Deepening into the suitability of using pre-trained models of ImageNet against a lightweight convolutional neural network in medical imaging: an experimental study
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Mohammed A. Fadhel | Omran Al-Shamma | Laith Alzubaidi | Jose Santamaría | Jinglan Zhang | Ibraheem Kasim Ibraheem | Ayad Q. Al-Dujaili | Ahmed H. Alkenani | Ye Duan | J. Santamaría | Jinglan Zhang | I. Ibraheem | M. Fadhel | Ayad Al-dujaili | Laith Alzubaidi | O. Al-Shamma | Ye Duan
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