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Stochastic Diffusion Search: A Comparison of Swarm Intelligence Parameter Estimation Algorithms with RANSAC

机译:随机扩散搜索:具有RANSAC的群智能参数估计算法的比较

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Stochastic diffusion search (SDS) is a multi-agent global optimisation technique based on the behaviour of ants, rooted in the partial evaluation of an objective function and direct communication between agents. Standard SDS, the fundamental algorithm at work in all SDS processes, is presented here. Parameter estimation is the task of suitably fitting a model to given data; some form of parameter estimation is a key element of many computer vision processes. Here, the task of hyperplane estimation in many dimensions is investigated. Following RANSAC (random sample consensus), a widely used optimisation technique and a standard technique for many parameter estimation problems, increasingly sophisticated data-driven forms of SDS are developed. The performance of these SDS algorithms and RANSAC is analysed and compared for a hyperplane estimation task. SDS is shown to perform similarly to RANSAC, with potential for tuning to particular search problems for improved results.
机译:随机扩散搜索(SDS)是一种基于蚂蚁行为的多代理全局优化技术,植根于目标函数的部分评估以及代理之间的直接通信。本文介绍了标准SDS,它是所有SDS流程中起作用的基本算法。参数估计是使模型适合给定数据的任务;参数估计的某种形式是许多计算机视觉过程的关键要素。在这里,研究了超维估计的多维任务。继RANSAC(随机样本共识),广泛使用的优化技术和用于许多参数估计问题的标准技术之后,开发了越来越复杂的数据驱动形式的SDS。针对超平面估计任务,分析并比较了这些SDS算法和RANSAC的性能。 SDS表现出与RANSAC相似的性能,具有调整特定搜索问题以提高结果的潜力。

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