[SOLVED] MACHINE LEARNING-Assignment3

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Handwritten Digit classification using MNIST dataset. MNIST is a dataset of 60,000 training set images of  handwritten single digits between 0 and 9, each image is a 28×28 pixel square.

The task is to classify a given image of a handwritten digit into one of 10 classes representing integer  values from 0 to 9, inclusively.

  • Do Preprocessing step (Normalization). Rescale pixel values to the range [0-1].  Convert Datatype of pixels to float  Divide each image by 255.
  • Build a 4 different architecture convolutional neural network model that can detect the digit of a given image. (change number of convolutional layer, pooling layers, …)
  • Apply cross validation during training. The training dataset is shuffled prior to being split.
  • Evaluate your models using accuracy.