23

I'm very new to Keras. I trained a model and would like to predict some images stored in subfolders (like for training). For testing, I want to predict 2 images from 7 classes (subfolders). The test_generator below sees 14 images, but I get 196 predictions. Where is the mistake? Thanks a lot!

test_datagen = ImageDataGenerator(rescale=1./255)

test_generator = test_datagen.flow_from_directory(
        test_dir,
        target_size=(200, 200),
        color_mode="rgb",
        shuffle = "false",
        class_mode='categorical')

filenames = test_generator.filenames
nb_samples = len(filenames)

predict = model.predict_generator(test_generator,nb_samples)
1
  • 1
    Just a comment: @Ioannis's answer is a more general answer which takes batch_size into account. Note: predict_generator(...) accepts num_of_steps as the second argument which is a number of test samples over batch size. Num_of_steps defines the criteria to stop generator otherwise it will keep in producing or loading a batch of images. – Sanchit Feb 17 '20 at 9:12
38

You can change the value of batch_size in flow_from_directory from default value (which is batch_size=32 ) to batch_size=1. Then set the steps of predict_generator to the total number of your test images. Something like this:

test_datagen = ImageDataGenerator(rescale=1./255)

test_generator = test_datagen.flow_from_directory(
        test_dir,
        target_size=(200, 200),
        color_mode="rgb",
        shuffle = False,
        class_mode='categorical',
        batch_size=1)

filenames = test_generator.filenames
nb_samples = len(filenames)

predict = model.predict_generator(test_generator,steps = nb_samples)
3
  • 7
    Can someone tell me how do I compute the accuracy after predicting using the predict_generator? – Mohit Motwani Aug 22 '18 at 12:27
  • 5
    Anyone that is thinking if the model is giving random predictions on your test set: don't forget to set shuffle = False. It is there in the OP's post but sometimes you might forget it and the default value is True. – akilat90 Nov 15 '19 at 5:42
  • 1
    @MohitMotwani, for computing accuracy, instead of computing it manually, you could use model.evaluate(test_data, target_data) or using generator model.evaluate(test_generator, ...). but do not forget to add 'accuracy' for metrics in model.fit() – Masoud Maleki Oct 14 '20 at 9:48
9

Default batch_size in generator is 32. If you want to make 1 prediction for every sample of total nb_samples you should devide your nb_samples with the batch_size. Thus with a batch_size of 7 you only need 14/7=2 steps for your 14 images

desired_batch_size=7

test_datagen = ImageDataGenerator(rescale=1./255)

test_generator = test_datagen.flow_from_directory(
        test_dir,
        target_size=(200, 200),
        color_mode="rgb",
        shuffle = False,
        class_mode='categorical',
        batch_size=desired_batch_size)

filenames = test_generator.filenames
nb_samples = len(filenames)

predict = model.predict_generator(test_generator,steps = 
                                   np.ceil(nb_samples/desired_batch_size))
1
  • 3
    What if I have a test dataset of size 101, with default batch_size = 32. If I set steps = 101 // 32 = 3. I got 96 predictions, but no predictions for the last 5 samples. If I set steps = 101 // 32 + 1 = 4. An error will occur. So what should I do? Use batch_size = 1, for 101 steps? This is not a elegant solution, what if I have a test dataset size of 6234547? Use a batch size of 1 would be very inefficient. – StayFoolish Jul 6 '19 at 3:08
4

The problem is the inclusion of nb_samples in the predict_generator which is creating 14 batches of 14 images

14*14 = 196
2
  • Thank you djk. Unfortunatly, if I remove this argument, I get an errror: predict_generator() takes at least 3 arguments (2 given) – Mario Kreutzfeldt Aug 22 '17 at 7:03
  • So, if I add model.predict_generator(test_generator,1) I get 32 images analyzed (default batch size). This means I should add nb_samples = len(filenames) / batch_size model.predict_generator(test_generator,nb_samples) Correct? I find it very hard to find good documentation on this. Best regards, Mario – Mario Kreutzfeldt Aug 22 '17 at 7:17
0

Use fit and predict, TensorFlow now supports both the methods with generators.

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