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Decision combination of multiple classifiers for pattern classification: hybridisation of majority voting and divide and conquer techniques

机译:模式分类的多个分类器决策组合:多数表决与分而治之技术的混合

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In many applications of computer vision, combination of decisions from multiple sources is a very important way of achieving more accurate and robust classification. Many such techniques can be used, two of which are the Majority Voting and the Divide and Conquer techniques. The former achieves decision combination by measuring consensus among the participating classifiers and the latter achieves the same by dividing the problem into smaller problems and solving each of these sub-problems more efficiently. Both these approaches have their advantages and disadvantages. In this paper, a novel approach to combining these two techniques is presented. Although the success of the approach has been demonstrated in a typical application area of computer vision (recognition of complex and highly variable image data), the approach is completely generalised and is applicable to other task domains.
机译:在计算机视觉的许多应用中,来自多个来源的决策的组合是实现更准确和更可靠分类的一种非常重要的方法。可以使用许多这样的技术,其中两种是多数投票技术和分而治之技术。前者通过测量参与分类器之间的共识来实现决策组合,而后者通过将问题划分为较小的问题并更有效地解决这些子问题中的每一个来实现决策组合。这两种方法都有其优点和缺点。在本文中,提出了一种结合这两种技术的新颖方法。尽管该方法的成功已在计算机视觉的典型应用领域(识别复杂且高度可变的图像数据)中得到了证明,但该方法已被完全推广并适用于其他任务领域。

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