Пример #1
0
def conv_block(args, x, growth_rate, name):
    x1 = _normalization(x, norm=args.norm, name=name + '_0_norm')
    x1 = _activation(x, activation=args.activation, name=name + '_0_acti')
    x1 = Conv2D(4 * growth_rate, 1, use_bias=False, name=name + '_1_conv')(x1)
    x1 = _normalization(x1, norm=args.norm, name=name + '_1_norm')
    x1 = _activation(x1, activation=args.activation, name=name + '_1_acti')
    if args.attention == 'se':
        x1 = _se_block(x1, name=name + '_1_se')
    elif args.attention == 'cbam':
        x1 = _cbam_block(x1, name=name + '_1_cbam')

    x1 = Conv2D(growth_rate,
                3,
                padding='same',
                use_bias=False,
                name=name + '_2_conv')(x1)
    x = Concatenate(name=name + '_concat')([x, x1])
    return x
Пример #2
0
def transition_block(args, x, reduction, name):
    channel = K.int_shape(x)[-1]
    x = _normalization(x, norm=args.norm, name=name + '_norm')
    x = _activation(x, activation=args.activation, name=name + '_acti')
    x = Conv2D(int(channel * reduction),
               1,
               use_bias=False,
               name=name + '_conv')(x)
    x = AveragePooling2D(2, strides=2, name=name + '_pool')(x)
    return x
Пример #3
0
def block2(args,
           x,
           filters,
           kernel_size=3,
           stride=1,
           conv_shortcut=False,
           attention='no',
           name=None):
    preact = _normalization(x, norm=args.norm, name=name + '_pre_norm')
    preact = _activation(preact,
                         activation=args.activation,
                         name=name + '_pre_acti')

    if conv_shortcut is True:
        shortcut = Conv2D(4 * filters,
                          1,
                          strides=stride,
                          name=name + '_0_conv')(preact)
    else:
        shortcut = MaxPooling2D(1, strides=stride)(x) if stride > 1 else x

    x = Conv2D(filters, 1, strides=1, use_bias=False,
               name=name + '_1_conv')(preact)
    x = _normalization(x, norm=args.norm, name=name + '_1_norm')
    x = _activation(x, activation=args.activation, name=name + '_1_acti')

    x = ZeroPadding2D(padding=((1, 1), (1, 1)), name=name + '_2_pad')(x)
    x = Conv2D(filters,
               kernel_size,
               strides=stride,
               use_bias=False,
               name=name + '_2_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_2_norm')
    x = _activation(x, activation=args.activation, name=name + '_2_acti')

    x = Conv2D(4 * filters, 1, name=name + '_3_conv')(x)
    if args.attention == 'se':
        x = _se_block(x, name=name + '_3_se')
    elif args.attention == 'cbam':
        x = _cbam_block(x, name=name + '_3_cbam')

    x = Add(name=name + '_out')([shortcut, x])
    return x
Пример #4
0
def block1(args,
           x,
           filters,
           kernel_size=3,
           stride=1,
           conv_shortcut=True,
           attention='no',
           name=None):
    if conv_shortcut is True:
        shortcut = Conv2D(4 * filters,
                          1,
                          strides=stride,
                          name=name + '_0_conv')(x)
        shortcut = _normalization(shortcut,
                                  norm=args.norm,
                                  name=name + '_0_norm')
    else:
        shortcut = x

    x = Conv2D(filters, 1, strides=stride, name=name + '_1_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_1_norm')
    x = _activation(x, activation=args.activation, name=name + '_1_acti')

    x = Conv2D(filters, kernel_size, padding='same', name=name + '_2_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_2_norm')
    x = _activation(x, activation=args.activation, name=name + '_2_acti')

    x = Conv2D(4 * filters, 1, name=name + '_3_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_3_norm')
    if args.attention == 'se':
        x = _se_block(x, name=name + '_3_se')
    elif args.attention == 'cbam':
        x = _cbam_block(x, name=name + '_3_cbam')

    x = Add(name=name + '_add')([shortcut, x])
    x = _activation(x, activation=args.activation, name=name + '_3_acti')
    return x
Пример #5
0
def DenseNet(blocks, args, **kwargs):
    img_input = x = Input(shape=(args.img_size, args.img_size,
                                 args.img_channel),
                          name='main_input')

