In this paper, we propose a methodology to improvise the technique of deep transfer clustering (DTC) when applied to the less variant data distribution. Clustering can be considered as the most important unsupervised learning problem. A simple definition of clustering can be stated as "the process of organizing objects into groups, whose members are similar in some way". Image clustering is a crucial but challenging task in the domain machine learning and computer vision. We have discussed the clustering of the data collection where the data is less variant. We have discussed the improvement by using attention-based classifiers rather than regular classifiers as the initial feature extractors in the deep transfer clustering. We have enforced the model to learn only the required region of interest in the images to get the differentiable and robust features that do not take into account the background. This paper is the improvement of the existing deep transfer clustering for less variant data distribution.
翻译:在本文中,我们提出一种方法,在应用到变式较少的数据分布时即刻采用深转移集群技术。组合可被视为最重要的未经监督的学习问题。组合的简单定义可以称为“将目标组织成群体的过程,其成员在某些方面是相似的”。图像组合是域机学习和计算机愿景中一项关键但具有挑战性的任务。我们讨论了数据收集组群中的数据变式较少的问题。我们通过使用关注分类器而不是常规分类器作为深度转移组群的初始特征提取器讨论了改进问题。我们实施了模型,只学习了图像中所需感兴趣的区域,以获得不考虑背景的可差异和稳健的特征。本文改进了现有的变式数据分布的深度传输组群。