Machine learning based biomedical image processing for echocardiographic images
The popularity of Artificial intelligence and machine learning have prompted researchers to use it in the recent researches. The proposed method uses K-Nearest Neighbor (KNN) algorithm for segmentation of medical images, extracting of image features for analysis by classifying the data based on the...
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creator | Heena, Ayesha Biradar, Nagashettappa Maroof, Najmuddin M Bhatia, Surbhi Agarwal, Rashmi Prasad, Kanta |
description | The popularity of Artificial intelligence and machine learning have prompted researchers to use it in the recent researches. The proposed method uses K-Nearest Neighbor (KNN) algorithm for segmentation of medical images, extracting of image features for analysis by classifying the data based on the neural networks. Classification of the images in medical imaging is very important, KNN is one suitable algorithm which is simple, conceptual and computational, which provides very good accuracy in results. KNN algorithm is a unique user-friendly approach with wide range of applications in machine learning algorithms which are majorly used for the various image processing applications including classification, segmentation and regression issues of the image processing. The proposed system uses gray level co-occurrence matrix features. The trained neural network has been tested successfully on a group of echocardiographic images, errors were compared using regression plot. The results of the algorithm are tested using various quantitative as well as qualitative metrics and proven to exhibit better performance in terms of both quantitative and qualitative metrics in terms of current state-of-the-art methods in the related area. To compare the performance of trained neural network the regression analysis performed showed a good correlation. |
doi_str_mv | 10.48550/arxiv.2303.09103 |
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subjects | Algorithms Artificial intelligence Computer Science - Computer Vision and Pattern Recognition Computer Science - Learning Feature extraction Image classification Image processing Image segmentation K-nearest neighbors algorithm Machine learning Medical imaging Neural networks Regression analysis |
title | Machine learning based biomedical image processing for echocardiographic images |
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