A Shape Retentive Filtering Algorithm for Post-processing of Instance Contour of Cervical Cell Based on Level Set Method

Guangqi Liu, Qinghai Ding, Moran Ju, Haibo Luo, Tianming Jin, Miao He
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引用次数: 1

Abstract

A novel filtering algorithm is proposed based on level set method (LSM) and linear time Euclidean distance transform (LET) algorithm in this paper, which has the property of shape retention and thus is suitable for post-processing of the initial contours for contacting instances in digital Pap image. As one of our contributions, we propose two new metrics based on the pixel-level average false positive rate and false negative rate that used by baseline method. A significant decrease in pixel-level average false positive rate (FP) by 62% can obtain by our proposed method. The result of quantitative and qualitative evaluation shows that our proposed shape retentive filtering algorithm (SRFA) can effectively filter out the false positive fragments of the initial instance contour of cervical cells from the ISBI-2014 dataset.
基于水平集法的宫颈细胞实例轮廓后处理的形状保持滤波算法
本文提出了一种基于水平集法(LSM)和线性时间欧氏距离变换(LET)算法的滤波算法,该算法具有形状保持的特性,适用于数字Pap图像中接触实例初始轮廓的后处理。作为我们的贡献之一,我们提出了基于基线方法使用的像素级平均假阳性率和假阴性率的两个新指标。采用该方法可以使像素级平均假阳性率(FP)显著降低62%。定量和定性评价结果表明,我们提出的形状保留滤波算法(SRFA)可以有效地滤除ISBI-2014数据集中宫颈细胞初始实例轮廓的假阳性片段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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