基于近似融合的视频摘要自适应鲁棒聚类

B. L. Saux, Nizar Grira, N. Boujemaa
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引用次数: 2

摘要

为了有效地浏览大型图像集,我们必须提供其视觉内容的摘要。本文提出了一种新的鲁棒图像数据库分类方法:自适应鲁棒竞争与基于接近度的合并(ARC-M)。该算法依赖于非监督数据库分类,并在每个结果类别中选择原型。每张图像都由特征空间中的高维向量表示。对每个特征进行主成分分析,降低维数。然后,通过最小化竞争集聚目标函数和额外的噪声聚类来收集异常值,在具有挑战性的条件下进行聚类。通过基于聚类接近性验证的合并过程改进了聚类。
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Adaptive robust clustering with proximity-based merging for video-summary
To allow efficient browsing of large image collection, we have to provide a summary of its visual content. We present in this paper a new robust approach to categorize image databases: Adaptive Robust Competition with Proximity-Based Merging (ARC-M). This algorithm relies on a non-supervised database categorization, coupled with a selection of prototypes in each resulting category. Each image is represented by a high-dimensional vector in the feature space. A principal component analysis is performed for every feature to reduce dimensionality. Then, clustering is performed in challenging conditions by minimizing a Competitive Agglomeration objective function with an extra noise cluster to collect outliers. Agglomeration is improved by a merging process based on cluster proximity verification.
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