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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Unsupervised Mitochondria Segmentation in EM Images via Domain Adaptive Multi-Task Learning
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Unsupervised Mitochondria Segmentation in EM Images via Domain Adaptive Multi-Task Learning

机译:通过域自适应多任务学习的EM图像中的无监督线粒体分割

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摘要

Semantic segmentation of mitochondria is essential for electron microscopy image analysis. Despite the great success achieved using supervised learning, it requires a large amount of expensive per-pixel annotations. Recent studies have proposed to exploit similar but annotated domains by domain adaptation, but the possible severe domain shift poses a challenge for the model transfer. In this study, we develop an unsupervised domain adaptation method to adapt the model trained on an labeled source domain to the unlabeled target domain. Specifically, we achieve cross-domain segmentation by integrating geometrical cues provided by the annotated labels and the visual cues latent in images of both domains in a framework of adversarial domain adaptive multi-task learning. Rather than enforcing manually-defined shape priors, we propose to learn geometrical cues from the source domain through adversarial learning. Domain-invariant and discriminative features are learned through joint adaptation. Extensive ablations, parameter analysis and comparisons have been conducted on three benchmarks under various settings. The experiments show that our method performs favorably against state-of-the-art methods both in segmentation accuracy and visual quality.
机译:线粒体的语义分割对于电子显微镜图像分析至关重要。尽管使用监督学习实现了巨大成功,但它需要大量的昂贵的每像素注释。最近的研究已经提出通过域适应来利用类似但注释的域,但可能的严格域移位对模型转移构成了挑战。在本研究中,我们开发了一个无监督的域适应方法,以使模型在标记的源域上培训到未标记的目标域。具体地,通过积分被带注释的标签提供的几何线索和对抗域自适应多任务学习框架中的域的图像中的几何线索来实现跨域分割。我们提出通过对抗学习来从源域中学习从源域学习几何线索的而不是执行手动定义的形状。通过联合适应学习域不变和歧视特征。在各种设置下的三个基准上进行了广泛的消融,参数分析和比较。实验表明,我们的方法在分割精度和视觉质量方面对最先进的方法进行了有利的方法。

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