Multi-objective nature-inspired clustering techniques for image segmentation

B. Wei, R. Mandava
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引用次数: 15

Abstract

Image segmentation aims to partition an image into several disjointed regions that are homogeneous with regards to some measures so that subsequent higher level computer vision processing, such as object recognition, image understanding and scene description can be performed. Multi-objective formulations are realistic models for image segmentation because objectives under consideration conflict with each other, and optimizing a particular solution with respect to a single objective can result in unacceptable results with respect to the other objectives. In this paper, we present the current multi-objective nature-inspired clustering (MoNiC) techniques for image segmentation. We are able to diagnose the requirements and issues for modelling this specific technique in the image segmentation problem. Three identified important phases include intelligence, design and choice with respect to the issues of clustering problem of image segmentation and multi-objective clustering algorithm design.
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基于自然的多目标聚类图像分割技术
图像分割的目的是将一幅图像分割成几个互不关联的区域,这些区域在某些方面是同质的,以便进行后续的更高层次的计算机视觉处理,如物体识别、图像理解和场景描述。多目标公式是图像分割的现实模型,因为所考虑的目标相互冲突,并且针对单个目标优化特定解决方案可能导致相对于其他目标的不可接受的结果。本文介绍了目前用于图像分割的多目标自然启发聚类(MoNiC)技术。我们能够诊断出在图像分割问题中建模这种特定技术的需求和问题。针对图像分割的聚类问题和多目标聚类算法设计,确定了智能、设计和选择三个重要阶段。
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