Coral-Segmentation: Training Dense Labeling Models with Sparse Ground Truth

Iñigo Alonso, Ana B. Cambra, A. Muñoz, T. Treibitz, A. C. Murillo
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引用次数: 35

Abstract

Biological datasets, such as our case of study, coral segmentation, often present scarce and sparse annotated image labels. Transfer learning techniques allow us to adapt existing deep learning models to new domains, even with small amounts of training data. Therefore, one of the main challenges to train dense segmentation models is to obtain the required dense labeled training data. This work presents a novel pipeline to address this pitfall and demonstrates the advantages of applying it to coral imagery segmentation. We fine tune state-of-the-art encoder-decoder CNN models for semantic segmentation thanks to a new proposed augmented labeling strategy. Our experiments run on a recent coral dataset [4], proving that this augmented ground truth allows us to effectively learn coral segmentation, as well as provide a relevant score of the segmentation quality based on it. Our approach provides a segmentation of comparable or better quality than the baseline presented with the dataset and a more flexible end-to-end pipeline.
珊瑚分割:训练稀疏地面真值的密集标记模型
生物数据集,例如我们的研究案例,珊瑚分割,经常呈现稀缺和稀疏的注释图像标签。迁移学习技术使我们能够使现有的深度学习模型适应新的领域,即使只有少量的训练数据。因此,训练密集分割模型的主要挑战之一是获得所需的密集标记训练数据。这项工作提出了一种新的管道来解决这个陷阱,并展示了将其应用于珊瑚图像分割的优势。我们微调最先进的编码器-解码器CNN模型的语义分割感谢一个新的提出的增强标签策略。我们的实验运行在最近的珊瑚数据集[4]上,证明了这种增强的地面真值使我们能够有效地学习珊瑚分割,并提供基于它的分割质量的相关分数。我们的方法提供了与数据集提供的基线相当或更好质量的分割,以及更灵活的端到端管道。
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