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Multi-feature fusion in image clustering using ant-inspired methods

机译:利用蚂蚁启发方法进行图像聚类的多特征融合

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Clustering of visual data is necessary for its effective organisation, summarisation and retrieval. In this paper, the appropriateness of biologically inspired models to tackle this problem is discussed and suitable strategies to solve this specific image processing task are derived. The proposed techniques are inspired by the optimal movements of ants and their biologically optimised colony behaviour. In the first proposal, the problem of multi-feature fusion using relevant, yet different, discriminative low-level features is tackled by Ant Colony Optimisation and its learning mechanism. In the second proposal, another metaheuristic model is applied. Here, the ability of ants to build live structures with their bodies is used in order to discover, in a distributed and unsupervised way, a tree-structured organisation of images. Finally, the proposed techniques are comprehensively evaluated and selected representative results are reported.
机译:视觉数据的聚类对于其有效的组织,汇总和检索是必要的。在本文中,讨论了生物学启发的模型来解决该问题的适用性,并得出了解决该特定图像处理任务的合适策略。所提出的技术受到蚂蚁的最佳运动及其生物学上最佳的菌落行为的启发。在第一个建议中,蚁群优化及其学习机制解决了使用相关但不同的,具有区别性的低级特征进行多特征融合的问题。在第二个建议中,应用了另一种元启发式模型。在这里,利用蚂蚁利用其身体构建活动结构的能力,以便以分布式和无监督的方式发现树的图像组织。最后,对提出的技术进行了综合评估,并报告了选定的代表性结果。

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