Selected article for: "deep learning and medical image"

Author: Saban Ozturk; Umut Ozkaya; Mucahid Barstugan
Title: Classification of Coronavirus Images using Shrunken Features
  • Document date: 2020_4_6
  • ID: 2l1zw19o_5
    Snippet: In addition, interest in hand-crafted methods has begun to decline with the introduction of CNN and other automated feature extraction techniques. Convolutional neural network architecture is a deep learning architecture that automatically extracts and classifies images from images [15] . Özyurt et al. [16] proposed a hybrid model called fused perceptual hash-based CNN to reduce the classifying time of liver CT images and maintain performance. X.....
    Document: In addition, interest in hand-crafted methods has begun to decline with the introduction of CNN and other automated feature extraction techniques. Convolutional neural network architecture is a deep learning architecture that automatically extracts and classifies images from images [15] . Özyurt et al. [16] proposed a hybrid model called fused perceptual hash-based CNN to reduce the classifying time of liver CT images and maintain performance. Xu et al. [17] used a transfer learning strategy to deal with the medical image unbalance problem. Then, they compared GoogleNet, ResNet101, Xception, and MobileNetv2 performances. Lakshmanaprabu et al. [18] analyzed the CT scan of lung images using the assistance of optimal deep neural network and linear discriminate analysis. Gao et al. [19] converted raw CT images to low attenuation, raw images, and high attenuation pattern rescale. Then, they resampled these three samples and classified them using CNN.

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