Event clustering of consumer pictures using foreground/background segmentation

A. Loui, Matthieu Jeanson
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引用次数: 2

Abstract

This paper describes a new algorithm to classify consumer photographs into different events when date and time information is not available. Without any information about the context of the pictures, we have to rely on the image content. Our approach involves using an efficient segmentation scheme and extraction of low-level features to detect event boundaries. Specifically, we have developed a foreground/background segmentation algorithm based on block-based clustering. This block segmentation provides less precision, but still gives good results with low computation cost. A third-party ground truth database has been created with the help of the Human Factors Laboratory at Kodak, to benchmark our approaches. Based on these results, we concluded that a simple block-based segmentation scheme performed better than the original block-based event clustering algorithm without segmentation. We believe that many improvements, especially on segmentation and feature extraction, should lead to better results in the future.
使用前景/背景分割的消费者图片事件聚类
本文描述了一种新的算法,可以在没有日期和时间信息的情况下将消费者照片分类为不同的事件。没有任何关于图片背景的信息,我们只能依靠图片内容。我们的方法包括使用有效的分割方案和提取底层特征来检测事件边界。具体来说,我们开发了一种基于分块聚类的前景/背景分割算法。这种分块方法虽然精度较低,但仍然具有较好的分割效果和较低的计算成本。在柯达人为因素实验室的帮助下,我们创建了一个第三方的地面真相数据库,以测试我们的方法。基于这些结果,我们得出结论,简单的基于块的分割方案优于原始的不分割的基于块的事件聚类算法。我们相信许多改进,特别是在分割和特征提取方面,应该会在未来带来更好的结果。
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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