Is my patternnet for two-class image classification okay?
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I have 10,000 images for two classes including 5000 for each class. I used all default parameters. One-fifth of the whole is set as holdout set and for the training network, 70:15:15 ratio is used for training, testing, and validation set inside the network. So, And then, I trained my network with many hidden layers. Among them, 340 hidden layer size has highest accuracy for confusion matrix as I have attached.And, the accuracy for the holdout set is 92.45%. And the performance of the network is as follows:

I would like to know whether my network is okay or not. And I also want to know which more parameters I should vary to get better accuracy.
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Accepted Answer
More Answers (2)
San May
on 13 Jan 2019
0 votes
Dhia El Hak Daamouche
on 24 Jul 2019
0 votes
Hey bro,
I'm doing the same work (I wanna classify an image of Dubai into two classes: urban>> Black and non_urban>> white). I've completed the training and had the results as you. Now what I want is to classify the image by using this training, but I couldn't figure out how to do it. do you have an idea how to do the classification?
Any help would be so approciate
regards,
Dhia
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