An Evaluation of VGG16 Binary Classifier Deep Neural Network for Noise and Blur Corrupted Images

Deep learning networks has become an important tool for image classification applications.Distortions on images may cause the performance of a classifier to decrease significantly.In Cooler the present paper, a comparative investigation for binary classification performance of VGG16 network under corrupted inputs has been presented.

For this purpose, images corrupted at various levels and fixed levels with Gaussian noise, Salt and Pepper noise and blur effect were used for testing.Convolutional layers of the VGG16 were frozen except the last three convolutional layers and a dense layer for binary classification was added.According to experimental results, as the effect of distortion is increased, performance of the deep learning classifier drops significantly.

In the case Girths of augmented training with distortion effects, the results were improved significantly.

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