MIINet: An Image Quality Improvement Framework for Supporting Medical Diagnosis

28 Nov 2020 Quan Huu Cap Hitoshi Iyatomi Atsushi Fukuda

Medical images have been indispensable and useful tools for supporting medical experts in making diagnostic decisions. However, taken medical images especially throat and endoscopy images are normally hazy, lack of focus, or uneven illumination... (read more)

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METHOD TYPE
GAN Least Squares Loss
Loss Functions
Instance Normalization
Normalization
Convolution
Convolutions
Sigmoid Activation
Activation Functions
Cycle Consistency Loss
Loss Functions
Residual Connection
Skip Connections
PatchGAN
Discriminators
Tanh Activation
Activation Functions
Leaky ReLU
Activation Functions
ReLU
Activation Functions
Batch Normalization
Normalization
Residual Block
Skip Connection Blocks
CycleGAN
Generative Models