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Entropy based divergence for leukocyte image segmentation

机译:基于熵的发散度白细胞图像分割

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摘要

This work aims to develop the divergence measures based on Renyi's and Yager's entropies for segmenting the leukocyte nuclei from microscopic image of peripheral blood smear. Such measure minimizes the separation between the actual and ideal thresholded image. Finally, these measures have been compared with Shannon entropy based divergence algorithm. In fact, it is observed here that Yager's measure provides better result in segmenting the leukocyte nuclei from the background of the image. The effectiveness of our proposed methods is demonstrated on blood cytopathological images of normal and chronic myelogenous leukemia (CML) samples.
机译:这项工作旨在发展基于Renyi和Yager熵的散度测量方法,用于从外周血涂片的显微图像中分割白细胞核。这样的措施使实际阈值图像和理想阈值图像之间的距离最小化。最后,将这些测度与基于香农熵的发散算法进行了比较。实际上,在这里可以观察到Yager的测量在从图像背景分割白细胞核方面提供了更好的结果。我们提出的方法的有效性在正常和慢性骨髓性白血病(CML)样本的血液细胞病理学图像上得到了证明。

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