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Improved Image Segmentation Using an Inference Fusion Architecture

机译:使用推理融合架构改进的图像分割

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摘要

Image segmentation, a key component in many Automatic Target Recognition (ATR) systems, has received considerable attention in the research community in recent years. A variety of segmentation approaches exist, and attempts have been made to combine various approaches in order to find more robust solutions. In this paper, the authors describe an inference fusion architecture for combining individual segmentation concepts which results in improved performance over the individual algorithms. We consider segmentation algorithms with several disparate cost functions as experts with a narrowly defined set of goals. The information obtained from each expert is combined and weighted with available evidence using an agent based inference system, resulting in an adaptive, robust and highly flexible image segmentation. Results obtained by applying this approach will be presented.
机译:图像分割是许多自动目标识别(ATR)系统中的关键组件,近年来在研究界引起了相当大的关注。存在多种分割方法,并且已经尝试将各种方法进行组合以找到更可靠的解决方案。在本文中,作者描述了一种推理融合架构,用于组合单个分割概念,从而比单个算法提高了性能。我们将具有几个不同成本函数的细分算法视为具有狭窄定义目标集的专家。使用基于代理的推理系统将从每位专家获得的信息进行合并,并与可用证据进行加权,从而实现自适应,鲁棒和高度灵活的图像分割。将介绍通过这种方法获得的结果。

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