基于自适应聚类的图像分类分割

Hanan Al-Jubouri, H. Du, H. Sellahewa
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引用次数: 10

摘要

基于颜色和纹理等底层图像特征聚类的图像分割方法已成功应用于图像分类和基于内容的图像检索。在基于分割的图像分类中,聚类的作用是将图像分割成代表图像视觉内容和语义内容的相关成分。然而,图像内容可以从在常规背景上有一个简单的前景对象到在复杂的背景场景中有多个不同大小、形状、颜色和纹理的对象。这使得自动图像分类成为一项具有挑战性的任务。本文评估了基于分区、基于模型和基于密度的三种不同类别的自适应聚类算法在分割局部颜色和纹理特征进行图像分类中的应用。实验是在公开的WANG数据库上进行的。结果表明,自适应EM/GMM算法优于自适应k-means和均值移位算法。
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Adaptive clustering based segmentation for image classification
Image segmentation based on clustering low-level image features such as colour and texture, has been successfully employed in image classification and content-based image retrieval. In segmentation based image classification, the role of clustering to segment an image into its relevant constituents that represent image visual content as well as its semantic content. However, image content can vary from having a simple foreground object on a regular background to having multiple objects of different sizes, shapes, colour and texture in complex background scenes. This makes automatic image classification a challenging task. This paper evaluates three adaptive clustering algorithms of different categories, i.e., partition-based, model-based, and density-based in segmenting local colour and texture features for image classification. Experiments are conducted on the publicly available WANG database. The results show that the adaptive EM/GMM algorithm outperforms the adaptive k-means and mean shift algorithms.
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