    x = ZeroPadding2D(padding=((3, 3), (3, 3)))(x)
    x = Conv2D(64, 7, strides=2, use_bias=False, name='conv1/conv')(x)
    x = _normalization(x, norm=args.norm, name='conv1/norm')
    x = _activation(x, activation=args.activation, name='conv1/acti')
    x = ZeroPadding2D(padding=((1, 1), (1, 1)))(x)
    x = MaxPooling2D(3, strides=2, name='pool1')(x)

    x = dense_block(args, x, blocks[0], name='conv2')
    x = transition_block(args, x, 0.5, name='pool2')
    x = dense_block(args, x, blocks[1], name='conv3')
    x = transition_block(args, x, 0.5, name='pool3')
    x = dense_block(args, x, blocks[2], name='conv4')
    x = transition_block(args, x, 0.5, name='pool4')
    x = dense_block(args, x, blocks[3], name='conv5')

    x = _normalization(x, norm=args.norm, name='norm')
    x = _activation(x, activation=args.activation, name='acti')

    x = GlobalAveragePooling2D(name='avg_pool')(x)
    if args.embedding == 'softmax':
        x = Dense(args.classes,
                  activation='softmax' if args.classes > 1 else 'sigmoid',
                  name='main_output')(x)

        model_input = [img_input]
        model_output = [x]

    elif args.embedding == 'arcface':
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        label = Input(shape=(args.classes, ), name='arcface_input')
        x = ArcMarginPenaltyLogists(num_classes=args.classes,
                                    margin=args.margin,
                                    logist_scale=args.logist_scale,
                                    name='arcface_output')(x, label)

        model_input = [img_input, label]
        model_output = [x]

    elif args.embedding == 'dual':
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        x1 = _activation(x, activation=args.activation, name='fc2_acti')
        x1 = Dense(args.classes,
                   activation='softmax' if args.classes > 1 else 'sigmoid',
                   name='main_output')(x1)

        label = Input(shape=(args.classes, ), name='arcface_input')
        x2 = ArcMarginPenaltyLogists(num_classes=args.classes,
                                     margin=args.margin,
                                     logist_scale=args.logist_scale,
                                     name='arcface_output')(x, label)

        model_input = [img_input, label]
        model_output = [x1, x2]

    else:
        raise ValueError()

    model = Model(model_input,
                  model_output,
                  name='{}_{}'.format(args.backbone, args.embedding))

    return model
Пример #6
0
def ResNet(args, embd_shape, logist_scale, stack_fn, preact, use_bias,
           **kwargs):
    img_input = x = Input(shape=(args.img_size, args.img_size,
                                 args.img_channel),
                          name='main_input')

    x = ZeroPadding2D(padding=((3, 3), (3, 3)), name='conv1_pad')(x)
    x = Conv2D(64, 7, strides=2, use_bias=use_bias, name='conv1_conv')(x)

    if preact is False:
        x = _normalization(x, norm=args.norm, name='conv1_norm')
        x = _activation(x, activation=args.activation, name='conv1_acti')

    x = ZeroPadding2D(padding=((1, 1), (1, 1)), name='pool1_pad')(x)
    x = MaxPooling2D(3, strides=2, name='pool1_pool')(x)

    x = stack_fn(x)

    if preact is True:
        x = _normalization(x, norm=args.norm, name='post_norm')
        x = _activation(x, activation=args.activation, name='post_acti')

    x = GlobalAveragePooling2D(name='avg_pool')(x)

    if args.embedding == 'softmax':
        x = Dense(args.classes,
                  activation='softmax' if args.classes > 1 else 'sigmoid',
                  name='main_output')(x)
        model_input = [img_input]
        model_output = [x]

    elif args.embedding == 'arcface':
        x = _normalization(x, norm=args.norm, name='avg_pool_norm')
        x = Flatten(name='flatten')(x)
        x = Dense(args.embd_shape,
                  kernel_regularizer=tf.keras.regularizers.l2(5e-4),
                  name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        label = Input(shape=(args.classes, ), name='arcface_input')
        x = ArcMarginPenaltyLogists(num_classes=args.classes,
                                    margin=args.margin,
                                    logist_scale=args.logist_scale,
                                    name='arcface_output')(x, label)
        model_input = [img_input, label]
        model_output = [x]

