Hierarchical image clustering for analyzing eye tracking videos

Thomas B. Kinsman, P. Bajorski, J. Pelz
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引用次数: 5

Abstract

The classification of a large number of images is a familiar problem to the image processing community. It occurs in consumer photography, bioinformatics, biomedical imaging, surveillance, and in the field of mobile eye-tracking studies. During eye-tracking studies, what a person looks at is recorded, and for each frame what the person looked at must then be analyzed and classified. In many cases the data analysis time restricts the scope of the studies. This paper describes the initial use of hierarchical clustering of these images to minimize the time required during analysis. Pre-clustering the images allows the user to classify a large number of images simultaneously. The success of this method is dependent on meeting requirements for human-computer-interactions, which are also discussed.
用于眼动追踪视频分析的分层图像聚类
大量图像的分类是图像处理界所熟悉的问题。它发生在消费者摄影、生物信息学、生物医学成像、监测和移动眼动追踪研究领域。在眼球追踪研究中,一个人看了什么被记录下来,然后必须对每个人看的画面进行分析和分类。在许多情况下,数据分析的时间限制了研究的范围。本文描述了这些图像的分层聚类的初始使用,以尽量减少分析期间所需的时间。对图像进行预聚类可以使用户同时对大量图像进行分类。该方法的成功取决于满足人机交互的要求,并对其进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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