예제 #1
0
def generate_model_2():
    ip = Input(shape=(MAX_NB_VARIABLES, MAX_TIMESTEPS))

    x = Masking()(ip)
    x = AttentionLSTM(8)(x)
    x = Dropout(0.8)(x)

    y = Permute((2, 1))(ip)
    y = Conv1D(128, 8, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)
    y = squeeze_excite_block(y)

    y = Conv1D(256, 5, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)
    y = squeeze_excite_block(y)

    y = Conv1D(128, 3, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)

    y = GlobalAveragePooling1D()(y)

    x = concatenate([x, y])

    out = Dense(NB_CLASS, activation='softmax')(x)

    model = Model(ip, out)
    model.summary()

    # add load model code here to fine-tune

    return model
예제 #2
0
def generate_model_2():
    ip = Input(shape=(MAX_NB_VARIABLES, MAX_TIMESTEPS))
    ''' sabsample timesteps to prevent OOM due to Attention LSTM '''
    stride = 2

    x = Permute((2, 1))(ip)
    x = Conv1D(MAX_NB_VARIABLES // stride,
               8,
               strides=stride,
               padding='same',
               activation='relu',
               use_bias=False,
               kernel_initializer='he_uniform')(
                   x)  # (None, variables / stride, timesteps)
    x = Permute((2, 1))(x)

    x = Masking()(x)
    x = AttentionLSTM(128)(x)
    x = Dropout(0.8)(x)

    y = Permute((2, 1))(ip)
    y = Conv1D(128, 8, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)
    y = squeeze_excite_block(y)

    y = Conv1D(256, 5, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)
    y = squeeze_excite_block(y)

    y = Conv1D(128, 3, padding='same', kernel_initializer='he_uniform')(y)
    y = BatchNormalization()(y)
    y = Activation('relu')(y)

    y = GlobalAveragePooling1D()(y)

    x = concatenate([x, y])

    out = Dense(NB_CLASS, activation='softmax')(x)

    model = Model(ip, out)
    model.summary()

    # add load model code here to fine-tune

    return model