2020
DOI: 10.1007/s12065-019-00344-0
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A novel stacked sparse denoising autoencoder for mammography restoration to visual interpretation of breast lesion

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Cited by 6 publications
(7 citation statements)
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“… Key component of building a (B) deep belief network is a (A) restricted Boltzmann machine (A) (Ghosh et al, 2021 ). …”
Section: Vision-based Deep Learning Systemmentioning
confidence: 99%
“… Key component of building a (B) deep belief network is a (A) restricted Boltzmann machine (A) (Ghosh et al, 2021 ). …”
Section: Vision-based Deep Learning Systemmentioning
confidence: 99%
“…This architecture can automatically extract the features of shear wave elastography and distinguish between benign and malignant tumors. Ghosh et al identified breast ultrasonography lesions using stacked denoising autoencoders, which is superior to conventional machine learning techniques (22). Yap et al employed three deep learning approaches (patch-based Lenet, U-net, and pre-trained FCN-AlexNet transfer learning method) for the detection of breast lesions by ultrasound, and then compared their performance to that of four cutting-edge algorithms, and their findings indicated that transfer learning has a superior learning effect (23).…”
Section: Intelligent Application Of Breast Ultrasound Imagingmentioning
confidence: 99%
“…To minimize the overfitting and increase the learning accuracy, dropout mechanism is applied in dense layers in random manners. 14,26 The fully connected layer (F c ) takes all neurons from the previous layer, either the convolution layer or another fully connected layer, and connects them to every single neuron in its layer. Suppose, given N training samples…”
Section: Building a Cnns For Mecnnifs Schemementioning
confidence: 99%
“…They performed better not only in case of image classification but also in some work of medical imaging including image segmentation, image enhancement, restoration, anomaly detection, and so on. [12][13][14] Basically, deep CNNs learn abstract features from raw pixel data through its hierarchical network properties. 12,15,16 Guo et al 17 developed the performance of multilayer perceptron as employed to image patches and acquired competitive outcomes than the state-of-the-art methods.…”
Section: Introductionmentioning
confidence: 99%
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