Automatic Renal Defect Classification Using Inception
Keywords:
Confusion matrix, Deep learning, Inception, Rectified linear units, Renal diseases, Ultrasound B-modeAbstract
Deep feature representation is more effective to perform classification of renal ultrasound images. Increases in distance of the features would suppresses the classification accuracy, conventional methods for categorization of renal diseases using medical ultrasound have the lack of accuracy due to restricted way of feature extraction. The main objective of this work is to classify the different renal diseases using ultrasound brightness mode images. Inception is derived with multiple convolutions and down sampling of input image elements in order to produce the deep features for classification. The projection of average pooling with convolution layer makes exacts reduction of unwanted invariants on the input image. The activation function rectified linear units are used for fast computation of the network architecture. The performance metrics for the classification of renal diseases have analyzed using confusion matrix. Inception produces better results than traditional convolution networks. The performance accuracy for the classification of renal diseases are given by 87.43%.
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