Significant Edit

Ok so I did a whole rework of this previous questions but still the same issue but now the code is much more concise and easy to read. What I am doing is reading in images from a file using keras.preprocessing image lib. And then convert that into an array using keras img_to_arrar function. Which I parse out into three arrays of anchor array image array and label array. I then pump this through my model which gives me an odd feed back:

Error when checking target: expected Act_3 to have shape (2,) but got array with shape (1,)

Why is it going down to from shape 2 to shape 1 it looks like it loses all of the data.

Here is the full code:

def read_in_images(array):
    input_1_array = []
    input_2_array = []
    labels = []
    for item in array:
      a = item[0]
      i = item[1]
      l = item[2]
      img_a = image.load_img(a, target_size=(224, 224))
      img_i = image.load_img(i, target_size=(224, 224))
      a_a = image.img_to_array(img_a)
      i_a = image.img_to_array(img_i)
    return np.array(input_1_array), np.array(input_2_array), np.array(labels)

train_x1, train_x2, train_y = read_in_images(sm_train)
val_x1, val_x2, val_y = read_in_images(sm_val)
test_x1, test_x2, test_y = read_in_images(sm_test)
print(train_x1.shape) # give (50, 224, 224, 3)
print(val_x1.shape) # gives (15, 224, 224, 3)
print(test_x1.shape) # (30, 224, 224, 3) which is what I want

resnet_model = resnet50.ResNet50(weights="imagenet", include_top=True)
input_1 = Input(shape=(224,224,3))
input_2 = Input(shape=(224,224,3))

proccess_1 = resnet_model(input_1)
proccess_2 = resnet_model(input_2)
merged = Concatenate(axis=-1)([proccess_1, proccess_2])

fc1 = Dense(512, kernel_initializer="glorot_uniform", name="Den_1")(merged)
fc1 = Dropout(0.2)(fc1)
fc1 = Activation("relu", name = "Act_1")(fc1)

fc2 = Dense(128, kernel_initializer="glorot_uniform", name="Den_2")(fc1)
fc2 = Dropout(0.2)(fc2)
fc2 = Activation("relu", name = "Act_2")(fc2)

pred = Dense(2, kernel_initializer="glorot_uniform", name="Den_3")(fc2)
pred = Activation("softmax", name = "Act_3")(pred)
model = Model(inputs=[input_1, input_2], outputs=pred)
model.compile(optimizer="adam", loss="categorical_crossentropy", metrics=["accuracy"])

history = model.fit([train_x1, train_x2], train_y,
      verbose = 1,
      validation_data=([val_x1, val_x2], val_y))
  • 1
    From your code example, I don't see how the resnet ever makes it into the picture. Am I missing something? It doesn't seem to be connected to the rest of your setup. – TheLoneDeranger 2 days ago
  • 1
    why are you use make_data method?? I think it's cause a problem. you could sent images directly to resnet and if necessary use reshape and expand_dim to align dimensions. – Somayyeh Ataei Kachouei 2 days ago
  • The resnet is being used to creat the featuers in the create_feature methods. – MNM 2 days ago
  • I redid to problem so it's easy to see how things work now. But still, there are issues. – MNM 2 days ago

I figured out what my issue was on this new version. I did not make the label in a [0,1] format as it was a 0 or a 1. This will not work with categorical_crossentropy as it needs a [0,1] format for the label. Forgot my basic cat dog classifier.

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