    elif args.embedding == 'dual':
        # bengali 8th model
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _activation(x, activation=args.activation, name='avg_pool_acti')

        x1 = Dense(args.classes,
                   activation='softmax' if args.classes > 1 else 'sigmoid',
                   name='main_output')(x)

        label = Input(shape=(args.classes, ), name='arcface_input')
        x2 = ArcMarginPenaltyLogists(num_classes=args.classes,
                                     margin=args.margin,
                                     logist_scale=args.logist_scale,
                                     name='arcface_output')(x, label)
        model_input = [img_input, label]
        model_output = [x1, x2]

    else:
        raise ValueError()

    model = Model(model_input,
                  model_output,
                  name='{}_{}'.format(args.backbone, args.embedding))

    return model
Пример #7
0
def block3(args,
           x,
           filters,
           kernel_size=3,
           stride=1,
           groups=32,
           conv_shortcut=True,
           attention='no',
           name=None):
    if conv_shortcut is True:
        shortcut = Conv2D((64 // groups) * filters,
                          1,
                          strides=stride,
                          use_bias=False,
                          name=name + '_0_conv')(x)
        shortcut = _normalization(shortcut,
                                  norm=args.norm,
                                  name=name + '_0_norm')
    else:
        shortcut = x

    x = Conv2D(filters, 1, use_bias=False, name=name + '_1_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_1_norm')
    x = _activation(x, activation=args.activation, name=name + '_1_acti')

    c = filters // groups
    x = ZeroPadding2D(padding=((1, 1), (1, 1)), name=name + '_2_pad')(x)
    x = DepthwiseConv2D(kernel_size,
                        strides=stride,
                        depth_multiplier=c,
                        use_bias=False,
                        name=name + '_2_conv')(x)
    kernel = np.zeros((1, 1, filters * c, filters), dtype=np.float32)
    for i in range(filters):
        start = (i // c) * c * c + i % c
        end = start + c * c
        kernel[:, :, start:end:c, i] = 1.

    x = Conv2D(filters,
               1,
               use_bias=False,
               trainable=False,
               kernel_initializer={
                   'class_name': 'Constant',
                   'config': {
                       'value': kernel
                   }
               },
               name=name + '_2_gconv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_2_norm')
    x = _activation(x, activation=args.activation, name=name + '_2_acti')

    x = Conv2D((64 // groups) * filters,
               1,
               use_bias=False,
               name=name + '_3_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + '_3_norm')
    if args.attention == 'se':
        x = _se_block(x, name=name + '_3_se')
    elif args.attention == 'cbam':
        x = _cbam_block(x, name=name + '_3_cbam')

    x = Add(name=name + '_add')([shortcut, x])
    x = _activation(x, activation=args.activation, name=name + '_3_acti')
    return x
Пример #8
0
def EfficientNet(args,
                 width_coefficient,
                 depth_coefficient,
                 default_size,
                 dropout_rate,
                 drop_connect_rate=0.2,
                 depth_divisor=8,
                 blocks_args=DEFAULT_BLOCKS_ARGS,
                 **kwargs):

    img_input = x = Input(shape=(args.img_size, args.img_size,
                                 args.img_channel),
                          name='main_input')

    def round_filters(filters, divisor=depth_divisor):
        """Round number of filters based on depth multiplier."""
        filters *= width_coefficient
        new_filters = max(divisor,
                          int(filters + divisor / 2) // divisor * divisor)
        # Make sure that round down does not go down by more than 10%.
        if new_filters < 0.9 * filters:
            new_filters += divisor
        return int(new_filters)

    def round_repeats(repeats):
        """Round number of repeats based on depth multiplier."""
        return int(math.ceil(depth_coefficient * repeats))

    # Build stem
    x = ZeroPadding2D(padding=correct_pad(x, 3), name='stem_conv_pad')(x)
    x = Conv2D(round_filters(32),
               3,
               strides=2,
               padding='valid',
               use_bias=False,
               kernel_initializer=CONV_KERNEL_INITIALIZER,
               name='stem_conv')(x)
    x = _normalization(x, norm=args.norm, name='stem_norm')
    x = _activation(x, activation=args.activation, name='stem_acti')

