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Fuzzy entropy thresholding and multi-scale morphological approach for microscopic image enhancement

机译:微观图像增强的模糊熵阈值与多尺度形态学方法

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Microscopic images provide lots of useful information for modern diagnosis and biological research. However, due to the unstable lighting condition during image capturing, two main problems, i.e., high-level noises and low image contrast, occurred in the generated cell images. In this paper, a simple but efficient enhancement framework is proposed to address the problems. The framework removes image noises using a hybrid method based on wavelet transform and fuzzy-entropy, and enhances the image contrast with an adaptive morphological approach. Experiments on real cell dataset were made to assess the performance of proposed framework. The experimental results demonstrate that our proposed enhancement framework increases the cell tracking accuracy to an average of 74.49%, which outperforms the benchmark algorithm, i.e., 46.18%.
机译:显微图像为现代诊断和生物学研究提供了许多有用的信息。然而,由于图像捕获期间的不稳定照明条件,在生成的小区图像中发生了两个主要问题,即高级噪声和低图像对比度。在本文中,提出了一种简单但有效的增强框架来解决问题。该框架使用基于小波变换和模糊熵的混合方法去除图像噪声,并通过自适应形态学方法增强图像对比。进行了实际细胞数据集的实验,评估了所提出的框架的性能。实验结果表明,我们提出的增强框架将电池跟踪精度增加到平均值为74.49%,这优于基准算法,即46.18%。

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