly labor-intensive. To address this challenge, we propose a label-efficient approach, Static Segmentation by Tracking (SST), based on a key insight: while specimens of the same species exhibit natural variation, the traits of interest show up consistently. This motivates us to concatenate specimen images into a ``pseudo-video'' and reframe trait segmentation as a tracking problem. Specifically, SST generates masks for unlabeled images by propagating annotated or predicted masks from the ``pseudo-preceding'' images. Built upon recent video segmentation models, such as Segment Anything Model 2, SST achieves high-quality trait segmentation with only one labeled image per species, marking a breakthrough in specimen image analysis. To further enhance segmentation quality, we introduce a cycle-consistent loss for fine-tuning, again requiring only one labeled image. Additionally, we demonstrate the broader potential of SST, including one-shot instance segmentation in natural images and trait-based image retrieval.
Cite
@article{arxiv.2501.06749,
title = {Static Segmentation by Tracking: A Label-Efficient Approach for Fine-Grained Specimen Image Segmentation},
author = {Zhenyang Feng and Zihe Wang and Jianyang Gu and Saul Ibaven Bueno and Tomasz Frelek and Advikaa Ramesh and Jingyan Bai and Lemeng Wang and Zanming Huang and Jinsu Yoo and Tai-Yu Pan and Arpita Chowdhury and Michelle Ramirez and Elizabeth G. Campolongo and Matthew J. Thompson and Christopher G. Lawrence and Sydne Record and Neil Rosser and Anuj Karpatne and Daniel Rubenstein and Hilmar Lapp and Charles V. Stewart and Tanya Berger-Wolf and Yu Su and Wei-Lun Chao},
journal= {arXiv preprint arXiv:2501.06749},
year = {2025}
}