    # Build blocks
    from copy import deepcopy
    blocks_args = deepcopy(blocks_args)

    b = 0
    blocks = float(sum(ba['repeats'] for ba in blocks_args))
    for (i, ba) in enumerate(blocks_args):
        assert ba['repeats'] > 0
        # Update block input and output filters based on depth multiplier.
        ba['filters_in'] = round_filters(ba['filters_in'])
        ba['filters_out'] = round_filters(ba['filters_out'])

        for j in range(round_repeats(ba.pop('repeats'))):
            # The first block needs to take care of stride and filter size increase.
            if j > 0:
                ba['strides'] = 1
                ba['filters_in'] = ba['filters_out']
            x = block(args,
                      x,
                      drop_connect_rate * b / blocks,
                      name='block{}{}_'.format(i + 1, chr(j + 97)),
                      **ba)
            b += 1

    # Build top
    x = Conv2D(round_filters(1280),
               1,
               padding='same',
               use_bias=False,
               kernel_initializer=CONV_KERNEL_INITIALIZER,
               name='top_conv')(x)
    x = _normalization(x, norm=args.norm, name='top_norm')
    x = _activation(x, activation=args.activation, name='top_acti')

    x = GlobalAveragePooling2D(name='avg_pool')(x)
    if dropout_rate > 0:
        x = Dropout(dropout_rate, name='top_dropout')(x)

    if args.embedding == 'softmax':
        x = Dense(args.classes,
                  activation='softmax' if args.classes > 1 else 'sigmoid',
                  name='main_output')(x)
        model_input = [img_input]
        model_output = [x]

    elif args.embedding == 'arcface':
        # x = _normalization(x, norm=args.norm, name='avg_pool_norm')
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        label = Input(shape=(args.classes, ), name='arcface_input')
        x = ArcMarginPenaltyLogists(num_classes=args.classes,
                                    margin=args.margin,
                                    logist_scale=args.logist_scale,
                                    name='arcface_output')(x, label)
        model_input = [img_input, label]
        model_output = [x]

    elif args.embedding == 'dual':
        # bengali 8th model
        # x = _normalization(x, norm=args.norm, name='avg_pool_norm')
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        x1 = _activation(x, activation=args.activation, name='fc2_acti')
        x1 = Dense(args.classes,
                   activation='softmax' if args.classes > 1 else 'sigmoid',
                   name='main_output')(x1)

        label = Input(shape=(args.classes, ), name='arcface_input')
        x2 = ArcMarginPenaltyLogists(num_classes=args.classes,
                                     margin=args.margin,
                                     logist_scale=args.logist_scale,
                                     name='arcface_output')(x, label)
        model_input = [img_input, label]
        model_output = [x1, x2]

    else:
        raise ValueError()

    # Create model.
    model = Model(model_input,
                  model_output,
                  name='{}_{}'.format(args.backbone, args.embedding))

    return model
Пример #9
0
def block(args,
          inputs,
          drop_rate=0.,
          name='',
          filters_in=32,
          filters_out=16,
          kernel_size=3,
          strides=1,
          expand_ratio=1,
          se_ratio=0.,
          id_skip=True):

    # Expansion phase
    filters = filters_in * expand_ratio
    if expand_ratio != 1:
        x = Conv2D(filters,
                   1,
                   padding='same',
                   use_bias=False,
                   kernel_initializer=CONV_KERNEL_INITIALIZER,
                   name=name + 'expand_conv')(inputs)
        x = _normalization(x, norm=args.norm, name=name + 'expand_norm')
        x = _activation(x,
                        activation=args.activation,
                        name=name + 'expand_acti')
    else:
        x = inputs

