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Project3-ImageClassification-ConcreteCrack

To classify the image of concrete wheteher it is crack or not link: https://data.mendeley.com/datasets/5y9wdsg2zt/2

1. Summary

  • To make classify the image of concrete
  • to predict the new image of concrete
  • deal with a large dataset
  • the deep learning model is used and trained
  • The model use Transfer Learning from mobilenetV2

2. IDE and Framework

  • The project built with Spyder as the main IDE
  • use Tensorflow, Keras, Numpy, Mathplot

3. Methodology

  • The folder contain 2 type of image which is positive(the concrete is crack) and negative ( the concrete is not crack).
  • There are 40 000 images, 20 000 in positive folder and 20 000 in negative folder.
  • The we classify the images into training and validation dataset. 70% of total images used for training and 30% of images for validation test. 12 000 use for validation and 28 000 for training
  • we create a pipeline for data augmentation including random flip and random rotation, to increate data's varities and prevent verfit in data training.

Model

  • use base model from mobilenetV2, uninclude the top layer ( generally for classification task) and freeze the trainable layer
  • Set the base model layer below 100 layer into false, so that the model will not update its weight / paramter during training;

image

  • Create a classification layer as top layer of the base model. Use global Average Pooling 2D, activation function of 'softmax' and number of class is 2 because we want to classify the image of concrete into 2; positive or negative.
  • Use Functional APi in creating Transfer Learning model:

image

  • Now, we need to train the model to update the trainable parameters.

Model Evaluate

-The model is compile with optimizer of 'adam' with learning rate = 0.001, loss= Sparse Crossentropy', metrics of accuracy, batch_size of 32 and epochs of 200

  • The value is display by using TensorBoard:

  • image

image

Model Prediction

Predicting a new image

image

image

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Make image classification of the concrete, whether it is crack or not. Image Classification

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