利用ISURF-DLCNN对血细胞图像进行潜在白血病分类

Anandbabu Gopatoti, Sivaram Rajeyyagari
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引用次数: 0

摘要

全世界将有41.2万人被诊断为白血病,其中急性淋巴细胞白血病约占所有病例的12%。因此,在早期阶段发现白血病有可能挽救数百万人的生命。使用深度学习算法识别白血病是本文的主要重点,以及血细胞计数。使用中值滤波器对图像进行预处理,然后使用K-means聚类算法将数据分割成其组成部分。之后,收集到的特征被输入深度学习卷积神经网络(DLCNN),以便利用升级、加速和更健壮的特征描述符(ISURF)执行分类。所提出的技术在需要非常少的努力的情况下实现了99%的准确率,并且在总体性能方面优于传统方法。
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Potential leukaemia classification using ISURF-DLCNN from blood cell image
There will be a total of 412,000 persons across the world who are diagnosed with leukaemia, with acute lymphoblastic leukaemia accounting for around 12% of all cases. As a consequence of this, leukaemia detection at an earlier stage has the potential to save the lives of millions of individuals. The identification of leukaemia using deep learning algorithms is the primary emphasis of this paper, along with blood cell counts. The photos are preprocessed using median filters, and then the K-means clustering (KMC) algorithm is used to split the data into its constituent parts. After that, the gathered features are fed into a deep learning convolutional neural network (DLCNN) in order to perform classification utilising an upgraded, speeded-up, and more robust feature descriptor (ISURF). The proposed technique achieved an accuracy rate of 99 percent while requiring a very low amount of effort, and it outperformed conventional approaches in terms of overall performance.
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