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基于图的矿石颗粒图像检测技术

张莉,储茂祥,邓鑫, 陈智博

Journal of Hefei University of Technology(Natural Science)(2021)

Cited 2|Views11
Abstract
对于矿石颗粒图像,传统基于图的图像分割方法精度低.为了实现矿石颗粒图像的细分割,文章提出一种改进的基于图的图像分割方法.该方法重新定义了判定函数,度量了区域之间的关系,能够提炼出更多目标细节.所提分割方法获得了更为准确的结果,提高了精确度.
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