一种尿液沉淀物显微照片中红细胞自动检测方法

Qiming Sun, Sen Yang, Changyin Sun, Wankou Yang
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引用次数: 7

摘要

尿液沉淀物显微照片由多种有形成分组成,如红细胞(RBCS)、白细胞(WBCs)、管状和晶体等。尿液沉积物显微照片的定量分析对传染病和循环系统疾病的诊断具有重要意义。传统的尿沉渣分析方法依赖于医务人员的观察,工作量巨大。随着图像处理和模式识别技术的发展,尿液沉积物分析的自动化已成为可能。然而,由于尿液沉积物显微照片的复杂性,自动分析的准确性和效率仍处于较低水平。本文提出了一种尿液沉淀物显微照片中红细胞的自动检测方法。我们借用了通道特征的概念,通道特征包括不同类型的颜色通道特征、梯度幅度通道特征等。我们采用变异和鉴别的聚合通道特征,结合改进的软级联adaboost分类器对尿液沉积物显微图像中的红细胞进行检测。在收集到的具有挑战性的数据集上,与使用定向梯度直方图(HOG)的支持向量机(SVM)相比,该方法显示出具有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automatic method for red blood cells detection in urine sediment micrograph
Urine sediment micrograph consists of various tangible components, such as red blood cells (RBCS), white blood cells (WBCs), tube and crystal, etc. Quantitative analysis of urine sediment micrograph is of great significance for infectious diseases and circulatory diseases diagnosis. The traditional method about urine sediment analysis depends on the observation of medical staff, in that case the workload is huge. With the development of image processing and pattern recognition techniques, the automation of urine sediment analysis can be realized. However, due to the complexity of the urine sediment micrograph, the accuracy and efficiency for automatic analysis are still in a low level somewhat. In this paper, an automatic detection method is proposed for the RBCs in the urine sediment micrograph. We borrow the concept of channel features which contain diverse type color channel features, and gradient magnitude channel features, etc. We adopt aggregate channel features which are variant and discriminative, combing improved soft-cascade adaboost classifier for RBCs detection in urine sediment micrograph. On collected challenging dataset, it shows competitive performance compared with Support Vector Machine (SVM) using Histogram of Oriented Gradient (HOG).
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