形状标注的增量半监督模糊聚类

G. Castellano, A. Fanelli, M. Torsello
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引用次数: 1

摘要

在本文中,我们提出了一种用于形状注释的增量聚类方法,当随着时间的推移有新的图像集可用时,这种方法很有用。采用半监督模糊聚类算法对形状进行聚类。每个集群都由一个原型表示,该原型被手动标记并用于注释属于该集群的形状。为了捕捉图像集随时间的演变,将先前发现的原型作为预标记对象添加到当前形状集,并再次应用半监督聚类。在两个基准图像数据集上对所提出的增量方法进行了评估,这两个基准图像数据集被分成数据块来模拟图像在一段时间内的渐进可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental semi-supervised fuzzy clustering for shape annotation
In this paper, we present an incremental clustering approach for shape annotation, which is useful when new sets of images are available over time. A semi-supervised fuzzy clustering algorithm is used to group shapes into a number of clusters. Each cluster is represented by a prototype that is manually labeled and used to annotate shapes belonging to that cluster. To capture the evolution of the image set over time, the previously discovered prototypes are added as pre-labeled objects to the current shape set and semi-supervised clustering is applied again. The proposed incremental approach is evaluated on two benchmark image datasets, which are divided into chunks of data to simulate the progressive availability of images during time.
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