Research Article
Security and Privacy of Cloud- and IoT-Based Medical Image Diagnosis Using Fuzzy Convolutional Neural Network
| | Algorithm | Parameters | Values |
| | KNN | Number of neighbours | 5 | | Distance function | Euclidean distance | | (N × D) training data | N, no. of samples; D, dimensionality of each data point | | (M × D) testing data | M, no. of data points | | NB | Model | Gaussian base distribution | | N | Size of data | | DT | Splitting criterion | Gini | | Minimum instances per leaf | 2 | | ANN | Size of input layer | Size of data | | Type of ANN | Feed-forward | | Number of neurons | 20 | | Training and testing set | 75% of training and 25% of testing set | | FCNN | Input | 56 × 28 | | Fuzzification | 2 × (input)-Gaussian MF | | In and out channel range | 1 to 100 | | Stride and padding | 1 & 0 | | Conv3x d | 2 × (in & out channels, kernel size = (3 × 128), stride & padding), ReLU, Max_Pooling (55 × 1) | | Conv4x d | 2 × (in & out channels, kernel size = (4 × 128), stride & padding), ReLU, Max_Pooling (54 × 1) | | Conv5x d | 2 × (in & out channels, kernel size = (5 × 128), stride & padding), ReLU, Max_Pooling (53 × 1) | | Defuzzification | 2 × 128 |
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