HEp-2细胞图像聚类的无监督特征学习实验研究

Yan Zhao, Zhimin Gao, Lei Wang, Luping Zhou
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引用次数: 3

摘要

HEp-2细胞图像的自动识别越来越受到人们的关注。特征表示在获得良好的识别性能方面起着至关重要的作用。最近的许多工作都集中在监督特征学习上。典型的方法包括BoW模型(基于手工特征)和深度学习模型(学习分层特征)。然而,在监督特征学习中使用的这些标签是非常耗费人力和时间的。它们通常由专家手工注释,获取起来非常昂贵。在本文中,我们遵循这一事实,专注于无监督特征学习。我们通过聚类对这两种典型模型的特征进行了验证和比较。实验结果表明,BoW模型总体上优于深度学习模型。此外,我们还说明了BoW模型和深度学习模型具有互补性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experimental Study of Unsupervised Feature Learning for HEp-2 Cell Images Clustering
Automatic identification of HEp-2 cell images has received an increasing research attention. Feature representations play a critical role in achieving good identification performance. Much recent work has focused on supervised feature learning. Typical methods consist of BoW model (based on hand-crafted features) and deep learning model (learning hierarchical features). However, these labels used in supervised feature learning are very labour-intensive and time-consuming. They are commonly manually annotated by specialists and very expensive to obtain. In this paper, we follow this fact and focus on unsupervised feature learning. We have verified and compared the features of these two typical models by clustering. Experimental results show the BoW model generally perform better than deep learning models. Also, we illustrate BoW model and deep learning models have complementarity properties.
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