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An improved K-means clustering algorithm in agricultural image segmentation

机译:农业图像分割中的改进的K均值聚类算法

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摘要

Image segmentation is the first important step to image analysis and image processing. In this paper, according to color crops image characteristics, we firstly transform the color space of image from RGB to HIS, and then select proper initial clustering center and cluster number in application of mean-variance approach and rough set theory followed by clustering calculation in such a way as to automatically segment color component rapidly and extract target objects from background accurately, which provides a reliable basis for identification, analysis, follow-up calculation and process of crops images. Experimental results demonstrate that improved k-means clustering algorithm is able to reduce the computation amounts and enhance precision and accuracy of clustering.
机译:图像分割是图像分析和图像处理的第一个重要步骤。本文针对彩色作物的图像特征,首先将图像的色彩空间从RGB转换为HIS,然后应用均值方差法和粗糙集理论选择合适的初始聚类中心和聚类数,然后进行聚类计算。这种自动快速地对颜色成分进行分割并准确地从背景中提取目标对象的方法,为作物图像的识别,分析,后续计算和处理提供了可靠的基础。实验结果表明,改进的k均值聚类算法能够减少计算量,提高聚类的精度和准确性。

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