End-To-End Gender Determination By Images Of An Human Eye

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Yasaswini Paladugu, Dr. Ramesh Sekaran

Abstract

For immediate gender classification based on face eye images, a convolutional neural network (CNN) is presented.The suggested architecture has much less design complexity than previous CNN systems used for pattern recognition. With the use of computer vision, we can train a computer to recognize and classify things in the physical world. In this view, computer vision entails developing mathematical models that can simulate how a human's visual system and brain work. The goal is to teach computers how to recognize objects in pictures and movies. The science of computer vision and imaging makes extensive use of CNNs, a type of deep neural network. Object recognition, picture labeling, and similarity grouping are all possible with the help of convolutional neural networks (CNNs). The Sequential model will be our starting point. Last but not least, CNN is constructed using a number of layers, including an input layer, an output layer, and multiple hidden layers. Additionally, fully connected layers, convolutional, an activation function layer (typically ReLU or Softmax), normalisation layers, and pooling layers are all included in a CNN's hidden layers. This network was trained with a Sequential model, binary cross volatility as the loss function, and RMSProp as the operator. Dphi data set, which contains around 9000 pictures, is used to evaluate the suggested CNN solution. As a result of our efforts, we are able to attain a 95.78% success rate in In less than 0.27 milliseconds, a neural network can analyze and label a 32 x 32 pixel facial image, giving it the ability to scan more than 3700 images per second. A training converges within 5 epochs. These findings demonstrate that the suggested CNN is a viable method for instantaneous gender recognition.

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