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A novel algorithm based on visual saliency attention for localization and segmentation in rapidly-stained leukocyte images

机译:基于视觉显着性注意力的新算法在快速染色的白细胞图像中的定位和分割

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摘要

In this paper, we propose a fast hierarchical framework of leukocyte localization and segmentation in rapidly-stained leukocyte images (RSLI) with complex backgrounds and varying illumination. The proposed framework contains two main steps. First, a nucleus saliency model based on average absolute difference is built, which locates each leukocyte precisely while effectively removes dyeing impurities and erythrocyte fragments. Secondly, two different schemes are presented for segmenting the nuclei and cytoplasm respectively. As for nuclei segmentation, to solve the overlap problem between leukocytes, we extract the nucleus lobes first and further group them. The lobes extraction is realized by the histogram-based contrast map and watershed segmentation, taking into account the saliency and similarity of nucleus color. Meanwhile, as for cytoplasm segmentation, to extract the blurry contour of the cytoplasm under instable illumination, we propose a cytoplasm enhancement based on tri-modal histogram specification, which specifically improves the contrast of cytoplasm while maintaining others. Then, the contour of cytoplasm is quickly obtained by extraction based on parameter-controlled adaptive attention window. Furthermore, the contour is corrected by concave points matching in order to solve the overlap between leukocytes and impurities. The experiments show the effectiveness of the proposed nucleus saliency model, which achieves average localization accuracy with F1-measure greater than 95%. In addition, the comparison of single leukocyte segmentation accuracy and running time has demonstrated that the proposed segmentation scheme outperforms the former approaches in RSLI.
机译:在本文中,我们提出了一个快速分层的白细胞定位和分割的快速框架,该背景具有复杂的背景和变化的光照的快速染色的白细胞图像(RSLI)。拟议的框架包含两个主要步骤。首先,建立基于平均绝对差的核显着性模型,该模型可精确定位每个白细胞,同时有效去除染色杂质和红细胞碎片。其次,提出了两种不同的方案分别分割细胞核和细胞质。至于细胞核分割,为了解决白细胞之间的重叠问题,我们首先提取细胞核叶,然后将它们进一步分组。通过基于直方图的对比图和分水岭分割来实现叶的提取,同时考虑了细胞核颜色的显着性和相似性。同时,对于细胞质的分割,为了提取不稳定条件下细胞质的模糊轮廓,我们提出了一种基于三峰直方图规范的细胞质增强方法,该方法可以在保持其他细胞质的同时,特别提高细胞质的对比度。然后,通过基于参数控制的自适应注意窗口的提取,快速获得细胞质的轮廓。此外,通过凹点匹配来校正轮廓,以解决白细胞和杂质之间的重叠。实验证明了所提出的核显着性模型的有效性,该模型在F1度量大于95%的情况下达到了平均定位精度。此外,对单个白细胞分割精度和运行时间的比较表明,所提出的分割方案优于RSLI中以前的方法。

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