I built siamese neural network, using Keras lib for it. My model has two inputs with shape (64,64,3), two pre-trained ResNet-50. Loss function is binary cross entropy.

The model is based on this paper a link

During train I have very good trait/val accuracy, about 0.99/0.98, and low loss 0.01/0.05.

But when I test my saved model, I get bad results. The model can't recognize even two the same pictures.

Also I noticed strange behavior:
the greater the number of epochs the result is worse.
For example, comparing two identical images, trained model with **10 epoch** gives prediction:
*"8.jpg": 0.5180479884147644*
but the same model trained with **100** **epoch** gives
*"8.jpg": 5.579867080537926E-13*
However for **100 epoch** I have better train results.

I've tried different model for CNN: ResNet18, different input shapes, like *(224,224,3)* or *(128,128,3)*.

Also I've triad use not pre-train model, only **ResNet50/ResNet18** without pre-trained weights. But I have the same bad results while testing real model.

My code is

```
def create_base_model(image_shape, dropout_rate, suffix=''):
I1 = Input(shape=image_shape)
model = ResNet50(include_top=False, weights='imagenet', input_tensor=I1, pooling=None)
model.layers.pop()
model.outputs = [model.layers[-1].output]
model.layers[-1].outbound_nodes = []
for layer in model.layers:
layer.name = layer.name + str(suffix)
layer.trainable = False
flatten_name = 'flatten' + str(suffix)
x = model.output
x = Flatten(name=flatten_name)(x)
x = Dense(1024, activation='relu')(x)
x = Dropout(dropout_rate)(x)
x = Dense(512, activation='relu')(x)
x = Dropout(dropout_rate)(x)
return x, model.input
def create_siamese_model(image_shape, dropout_rate):
output_left, input_left = create_base_model(image_shape, dropout_rate)
output_right, input_right = create_base_model(image_shape, dropout_rate, suffix="_2")
L1_layer = Lambda(lambda tensors: tf.abs(tensors[0] - tensors[1]))
L1_distance = L1_layer([output_left, output_right])
L1_prediction = Dense(1, use_bias=True,
activation='sigmoid',
kernel_initializer=RandomNormal(mean=0.0, stddev=0.001),
name='weighted-average')(L1_distance)
prediction = Dropout(0.2)(L1_prediction)
siamese_model = Model(inputs=[input_left, input_right], outputs=prediction)
return siamese_model
siamese_model = create_siamese_model(image_shape=(64, 64, 3),
dropout_rate=0.2)
siamese_model.compile(loss='binary_crossentropy',
optimizer=Adam(lr=0.0001),
metrics=['binary_crossentropy', 'acc'])
siamese_model.fit_generator(train_gen,
steps_per_epoch=1000,
epochs=10,
verbose=1,
callbacks=[checkpoint, tensor_board_callback, lr_reducer, early_stopper, csv_logger],
validation_data=validation_data,
max_q_size=3)
siamese_model.save('siamese_model.h5')
# and the my prediction
siamese_net = load_model('siamese_model.h5', custom_objects={"tf": tf})
X_1 = [image, ] * len(markers)
batch = [markers, X_1]
result = siamese_net.predict_on_batch(batch)
# I've tried also to check identical images
markers = [image]
X_1 = [image, ] * len(markers)
batch = [markers, X_1]
result = siamese_net.predict_on_batch(batch)
```

I have some doubts about my prediction method. Could someone please help me to find what is wrong with predictions?