【问题标题】:How to train a Keras model using Functional API which has two inputs and two outputs and uses two ImageDataGenerator methods (flow_from_directory)如何使用具有两个输入和两个输出并使用两个 ImageDataGenerator 方法 (flow_from_directory) 的功能 API 训练 Keras 模型
【发布时间】:2019-10-18 09:53:18
【问题描述】:

我想使用具有两个输入和两个输出的功能性 Keras API 创建一个模型。该模型将使用ImageDataGenerator.flow_from_directory() 方法的两个实例从两个不同的目录(分别为inputs1 和inputs2)获取图像。

该模型还使用两个 lambda 层将生成器生成的图像附加到列表中以供进一步检查。

我的问题是如何训练这样的模型。这是一些玩具代码:

# Define our example directories and files
train_dir1 ='...\\cats_v_dogs_sample_training1'

train_dir2 = '...\\cats_v_dogs_sample_training2'

# Add our data-augmentation parameters to ImageDataGenerator
train_datagen = ImageDataGenerator(rescale = 1./255.,
                                   rotation_range = 40,
                                   width_shift_range = 0.2,
                                   height_shift_range = 0.2,
                                   shear_range = 0.2,
                                   zoom_range = 0.2,
                                   horizontal_flip = True)

# Flow training images in batches of 1 using train_datagen generator: inputs1
train_generator1 = train_datagen.flow_from_directory(train_dir1,
                                                    batch_size = 1,
                                                    class_mode = 'binary', 
                                                    target_size = (150, 150), shuffle = False)     

# Flow training images in batches of 1 using train_datagen generator: inputs2
train_generator2 = train_datagen.flow_from_directory(train_dir2,
                                                    batch_size = 1,
                                                    class_mode = 'binary', 
                                                    target_size = (150, 150), shuffle = False)     

imgs1 = []
imgs2 = []

def f_lambda1(x):

    imgs1.append(x)

    return(x)



def f_lambda2(x):

    imgs2.append(x)

    return(x)



# This returns a tensor
inputs1 = Input(shape=(150, 150, 3))
inputs2 = Input(shape=(150, 150, 3))

l1 = Lambda(f_lambda1, name = 'lambda1')(inputs1)
l2 = Lambda(f_lambda2 , name = 'lambda2')(inputs2)

x1 = Flatten()(inputs1)

x1 = Dense(1024, activation='relu')(x1)

x1 = Dropout(0.2)(x1)  

outputs1 = Dense(1, activation='sigmoid')(x1)    


x2 = Flatten()(inputs1)

x2 = Dense(1024, activation='relu')(x2)

x2 = Dropout(0.2)(x2)  

outputs2 = Dense(1, activation='sigmoid')(x2)    

model.compile()

# Train model on dataset -- The problem is that I have two not one training_generator, so the code below will not work

model.fit_generator(generator=training_generator,
                    validation_data=validation_generator,
                    use_multiprocessing=True,
                    workers=6)

【问题讨论】:

    标签: python tensorflow keras image-preprocessing


    【解决方案1】:

    创建一个连接的生成器。

    在本例中,两个火车生成器的长度必须相同:

    class JoinedGenerator(keras.utils.Sequence):
        def __init__(self, generator1, generator2)
            self.generator1 = generator1
            self.generator2 = generator2 
    
        def __len__(self):
            return len(self.generator1)
    
        def __getitem__(self, i):
            x1, y1 = self.generator1[i]
            x2, y2 = self.generator2[i]
            return [x1, x2], [y1, y2]
    
        def on_epoch_end(self):
            self.generator1.on_epoch_end()
            self.generator2.on_epoch_end()
    

    小心:您可能需要在两个生成器中使用shuffle=False,这样您的数据就不会混合(除非这不是问题)

    将其用作:

    training_generator = JoinedGenerator(train_generator1, train_generator2)
    

    你忘了定义你的模型:

    model = Model([inputs1, inputs2], [outputs1, outputs2])
    

    【讨论】:

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