A. E. Minarno, Kharisma Muzaki Ghufron, Trifebi Shina Sabrila, Lailatul Husniah, F. D. S. Sumadi
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引用次数: 7
摘要
基于内容的医学图像检索(Content Based Medical Image Retrieval, CBMIR)是一种通过将查询图像中的特征与数据库中图像中的特征进行比较来检索相关图像的常用技术。然而,目前,由于该领域的研究不足,CBMIR对乳腺癌图像的相关研究仍然具有挑战性。以往的研究注重特征提取过程,存在性能低、信息错误等问题。因此,本研究旨在利用基于CNN的Autoencoder方法来减少特征提取过程中的错误信息,提高性能结果。本研究使用的数据集是BreakHis数据集。总体而言,使用基于CNN的Autoencoder方法进行乳腺癌图像检索的结果比之前的研究方法取得了更高的性能,在主类数据集类别中平均精度为0.9237,在子类数据集类别中平均精度为0.6825。
CNN Based Autoencoder Application in Breast Cancer Image Retrieval
Content Based Medical Image Retrieval (CBMIR) is considered as a common technique to retrieve relevant images by comparing the features contained in the query image with the features contained in the image located in the database. Currently, the study related to CBMIR on breast cancer image however remains challenging due to inadequate research in such area. Previous study has a low performance and misinformation emphasizing the feature extraction process. Therefore, this study aims to utilize the CNN based Autoencoder method to minimize misinformation in the feature extraction process and to improve the performance result. The dataset used in this study is the BreakHis dataset. Overall, the results of image retrieval in breast cancer applying the CNN based Autoencoder method achieved higher performance compared to the method used in the previous study with an average precision of 0.9237 in the mainclass dataset category and 0.6825 in the subclass dataset category.