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A Multi-Objective Graph-based Genetic Algorithm for image segmentation

机译:基于多目标图的遗传算法的图像分割

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摘要

Image Segmentation is one of the most challenging problems in Computer Vision. This process consists in dividing an image in different parts which share a common property, for example, identify a concrete object within a photo. Different approaches have been developed over the last years. This work is focused on Unsupervised Data Mining methodologies, specially on Graph Clustering methods, and their application to previous problems. These techniques blindly divide the image into different parts according to a criterion. This work applies a Multi-Objective Genetic Algorithm in order to perform good clustering results comparing to classical and modern clustering algorithms. The algorithm is analysed and compared against different clustering methods, using a precision and recall evaluation, and the Berkeley Image Database to carry out the experimental evaluation.
机译:图像分割是计算机视觉中最具挑战性的问题之一。该过程包括将图像分为具有共同属性的不同部分,例如,识别照片中的具体对象。在过去的几年中已经开发出不同的方法。这项工作的重点是无监督数据挖掘方法,特别是图聚类方法及其在先前问题中的应用。这些技术根据准则将图像盲目地分为不同的部分。与经典和现代聚类算法相比,这项工作应用了多目标遗传算法来执行良好的聚类结果。使用精确度和召回率评估以及与伯克利图像数据库进行实验评估,对该算法进行了分析并与不同的聚类方法进行了比较。

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