Instantiates a NASNet model.
Note that only TensorFlow is supported for now,
therefore it only works with the data format
image_data_format='channels_last' in your Keras config
at ~/.keras/keras.json.
application_nasnet(input_shape = NULL, penultimate_filters = 4032L,
num_blocks = 6L, stem_block_filters = 96L, skip_reduction = TRUE,
filter_multiplier = 2L, include_top = TRUE, weights = NULL,
input_tensor = NULL, pooling = NULL, classes = 1000,
default_size = NULL)
application_nasnetlarge(input_shape = NULL, include_top = TRUE,
weights = NULL, input_tensor = NULL, pooling = NULL, classes = 1000)
application_nasnetmobile(input_shape = NULL, include_top = TRUE,
weights = NULL, input_tensor = NULL, pooling = NULL, classes = 1000)
nasnet_preprocess_input(x)Arguments
| input_shape | Optional shape list, the input shape is by default |
| penultimate_filters | Number of filters in the penultimate layer.
NASNet models use the notation |
| num_blocks | Number of repeated blocks of the NASNet model. NASNet
models use the notation |
| stem_block_filters | Number of filters in the initial stem block |
| skip_reduction | Whether to skip the reduction step at the tail end
of the network. Set to |
| filter_multiplier | Controls the width of the network.
|
| include_top | Whether to include the fully-connected layer at the top of the network. |
| weights |
|
| input_tensor | Optional Keras tensor (i.e. output of |
| pooling | Optional pooling mode for feature extraction when
|
| classes | Optional number of classes to classify images into, only to be
specified if |
| default_size | Specifies the default image size of the model |
| x | a 4D array consists of RGB values within |