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Multifractal detrended fluctuation analysis parallel optimization strategy based on openMP for image processing

机译:基于OpenMP进行图像处理的多重术后波动分析并行优化策略

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摘要

In the past few years, multifractal detrended fluctuation analysis (MF-DFA) method has been widely applied in the field of agricultural image processing. However, the agricultural image feature MF-DFA analyses involves a great deal of iterative processes and complex matrix operations, which require massive computation and processing time. In order to reduce processing time and improve analysis efficiency, we first develop a MF-DFA program that involves image preprocessing, image segmentation, local area accumulation matrix calculation, local area trend fitting, local area trend elimination, a global qth-order fluctuation function, and the Hurst index. Then, we analyze and compare MF-DFA each modules' performance characteristics and explore its parallelism according to various segmentation scales s. Lastly, we propose a parallel optimization scheme based on OpenMP for the MF-DFA. The results of our rigorous performance evaluation clearly demonstrate that our proposed parallel optimization scheme can efficiently use multicore capability to extract rape leaf image texture characteristics.
机译:在过去几年中,多重术后波动分析(MF-DFA)方法已广泛应用于农业图像处理领域。然而,农业图像特征MF-DFA分析涉及大量的迭代过程和复杂的矩阵操作,这需要大量的计算和处理时间。为了减少处理时间并提高分析效率,首先开发一个MF-DFA程序,涉及图像预处理,图像分割,局域累积矩阵计算,局域趋势拟合,局域趋势消除,全局Qth阶波动函数和赫斯特指数。然后,我们分析和比较MF-DFA每个模块的性能特征,并根据各种分段秤S探索其并行性。最后,我们提出了一种基于MF-DFA的OpenMP的并行优化方案。我们严格的性能评估结果清楚地表明我们所提出的并行优化方案可以有效地使用多核能力来提取强奸叶图像纹理特征。

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