Processing of echocardiographic images using segmentation, feature extraction and classification for detection of heart abnormality

Ayesha Heena , Nagashettappa Biradar , Najmuddin M Maroof , Vishwanath P
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引用次数: 1

Abstract

This article is mainly focused to accurately detecting any abnormality of heart if present using echocardiographic image of the patient. Heart abnormalities are now a days very common not only in India but all over the globe irrespective of age and gender. The detection of abnormality is achieved by using Artificial neural network (ANN) Classifier. However, processing of the image is achieved through preprocessing, segmentation, feature extraction and then achieving classification. Processing of image for removal of noise and enhancement is carried out as Preprocessing of image followed by segmentation. The most significant processing task is segmentation which is discussed in detail and preferable algorithm which overcomes the drawbacks and limitations of previous algorithms is proposed. This algorithm is a solution to all problems faced in previous algorithms. carried out using different techniques, three different segmentation techniques are discussed where algorithm proposed Reaction Diffusion Level Set Segmentation (RDLSS) is better than other three methods also overcome the problems faced in previous algorithms, then feature extraction is done to extract energy features where the novelty of the research is use of symlet, Debauches and Bio orthogonal filters for feature extraction and these features are used to classify the images as normal or abnormal using ANN classifier. The ANN classifier is effective and efficient resulting in accuracies of greater than 98%. The results are also clinically validated by doctors.

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基于分割、特征提取和分类的超声心动图图像处理心脏异常检测
本文的主要目的是利用超声心动图图像准确地检测出患者的心脏异常。心脏异常现在不仅在印度,而且在全球范围内都很常见,无论年龄和性别如何。利用人工神经网络(ANN)分类器实现异常检测。而对图像的处理是通过预处理、分割、特征提取,再进行分类来实现的。对图像进行去噪和增强处理,即对图像进行预处理,然后进行分割。详细讨论了最重要的处理任务是分割,并提出了克服以往算法缺点和局限性的优选算法。该算法解决了以往算法所面临的所有问题。采用不同的技术进行,讨论了三种不同的分割技术,其中提出的反应扩散水平集分割(RDLSS)算法优于其他三种方法,也克服了以往算法面临的问题,然后进行特征提取,提取能量特征,其中的新颖之处在于使用符号集;利用Debauches和Bio正交滤波器进行特征提取,并利用这些特征对图像进行正常或异常分类。人工神经网络分类器是有效和高效的,导致准确率大于98%。结果也得到了医生的临床验证。
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