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An Image classifier to identify whether the given image is Batman or Superman using a CNN with high accuracy. (From getting images from google to saving our trained model for reuse.)

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BvS

Dawn of AI
An Image classifier to identify whether the given image is Batman or Superman using a CNN with high accuracy. (Without using Dogs Vs Cats, From getting images from google to saving our trained model for reuse.)

What are we gonna do:

  • We will build a 3 layered Community Standard CNN Image classifier to classify whether the given image is a image of Batman or Superman.
  • Learn how to build a model from scratch in Tensoflow which is accurate.
  • How to train and test it.
  • How to save and use it further.

Setup:

  • Python 3.5
  • Tensorflow 1.5.0
  • CUDA 9.0
  • CUDANN 7.0.5

Indepth explanation of each section:
Medium post with detailed step by step explanation for deeper understanding of CNNs and architecture of the network.

Data:

Collect data:

  • Google Images Downloader.It's fast, easy, simple and efficient.
  • I've collected 300 images each for Supes and Batsy respectively, But more data is highly preferable. Try to collect as much clean data as possible.

Augmentation:

  • 300 is not a number at all in Deep learning. So, we must Augment the images to get more images from whatever we collected.
  • You can use the following to do it easily, Augmentor.
  • This is the code I've used for augmenting my images.
  • Same image, augmented using various transformations. I had 3500 images each after augmentation for each class.
    Careful: While Augmenting, be careful about what kind of transformation you use. You can mirror flip a Bat Logo but cannot make it upside down.

Standardize:

  • After Augmentation, Make a folder named rawdata in the current working directory.
  • Create folders with their respective class names and put all the images in their respective folders.
  • Run this file in the same directory as rawdata.
  • This will resize all the images to a standard resolution and same format and put it in a new folder named data.
    Note: As I embedded it in trainer.py, it is unnecessary to run it explicitly.
    Update :You can get the data folder itself from here(50mb). Just download and extract!.

Architecture:

A Simple Architecture:

For detailed explanation of Architecture and CNNs please read the medium post.
I've explained CNNs in depth over there, I highly recommend reading it.

In code:

      #level 1 convolution
      network=model.conv_layer(images_ph,5,3,16,1)
      network=model.pooling_layer(network,5,2)
      network=model.activation_layer(network)

      #level 2 convolution
      network=model.conv_layer(network,4,16,32,1)
      network=model.pooling_layer(network,4,2)
      network=model.activation_layer(network)

      #level 3 convolution
      network=model.conv_layer(network,3,32,64,1)
      network=model.pooling_layer(network,3,2)
      network=model.activation_layer(network)

      #flattening layer
      network,features=model.flattening_layer(network)

      #fully connected layer
      network=model.fully_connected_layer(network,features,1024)
      network=model.activation_layer(network)
      
      #output layer      
      network=model.fully_connected_layer(network,1024,no_of_classes)

A Brief Architecture:

With dimentional informations:

Training:

  • Clone this repo.

  • Do the Augmentation.

  • Put the images in thier respective folders in rawdata.

     rawdata/batman: 3810 images
     rawdata/superman: 3810 images
    

Update :You can get the data folder itself from here(50mb). Just download and extract!.

Our file structure should look like this,

data folder will be generated automatically by trainer.py from raw_data if data folder does not exist.

  • Configuration: If you want to edit something, you can do it using this file.

        raw_data='rawdata'
        data_path='data'
        height=100
        width=100
        all_classes = os.listdir(data_path)
        number_of_classes = len(all_classes)
        color_channels=3
        epochs=300
        batch_size=10
        model_save_name='checkpoints\\'
    
  • Run trainer.py.

  • Wait for few hours.

  • For me it took 8 hrs for 300 epochs. I did it in my laptop which has i5 processors, 8 Gigabytes of RAM, Nvidia geforce 930M 2GB setup. You can end the process anytime if saturated, as the model will be saved frequently.

Saving our model:

Once training is over, we can see a folder named checkpoints is created which contains our model for which we trained. These two simple lines does that for us in tensorflow:

      saver = tf.train.Saver(max_to_keep=4)
      saver.save(session, model_save_name)  

You can get my pretrained model here.

We have three files in our checkpoints folder,

  • .meta file - it has your graph structure saved.
  • .index - it identifies the respective checkpoint file.
  • .data - it stores the values of all the variables.

How to use it? Tensorflow is so well built that, it does all the heavy lifting for us. We just have to write four simple lines to load and infer our model.

      #Create a saver object to load the model
      saver = tf.train.import_meta_graph
                                      (os.path.join(model_folder,'.meta'))
      #restore the model from our checkpoints folder
      saver.restore(session,os.path.join('checkpoints','.\\'))
      #Create graph object for getting the same network architecture
      graph = tf.get_default_graph()
      #Get the last layer of the network by it's name which includes all the previous layers too
      network = graph.get_tensor_by_name("add_4:0")

Yeah, simple. Now that we got our network as well as the tuned values, we have to pass an image to it using the same placeholders(Image, labels).

im_ph= graph.get_tensor_by_name("Placeholder:0")
label_ph = graph.get_tensor_by_name("Placeholder_1:0")

If you run it now, you can see the output as [1234,-4322] like that. While this is right as the maximum value index represents the class, this is not as convenient as representing it in 1 and 0. Like this [1,0]. For that we should include a line of code before running it,

network=tf.nn.sigmoid(network)

While we could have done this in our training architecture itself and nothing would have changed, I want to show you that, you can add layers to our model even now, even in prediction stage. Flexibility.

Inference time:

Your training is nothing, If you don't have the will to act - Ra's Al Ghul.

To run a simple prediction,

  • Edit the image name in predict.py.

  • Download the model files and extract in the same folder.

  • Run predict.py.

        image='sup.jpg'
        img=cv2.imread(image)
        session=tf.Session()
        img=cv2.resize(img,(100,100))
        img=img.reshape(1,100,100,3)
        labels = np.zeros((1, 2))
        # Creating the feed_dict that is required to be feed the io:
        feed_dict_testing = {im_ph: img, label_ph: labels}
        result=session.run(network, feed_dict=feed_dict_testing)
        print(result)  
    

You can see the results as [1,0]{Batman}, [0,1]{Superman} corresponding to the index.
Please note that this is not one-hot encoding.

Accuracy:

It is actually pretty good. It is almost right all the time. I even gave it an image with both Batman and Superman, it actually gave me values which are almost of same magnitude(after removing the sigmoid layer that we added just before).

Comment out network=tf.nn.sigmoid(network) in predict.py to see the real magnitudes as this will only give squashed outputs.

From here on you can do whatever you want with those values.
Initially loading the model will take some time(70 seconds) but once the model is loaded, you can put a for loop or something to throw in images and get output in a second or two!

Tensorboard:

I have added some additional lines in the training code for tensorboard options. Using tensorboard we can track progress of our training even while training and after. You can also see your network structure and all the other components inside it.It is very useful for visualizing the things happening. To start it, just go to the directory and open command line,

tensorboard --logdir checkpoints

You should see the following,

Now type the same address in in your browser. Your tensorboard is now started. Play with it.

Graph Structure Visualization:

Yeah, you can see our entire model with dimensions in each layer and operations here!

Future Implementations:

While this works for Binary classification, it will also work for Multiclass classification but not as well. We might need to alter architecture and build a larger model depending on the number of classes we want.

So, that's how Batman wins!

Batwin

Please Star the repo if you like it.
For any suggestions, doubts, clarifications please mail: ipaar3@gmail.com or raise an issue!.