Tang Sheng, Chen Si-ping
Post-Doctoral Research Station, Shenzhen University, Shenzhen 518060, China.
J Zhejiang Univ Sci B. 2009 Sep;10(9):648-58. doi: 10.1631/jzus.B0930162.
Severe sex ratio imbalance at birth is now becoming an important issue in several Asian countries. Its leading immediate cause is prenatal sex-selective abortion following illegal sex identification by ultrasound scanning. In this paper, a fast automatic recognition and location algorithm for fetal genital organs is proposed as an effective method to help prevent ultrasound technicians from unethically and illegally identifying the sex of the fetus. This automatic recognition algorithm can be divided into two stages. In the 'rough' stage, a few pixels in the image, which are likely to represent the genital organs, are automatically chosen as points of interest (POIs) according to certain salient characteristics of fetal genital organs. In the 'fine' stage, a specifically supervised learning framework, which fuses an effective feature data preprocessing mechanism into the multiple classifier architecture, is applied to every POI. The basic classifiers in the framework are selected from three widely used classifiers: radial basis function network, backpropagation network, and support vector machine. The classification results of all the POIs are then synthesized to determine whether the fetal genital organ is present in the image, and to locate the genital organ within the positive image. Experiments were designed and carried out based on an image dataset comprising 658 positive images (images with fetal genital organs) and 500 negative images (images without fetal genital organs). The experimental results showed true positive (TP) and true negative (TN) results from 80.5% (265 from 329) and 83.0% (415 from 500) of samples, respectively. The average computation time was 453 ms per image.
出生性别比例严重失衡如今正成为几个亚洲国家的一个重要问题。其直接主要原因是超声扫描非法鉴定性别后进行的产前性别选择性堕胎。本文提出了一种用于胎儿生殖器官的快速自动识别与定位算法,作为一种有效方法来帮助防止超声技术人员不道德且非法地鉴定胎儿性别。这种自动识别算法可分为两个阶段。在“粗略”阶段,根据胎儿生殖器官的某些显著特征,图像中一些可能代表生殖器官的像素会自动被选为兴趣点(POI)。在“精细”阶段,一个将有效特征数据预处理机制融合到多分类器架构中的特定监督学习框架被应用于每个POI。该框架中的基本分类器从三种广泛使用的分类器中选取:径向基函数网络、反向传播网络和支持向量机。然后综合所有POI的分类结果来确定图像中是否存在胎儿生殖器官,并在阳性图像中定位生殖器官。基于一个包含658张阳性图像(有胎儿生殖器官的图像)和500张阴性图像(无胎儿生殖器官的图像)的图像数据集设计并进行了实验。实验结果显示,分别有80.5%(329个样本中的265个)和83.0%(500个样本中的415个)的样本得到了真阳性(TP)和真阴性(TN)结果。平均每张图像的计算时间为453毫秒。