Example #1
0
    def __init__(self,
                 branch_units,
                 activation=Rectlin(),
                 bias_init=UniformInit(low=-0.08, high=0.08),
                 filter_init=XavierInit()):

        (p1, p2, p3, p4) = branch_units

        self.branch_1 = Convolution((1, 1, p1[0]),
                                    activation=activation,
                                    bias_init=bias_init,
                                    filter_init=filter_init)
        self.branch_2 = [
            Convolution((1, 1, p2[0]),
                        activation=activation,
                        bias_init=bias_init,
                        filter_init=filter_init),
            Convolution((3, 3, p2[1]),
                        activation=activation,
                        bias_init=bias_init,
                        filter_init=filter_init,
                        padding=1)
        ]
        self.branch_3 = [
            Convolution((1, 1, p3[0]),
                        activation=activation,
                        bias_init=bias_init,
                        filter_init=filter_init),
            Convolution((5, 5, p3[1]),
                        activation=activation,
                        bias_init=bias_init,
                        filter_init=filter_init,
                        padding=2)
        ]
        self.branch_4 = [
            Pooling(pool_shape=(3, 3), padding=1, strides=1, pool_type="max"),
            Convolution((1, 1, p3[0]),
                        activation=activation,
                        bias_init=bias_init,
                        filter_init=filter_init)
        ]
Example #2
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        outputs = [
            branch_1_output, branch_2_output, branch_3_output, branch_4_output
        ]
        # This does the equivalent of neon's merge-broadcast
        return ng.concat_along_axis(outputs,
                                    branch_1_output.axes.channel_axis())


seq1 = Sequential([
    Convolution((7, 7, 64),
                padding=3,
                strides=2,
                activation=Rectlin(),
                bias_init=bias_init,
                filter_init=XavierInit()),
    Pooling(pool_shape=(3, 3), padding=1, strides=2, pool_type='max'),
    Convolution((1, 1, 64),
                activation=Rectlin(),
                bias_init=bias_init,
                filter_init=XavierInit()),
    Convolution((3, 3, 192),
                activation=Rectlin(),
                bias_init=bias_init,
                filter_init=XavierInit(),
                padding=1),
    Pooling(pool_shape=(3, 3), padding=1, strides=2, pool_type='max'),
    Inception([(64, ), (96, 128), (16, 32), (32, )]),
    Inception([(128, ), (128, 192), (32, 96), (64, )]),
    Pooling(pool_shape=(3, 3), padding=1, strides=2, pool_type='max'),
    Inception([(192, ), (96, 208), (16, 48), (64, )]),
    Inception([(160, ), (112, 224), (24, 64), (64, )]),
Example #3
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 def __init__(self, net_type, resnet_size, bottleneck, num_resnet_mods, batch_norm=True):
     # For CIFAR10 dataset
     if (net_type in ('cifar10', 'cifar100')):
         # Number of Filters
         num_fils = [16, 32, 64]
         # Network Layers
         layers = [
             # Subtracting mean as suggested in paper
             Preprocess(functor=cifar10_mean_subtract),
             # First Conv with 3x3 and stride=1
             Convolution(**conv_params(3, 16, batch_norm=batch_norm))]
         first_resmod = True  # Indicates the first residual module
         # Loop 3 times for each filter.
         for fil in range(3):
             # Lay out n residual modules so that we have 2n layers.
             for resmods in range(num_resnet_mods):
                 if(resmods == 0):
                     if(first_resmod):
                         # Strides=1 and Convolution side path
                         main_path, side_path = self.get_mp_sp(num_fils[fil],
                                                               net_type, direct=False,
                                                               batch_norm=batch_norm)
                         layers.append(ResidualModule(main_path, side_path))
                         layers.append(Activation(Rectlin()))
                         first_resmod = False
                     else:
                         # Strides=2 and Convolution side path
                         main_path, side_path = self.get_mp_sp(num_fils[fil], net_type,
                                                               direct=False, strides=2,
                                                               batch_norm=batch_norm)
                         layers.append(ResidualModule(main_path, side_path))
                         layers.append(Activation(Rectlin()))
                 else:
                     # Strides=1 and direct connection
                     main_path, side_path = self.get_mp_sp(num_fils[fil], net_type,
                                                           batch_norm=batch_norm)
                     layers.append(ResidualModule(main_path, side_path))
                     layers.append(Activation(Rectlin()))
         # Do average pooling --> fully connected--> softmax.
         layers.append(Pooling((8, 8), pool_type='avg'))
         layers.append(Affine(axes=ax.Y, weight_init=KaimingInit(), batch_norm=batch_norm))
         layers.append(Activation(Softmax()))
     # For I1K dataset
     elif (net_type in ('i1k', 'i1k100')):
         # Number of Filters
         num_fils = [64, 128, 256, 512]
         # Number of residual modules we need to instantiate at each level
         num_resnet_mods = num_i1k_resmods(resnet_size)
         # Network layers
         layers = [
             # Subtracting mean
             Preprocess(functor=i1k_mean_subtract),
             # First Conv layer
             Convolution((7, 7, 64), strides=2, padding=3,
                         batch_norm=batch_norm, activation=Rectlin(),
                         filter_init=KaimingInit()),
             # Max Pooling
             Pooling((3, 3), strides=2, pool_type='max', padding=1)]
         first_resmod = True  # Indicates the first residual module for which strides are 1
         # Loop 4 times for each filter
         for fil in range(4):
             # Lay out residual modules as in num_resnet_mods list
             for resmods in range(num_resnet_mods[fil]):
                 if(resmods == 0):
                     if(first_resmod):
                         # Strides=1 and Convolution Side path
                         main_path, side_path = self.get_mp_sp(num_fils[fil],
                                                               net_type,
                                                               direct=False,
                                                               bottleneck=bottleneck,
                                                               batch_norm=batch_norm)
                         layers.append(ResidualModule(main_path, side_path))
                         layers.append(Activation(Rectlin()))
                         first_resmod = False
                     else:
                         # Strides=2 and Convolution side path
                         main_path, side_path = self.get_mp_sp(num_fils[fil],
                                                               net_type,
                                                               direct=False,
                                                               bottleneck=bottleneck,
                                                               strides=2,
                                                               batch_norm=batch_norm)
                         layers.append(ResidualModule(main_path, side_path))
                         layers.append(Activation(Rectlin()))
                 else:
                     # Strides=1 and direct connection
                     main_path, side_path = self.get_mp_sp(num_fils[fil],
                                                           net_type,
                                                           bottleneck=bottleneck,
                                                           batch_norm=batch_norm)
                     layers.append(ResidualModule(main_path, side_path))
                     layers.append(Activation(Rectlin()))
         # Do average pooling --> fully connected--> softmax.
         layers.append(Pooling((7, 7), pool_type='avg'))
         layers.append(Affine(axes=ax.Y, weight_init=KaimingInit(),
                              batch_norm=batch_norm))
         layers.append(Activation(Softmax()))
     else:
         raise NameError("Incorrect dataset. Should be --dataset cifar10 or --dataset i1k")
     super(BuildResnet, self).__init__(layers=layers)
Example #4
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def cifar_mean_subtract(x):
    bgr_mean = ng.constant(
        const=np.array([104., 119., 127.]),
        axes=[x.axes.channel_axis()])