    # Depthwise Convolution
    if strides == 2:
        x = ZeroPadding2D(padding=correct_pad(x, kernel_size),
                          name=name + 'dwconv_pad')(x)
        conv_pad = 'valid'
    else:
        conv_pad = 'same'

    x = DepthwiseConv2D(kernel_size,
                        strides=strides,
                        padding=conv_pad,
                        use_bias=False,
                        depthwise_initializer=CONV_KERNEL_INITIALIZER,
                        name=name + 'dwconv')(x)
    x = _normalization(x, norm=args.norm, name=name + 'norm')
    x = _activation(x, activation=args.activation, name=name + 'acti')

    if args.attention == 'se':
        x = _se_block(x, name=name + 'se')
    elif args.attention == 'cbam':
        x = _cbam_block(x, name=name + 'cbam')

    # Output phase
    x = Conv2D(filters_out,
               1,
               padding='same',
               use_bias=False,
               kernel_initializer=CONV_KERNEL_INITIALIZER,
               name=name + 'project_conv')(x)
    x = _normalization(x, norm=args.norm, name=name + 'project_norm')
    if (id_skip is True and strides == 1 and filters_in == filters_out):
        if drop_rate > 0:
            x = Dropout(drop_rate,
                        noise_shape=(None, 1, 1, 1),
                        name=name + 'drop')(x)
        x = Add(name=name + 'add')([x, inputs])

    return x
Пример #10
0
def VGG(args, **kwargs):
    total_layers = int(args.backbone[-2:])
    num_layers = {
        11: [1, 1, 2, 2, 2],
        13: [2, 2, 2, 2, 2],
        16: [2, 2, 3, 3, 3],
        19: [2, 2, 4, 4, 4]
    }

    filters = [1, 2, 4, 8, 8]

    img_input = x = Input(shape=(args.img_size, args.img_size,
                                 args.img_channel),
                          name='main_input')
    for i, layers in enumerate(num_layers[total_layers]):
        for layer in range(layers):
            x = Conv2D(64 * filters[i], (3, 3),
                       padding='same',
                       name='block{}_conv{}'.format(i + 1, layer + 1))(x)
            x = _normalization(x,
                               norm=args.norm,
                               name='block{}_norm{}'.format(i + 1, layer + 1))
            if layer == layers - 1:
                if args.attention == 'se':
                    x = _se_block(x,
                                  name='block{}_se{}'.format(i + 1, layer + 1))
                elif args.attention == 'cbam':
                    x = _cbam_block(x,
                                    name='block{}_cbam{}'.format(
                                        i + 1, layer + 1))

            x = _activation(x,
                            activation=args.activation,
                            name='block{}_acti{}'.format(i + 1, layer + 1))

        x = MaxPooling2D((2, 2), name='block{}_pool'.format(i + 1))(x)

    x = Flatten(name='flatten')(x)
    x = Dense(4096, name='fc1')(x)
    x = _normalization(x, norm=args.norm, name='fc1_norm')
    x = _activation(x, activation=args.activation, name='fc1_acti')

    if args.embedding == 'softmax':
        x = Dense(4096, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')
        x = _activation(x, activation=args.activation, name='fc2_acti')
        x = Dense(args.classes,
                  activation='softmax' if args.classes > 1 else 'sigmoid',
                  name='main_output')(x)

        model_input = [img_input]
        model_output = [x]

    elif args.embedding == 'arcface':
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        label = Input(shape=(args.classes, ), name='arcface_input')
        x = ArcMarginPenaltyLogists(num_classes=args.classes,
                                    margin=args.margin,
                                    logist_scale=args.logist_scale,
                                    name='arcface_output')(x, label)

        model_input = [img_input, label]
        model_output = [x]

    elif args.embedding == 'dual':
        x = Dense(args.embd_shape, name='fc2')(x)
        x = _normalization(x, norm=args.norm, name='fc2_norm')

        x1 = _activation(x, activation=args.activation, name='fc2_acti')
        x1 = Dense(args.classes,
                   activation='softmax' if args.classes > 1 else 'sigmoid',
                   name='main_output')(x1)

        label = Input(shape=(args.classes, ), name='arcface_input')
        x2 = ArcMarginPenaltyLogists(num_classes=args.classes,
                                     margin=args.margin,
                                     logist_scale=args.logist_scale,
                                     name='arcface_output')(x, label)

        model_input = [img_input, label]
        model_output = [x1, x2]

    else:
        raise ValueError()

    model = Model(model_input,
                  model_output,
                  name='{}_{}'.format(args.backbone, args.embedding))
    return model