Execution Analysis of Clarity Locale Segmentation for Condition Recognition Utilizing Genetic Algorithm Method

S. Saranya, S. Sudha
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Abstract

The collection of fluid at the back of the fetal neck, known as nuchal translucency (NT), is linked to chromosomal abnormalities and early heart failure in the first trimester of pregnancy. Using the Co-Active Adaptive Neuro Fuzzy Inference System (CANFIS) classification algorithm, this research presents an effective way for recognising and localising the NT region in fetus images in which noise removed. Then, pattern features are extracted Initially, the noises in fetus images are detected and eliminated using directional filtering technique and then Gabor transform from the magnitude of Gabor transformed fetus image and then they are optimized using Genetic Algorithm (GA) approach. The extracted GLCM, ELBP and LTP features are integrated into feature vector for further classifications. The size of constructed feature vector is high and leads to high computation time for the classification process. These optimized feature set is classified using CANFIS. Finally, the graph cut segmentation method is used for segmenting the NT region. This proposed method is practically used in many health care centers in rural areas.
基于遗传算法的状态识别清晰区域分割执行分析
胎儿颈部后部积液,称为颈透明(NT),与染色体异常和妊娠前三个月早期心力衰竭有关。本研究利用协同自适应神经模糊推理系统(CANFIS)分类算法,提出了一种有效的识别和定位去噪胎儿图像中NT区域的方法。首先提取模式特征,利用方向滤波技术对胎儿图像中的噪声进行检测和消除,然后根据Gabor变换后胎儿图像的幅值进行Gabor变换,最后利用遗传算法对胎儿图像进行优化。将提取的GLCM、ELBP和LTP特征整合到特征向量中进行进一步分类。构造的特征向量的大小较大,导致分类过程的计算时间较长。使用CANFIS对这些优化后的特征集进行分类。最后,采用图割分割方法对NT区域进行分割。这种方法在农村地区的许多保健中心得到了实际应用。
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