Deep Neural Networks Learn Meta-Structures from Noisy Labels in Semantic Segmentation
Luo YR(罗曜儒)
2022
会议日期2022-2-22
会议地点线上
英文摘要

How deep neural networks (DNNs) learn from noisy labels has been studied extensively in image classification but much less in image segmentation. So far, our understanding of the learning behavior of DNNs trained by noisy segmentation labels remains limited. In this study, we address this deficiency in both binary segmentation of biological microscopy images and multi-class segmentation of natural images. We generate extremely noisy labels by randomly sampling a small fraction (e.g., 10%) or flipping a large fraction (e.g., 90%) of the ground truth labels. When trained with these noisy labels, DNNs provide largely the same segmentation performance as trained by the original ground truth. This indicates that DNNs learn structures hidden in labels rather than pixel-level labels per se in their supervised training for semantic segmentation. We refer to these hidden structures in labels as meta-structures. When DNNs are trained by labels with different perturbations to the meta-structure, we find consistent degradation in their segmentation performance. In contrast, incorporation of meta-structure information substantially improves performance of an unsupervised segmentation model developed for binary semantic segmentation. We define meta-structures mathematically as spatial density distributions and show both theoretically and experimentally how this formulation explains key observed learning behavior of DNNs.

内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/54523]  
专题模式识别国家重点实验室_计算生物学与机器智能
作者单位1.University of Chinese Academy of Sciences
2.Institute of Automation Chinese Academy of Science
推荐引用方式
GB/T 7714
Luo YR. Deep Neural Networks Learn Meta-Structures from Noisy Labels in Semantic Segmentation[C]. 见:. 线上. 2022-2-22.
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