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Implementing a Parallel Image Edge Detection Algorithm Based on the Otsu-Canny Operator on the Hadoop Platform

机译:在Hadoop平台上实现基于Otsu-Canny运算符的并行图像边缘检测算法

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The Canny operator is widely used to detect edges in images. However, as the size of the image dataset increases, the edge detection performance of the Canny operator decreases and its runtime becomes excessive. To improve the runtime and edge detection performance of the Canny operator, in this paper, we propose a parallel design and implementation for an Otsu-optimized Canny operator using a MapReduce parallel programming model that runs on the Hadoop platform. The Otsu algorithm is used to optimize the Canny operator’s dual threshold and improve the edge detection performance, while the MapReduce parallel programming model facilitates parallel processing for the Canny operator to solve the processing speed and communication cost problems that occur when the Canny edge detection algorithm is applied to big data. For the experiments, we constructed datasets of different scales from the Pascal VOC2012 image database. The proposed parallel Otsu-Canny edge detection algorithm performs better than other traditional edge detection algorithms. The parallel approach reduced the running time by approximately 67.2% on a Hadoop cluster architecture consisting of 5 nodes with a dataset of 60,000 images. Overall, our approach system speeds up the system by approximately 3.4 times when processing large-scale datasets, which demonstrates the obvious superiority of our method. The proposed algorithm in this study demonstrates both better edge detection performance and improved time performance.
机译:Canny运算符被广泛用于检测图像中的边缘。但是,随着图像数据集的大小增加,Canny算子的边缘检测性能降低,并且其运行时间变得过多。为了提高Canny运算符的运行时和边缘检测性能,在本文中,我们使用在Hadoop平台上运行的MapReduce并行编程模型,为Otsu优化的Canny运算符提出了并行设计和实现。 Otsu算法用于优化Canny运算符的双重阈值并提高边缘检测性能,而MapReduce并行编程模型则有助于Canny运算符进行并行处理,从而解决了Canny边缘检测算法在处理时出现的处理速度和通信成本问题。适用于大数据。对于实验,我们从Pascal VOC2012图像数据库构建了不同比例的数据集。提出的并行Otsu-Canny边缘检测算法的性能优于其他传统边缘检测算法。并行方法在由5个节点组成的Hadoop集群体系结构上包含6万张图像的数据集减少了约67.2%的运行时间。总体而言,当处理大规模数据集时,我们的方法系统可使系统速度提高约3.4倍,这证明了我们方法的明显优势。本研究中提出的算法展示了更好的边缘检测性能和改进的时间性能。

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