garage.tf.models.cnn module¶
CNN in TensorFlow.
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cnn
(input_var, filter_dims, num_filters, strides, name, padding, hidden_nonlinearity=<function relu>, hidden_w_init=<tensorflow.python.ops.init_ops.GlorotUniform object>, hidden_b_init=<tensorflow.python.ops.init_ops.Zeros object>)[source]¶ Convolutional neural network (CNN).
Note
Based on ‘NHWC’ data format: [batch, height, width, channel].
Parameters: - input_var (tf.Tensor) – Input tf.Tensor to the CNN.
- filter_dims (tuple[int]) – Dimension of the filters. For example, (3, 5) means there are two convolutional layers. The filter for first layer is of dimension (3 x 3) and the second one is of dimension (5 x 5).
- num_filters (tuple[int]) – Number of filters. For example, (3, 32) means there are two convolutional layers. The filter for the first layer has 3 channels and the second one with 32 channels.
- strides (tuple[int]) – The stride of the sliding window. For example, (1, 2) means there are two convolutional layers. The stride of the filter for first layer is 1 and that of the second layer is 2.
- name (str) – Network name, also the variable scope.
- padding (str) – The type of padding algorithm to use, either ‘SAME’ or ‘VALID’.
- hidden_nonlinearity (callable) – Activation function for intermediate dense layer(s). It should return a tf.Tensor. Set it to None to maintain a linear activation.
- hidden_w_init (callable) – Initializer function for the weight of intermediate dense layer(s). The function should return a tf.Tensor.
- hidden_b_init (callable) – Initializer function for the bias of intermediate dense layer(s). The function should return a tf.Tensor.
Returns: The output tf.Tensor of the CNN.
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cnn_with_max_pooling
(input_var, filter_dims, num_filters, strides, name, pool_shapes, pool_strides, padding, hidden_nonlinearity=<function relu>, hidden_w_init=<tensorflow.python.ops.init_ops.GlorotUniform object>, hidden_b_init=<tensorflow.python.ops.init_ops.Zeros object>)[source]¶ Convolutional neural network (CNN) with max-pooling.
Note
Based on ‘NHWC’ data format: [batch, height, width, channel].
Parameters: - input_var (tf.Tensor) – Input tf.Tensor to the CNN.
- filter_dims (tuple[int]) – Dimension of the filters. For example, (3, 5) means there are two convolutional layers. The filter for first layer is of dimension (3 x 3) and the second one is of dimension (5 x 5).
- num_filters (tuple[int]) – Number of filters. For example, (3, 32) means there are two convolutional layers. The filter for the first layer has 3 channels and the second one with 32 channels.
- strides (tuple[int]) – The stride of the sliding window. For example, (1, 2) means there are two convolutional layers. The stride of the filter for first layer is 1 and that of the second layer is 2.
- name (str) – Model name, also the variable scope of the cnn.
- pool_shapes (tuple[int]) – Dimension of the pooling layer(s). For example, (2, 2) means that all the pooling layers have shape (2, 2).
- pool_strides (tuple[int]) – The strides of the pooling layer(s). For example, (2, 2) means that all the pooling layers have strides (2, 2).
- padding (str) – The type of padding algorithm to use, either ‘SAME’ or ‘VALID’.
- hidden_nonlinearity (callable) – Activation function for intermediate dense layer(s). It should return a tf.Tensor. Set it to None to maintain a linear activation.
- hidden_w_init (callable) – Initializer function for the weight of intermediate dense layer(s). The function should return a tf.Tensor.
- hidden_b_init (callable) – Initializer function for the bias of intermediate dense layer(s). The function should return a tf.Tensor.
Returns: The output tf.Tensor of the CNN.