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We shall now create a file named app_helper.py
.
In this file, we shall create a function named get_classes
inside which we:
import the pre-trained model
preprocess the input image as per requirements of the pre-trained model
feed this preprocessed image as the input of the model and get the top 3 predictions as classified by the model.
For a detailed explanation of the code, it is highly recommended to complete working on the Image Classification with Pre-trained Keras models project as cautioned earlier.
Note:
vi
is used to:
If we want to create and/or edit the file named myFile
, we use vi myFile
.
vi has multiple modes: command mode, insert, append mode. In the begining, it is in command mode. you can type 'a' to change the mode to append mode. Once in append mode, you can type text content.
ESC
key to go to command mode and type :wq
and hit on enter
key. In :wq
, w
means save, and q
means quit.If you are not comfortable with vi, you could nano
command line text editor or you could also use Jupyter text editor in CloudxLab.
This app_helper.py
file should be created inside the Image-Classification-App
directory. So make sure you are in the directory Image-Classification-App
. You could check your present working directory using the command:
pwd
This command should output the path:
/home/$USER/Image-Classification-App
If the path displayed is not the same as the above, switch to the Image-Classification-App
using
cd ~
cd Image-Classification-App
Now, create a file named app_helper.py
using the vi
command.
Press i
key on your keyboard, to switch to insert mode in the file.
Copy-paste the below code in the file. Please take a moment to read the code and comments.
# Import the model and other libraries
from tensorflow.keras.applications.resnet50 import ResNet50 as myModel
from tensorflow.keras.applications.resnet50 import preprocess_input, decode_predictions
from tensorflow.keras.preprocessing import image
import numpy as np
def get_classes(file_path):
# Create an instance of 'myModel' imported above
model = myModel(weights="imagenet")
# Load image and preprocess it
img = image.load_img(file_path, target_size=(224, 224))
x = image.img_to_array(img)
x= np.array([x])
x = preprocess_input(x)
# This is the inference time. Given an instance, it produces the predictions.
preds = model.predict(x)
predictions = decode_predictions(preds, top=3)[0]
return predictions
Now, click on esc
button on your keyboard.
Then, type :wq!
and then hit on enter
key on your keyboard. This returns you to your console.
Note- If you face Unable to open file
error while loading the model, refer to Input/Output Error(Error no. 5).
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