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Partial Least Squares Image Clustering

机译:偏最小二乘图像聚类

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摘要

Clustering techniques have been widely used in areas that handle massive amounts of data, such as statistics, information retrieval, data mining and image analysis. This work presents a novel image clustering method called Partial Least Square Image Clustering (PLSIC), which employs a one against-all Partial Least Squares classifier to find image clusters with low redundancy (each cluster represents different visual concept) and high purity (two visual concepts should not be in the same cluster). The main goal of the proposed approach is to find groups of images in an arbitrary set of unlabeled images to convey well defined visual concepts. As a case study, we evaluate the PLSIC to the video summarization problem by means of experiments with 50 videos from various genres of the Open Video Project, comparing summaries generated by the PLSIC with other video summarization approaches found in the literature. A experimental evaluation demonstrates that the proposed method can produce very satisfactory results.
机译:聚类技术已广泛用于处理大量数据的区域,例如统计,信息检索,数据挖掘和图像分析。这项工作提出了一种名为偏最小二乘映像聚类(PLSIC)的新颖的图像聚类方法,该方法采用一个反对 - 所有部分最小二乘分类器,以查找具有低冗余的图像群集(每个群集表示不同的视觉概念)和高纯度(两个视觉概念不应在同一集群中)。该方法的主要目标是在一组任意的未标记图像中找到一组图像,以传达明确的视觉概念。作为一个案例研究,我们通过从开放式视频项目的各种类型的实验评估PLSIC到视频摘要问题,比较PLSIC生成的摘要与文献中的其他视频概要方法。实验评估表明,所提出的方法可以产生非常令人满意的结果。

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