结合特征上下文和空间上下文的图像模式发现

Hongxing Wang, Junsong Yuan, Yap-Peng Tan
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引用次数: 13

摘要

一旦图像被分解成许多视觉原语,例如局部兴趣点或显著图像区域,从中发现有意义的视觉模式是非常有趣的。然而,传统的视觉原语聚类(如k-means)往往忽略了原语之间的空间依赖关系,无法发现复杂空间结构的高级视觉模式。为了克服这个问题,我们建议在视觉原语中同时考虑空间和特征上下文来进行模式发现。通过发现视觉原语之间的空间共现模式和不同类型特征之间的特征共现模式,我们的方法可以更好地利用这些共现来处理视觉原语的模糊性。我们将这个问题表述为一个正则化的k-means聚类,并提出了一个迭代的自下而上/自上而下的自学习过程,以逐步完善结果,直到它收敛。图像文本的发现和图像区域聚类实验表明,结合空间上下文和特征上下文可以显著提高模式发现的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Feature Context and Spatial Context for Image Pattern Discovery
Once an image is decomposed into a number of visual primitives, e.g., local interest points or salient image regions, it is of great interests to discover meaningful visual patterns from them. Conventional clustering (e.g., k-means) of visual primitives, however, usually ignores the spatial dependency among them, thus cannot discover the high-level visual patterns of complex spatial structure. To overcome this problem, we propose to consider both spatial and feature contexts among visual primitives for pattern discovery. By discovering both spatial co-occurrence patterns among visual primitives and feature co-occurrence patterns among different types of features, our method can better handle the ambiguities of visual primitives, by leveraging these co-occurrences. We formulate the problem as a regularized k-means clustering, and propose an iterative bottom-up/top-down self-learning procedure to gradually refine the result until it converges. The experiments of image text on discovery and image region clustering convince that combining spatial and feature contexts can significantly improve the pattern discovery results.
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