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Fuzzy Entropy-based Object Segmentation with an Inertia-Adaptive PSO

机译:基于模糊的基于熵的对象分割,具有惯性自适应PSO

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Particle Swarm Optimization (PSO) has recently emerged as a simple yet very efficient algorithm for global optimization over continuous spaces. This article describes the application of an improved variant of PSO to the segmentation of objects from complicated real life images. The segmentation task amounts to finding a robust and optimal threshold that separates an object from a background frame. It has been formulated as an optimization problem using the maximum fuzzy entropy principle. Experimentation with several real life images and comparison with the state of the art methods for automatic object segmentation reflect the superiority of the proposed approach in terms of accuracy of the final results and fast computational speed.
机译:粒子群优化(PSO)最近被揭示为连续空格的全局优化算法简单而非常有效。本文介绍了从复杂的现实生活图像分割对象的改进变型的应用。分段任务金额才能找到从背景帧中分隔对象的强大和最佳阈值。使用最大模糊熵原理,它已被制定为优化问题。与若干现实生活图像的实验和与最先进的自动对象分割的状态的比较反映了在最终结果的准确性和快速计算速度方面的提出方法的优越性。

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