From c61da5435eb6669c829d006c70a32fe8febae7a5 Mon Sep 17 00:00:00 2001 From: Navan Chauhan Date: Wed, 29 Jan 2020 12:03:17 +0530 Subject: Publish deploy 2020-01-29 12:03 --- .../index 2.html | 23 ---------------------- 1 file changed, 23 deletions(-) delete mode 100644 posts/2019-12-10-TensorFlow-Model-Prediction/index 2.html (limited to 'posts/2019-12-10-TensorFlow-Model-Prediction/index 2.html') diff --git a/posts/2019-12-10-TensorFlow-Model-Prediction/index 2.html b/posts/2019-12-10-TensorFlow-Model-Prediction/index 2.html deleted file mode 100644 index 3b71ea8..0000000 --- a/posts/2019-12-10-TensorFlow-Model-Prediction/index 2.html +++ /dev/null @@ -1,23 +0,0 @@ -Making Predictions using Image Classifier (TensorFlow) | Navan Chauhan
🕑 1 minute read.

Making Predictions using Image Classifier (TensorFlow)

This was tested on TF 2.x and works as of 2019-12-10

If you want to understand how to make your own custom image classifier, please refer to my previous post.

If you followed my last post, then you created a model which took an image of dimensions 50x50 as an input.

First we import the following if we have not imported these before

import cv2 -import os -
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Then we read the file using OpenCV.

image=cv2.imread(imagePath) -
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The cv2. imread() function returns a NumPy array representing the image. Therefore, we need to convert it before we can use it.

image_from_array = Image.fromarray(image, 'RGB') -
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Then we resize the image

size_image = image_from_array.resize((50,50)) -
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After this we create a batch consisting of only one image

p = np.expand_dims(size_image, 0) -
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We then convert this uint8 datatype to a float32 datatype

img = tf.cast(p, tf.float32) -
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Finally we make the prediction

print(['Infected','Uninfected'][np.argmax(model.predict(img))]) -
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Infected

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