1

hello I'm new to this topic of ml. I trained a model in python which classifies the images in 2 classes as 'santa' and 'not santa' and it is predicting correctly. I converted this model to tensorflow.js as I need to use it in my website for classifying uploaded images but it is not classifying images correctly as in the python model. model.predict() returns 2 probabilities which of one is higher returns that class. I feel the problem lies in the preprocessing part in the javascript for testing from the model. I have attached the code below.

below is the code snippet for testing in python

image = cv2.imread(args["image"])
orig = image.copy()
image = cv2.resize(image, (28, 28))
image = image.astype("float") / 255.0
image = img_to_array(image)
image = np.expand_dims(image, axis=0)
print("[INFO] loading network...")
model = load_model(args["model"])
x= model.predict(image)
print(x)

below is javascript code for testing

function preprocess(img)
{


let tensor = tf.browser.fromPixels(img)

const resized = tf.image.resizeBilinear(tensor, [28, 28]).toFloat()

const offset = tf.scalar(255.0);
const normalized = tf.scalar(1.0).sub(resized.div(offset));

const batched = normalized.expandDims(0)
return batched

}

function predict(imgData) {

    var class_names = ['santa','not santa']

    var pred = model.predict(preprocess(imgData)).dataSync()
    console.log(pred)            
    const idx = tf.argMax(pred);



    var indices = findIndicesOfMax(pred, 1)
    console.log(indices)
    var probs = findTopValues(pred, 1)
    var names = getClassNames(indices) 


    document.getElementById("Result").innerHTML = names

    console.log(names);

    console.log(document.getElementById("Result"));

  }

please help how can I solve this problem. for a sample images the python model returns the value as follows [[0.9940202 0.00597982]] [python output]1

and for the same image tensorflowjs model returns value as follows Float32Array [ 0.24975205957889557, 0.7502480149269104 ] [tensorflowjs]2

3
  • Can also you paste the python code you used to predict the classes for the same image?
    – Murli
    Mar 18, 2019 at 7:15
  • @RamSharma, can you please add how you are getting imgData ?
    – edkeveked
    Mar 20, 2019 at 16:21
  • Why should you subtract scaled value from 1?const normalized =resized.div(offset) will be sufficeint?? Sep 30, 2019 at 9:15

1 Answer 1

3

There is a slight difference in the way the image is preprocessed in Python and in JavaScript. With this line

image = image.astype("float") / 255.0 

You're only dividing the image pixel values by 255. A common processing is to substract 127 before the division operation:

image = (image.astype("float") -127) / 127 

In js

const normalized  = resized.sub(offset).div(offset));

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.