    return (x - bgr_mean) / 255.


init_uni = UniformInit(-0.1, 0.1)

seq1 = Sequential([Preprocess(functor=cifar_mean_subtract),
                   Convolution((5, 5, 16), filter_init=init_uni, activation=Rectlin(),
                               batch_norm=args.use_batch_norm),
                   Pooling((2, 2), strides=2),
                   Convolution((5, 5, 32), filter_init=init_uni, activation=Rectlin(),
                               batch_norm=args.use_batch_norm),
                   Pooling((2, 2), strides=2),
                   Affine(nout=500, weight_init=init_uni, activation=Rectlin(),
                          batch_norm=args.use_batch_norm),
                   Affine(axes=ax.Y, weight_init=init_uni, activation=Softmax())])

optimizer = GradientDescentMomentum(0.01, 0.9)
train_prob = seq1(inputs['image'])
train_loss = ng.cross_entropy_multi(train_prob, ng.one_hot(inputs['label'], axis=ax.Y))
batch_cost = ng.sequential([optimizer(train_loss), ng.mean(train_loss, out_axes=())])
train_outputs = dict(batch_cost=batch_cost)

with Layer.inference_mode_on():
    inference_prob = seq1(inputs['image'])
Example #5
0
              'label': {'data': y_train,
                        'axes': ('N',)}}
train_set = ArrayIterator(train_data,
                          batch_size=args.batch_size,
                          total_iterations=args.num_iterations)
inputs = train_set.make_placeholders(include_iteration=True)
ax.Y.length = 1000  # number of outputs of last layer.

# weight initialization
init = UniformInit(low=-0.08, high=0.08)

# Setup model
seq1 = Sequential([Convolution((11, 11, 64), filter_init=GaussianInit(std=0.01),
                               bias_init=init,
                               activation=Rectlin(), padding=3, strides=4),
                   Pooling((3, 3), strides=2),
                   Convolution((5, 5, 192), filter_init=GaussianInit(std=0.01),
                               bias_init=init,
                               activation=Rectlin(), padding=2),
                   Pooling((3, 3), strides=2),
                   Convolution((3, 3, 384), filter_init=GaussianInit(std=0.03),
                               bias_init=init,
                               activation=Rectlin(), padding=1),
                   Convolution((3, 3, 256), filter_init=GaussianInit(std=0.03),
                               bias_init=init,
                               activation=Rectlin(), padding=1),
                   Convolution((3, 3, 256), filter_init=GaussianInit(std=0.03),
                               bias_init=init,
                               activation=Rectlin(), padding=1),
                   Pooling((3, 3), strides=2),
                   Affine(nout=4096, weight_init=GaussianInit(std=0.01),