ValueError: Unknown loss function

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1. 问题分析

  在使用 Keras 中的 load_model 函数重新载入模型的时,会出现如下的报错

Traceback (most recent call last):
  File "test_unet.py", line 79, in <module>
    model = load_model(weight_path)
  File "/usr/local/lib/python2.7/dist-packages/keras/models.py", line 274, in load_model
    sample_weight_mode=sample_weight_mode)
  File "/usr/local/lib/python2.7/dist-packages/keras/engine/training.py", line 636, in compile
    loss_function = losses.get(loss)
  File "/usr/local/lib/python2.7/dist-packages/keras/losses.py", line 122, in get
    return deserialize(identifier)
  File "/usr/local/lib/python2.7/dist-packages/keras/losses.py", line 114, in deserialize
    printable_module_name='loss function')
  File "/usr/local/lib/python2.7/dist-packages/keras/utils/generic_utils.py", line 164, in deserialize_keras_object
    ':' + function_name)
ValueError: Unknown loss function:dice_coef_loss

可以看到函数发生错误的地方可以追溯到 load_model 位置,分析提醒可以发现,是因为 Keras 找不到名为 dice_coef_loss 的损失函数。这个损失函数是我在函数训练过程中自定义的损失函数,具体如下

# parameter for loss function
smooth = 1.

#  metric function and loss function
def dice_coef(y_true, y_pred):
	y_true_f = K.flatten(y_true)
	y_pred_f = K.flatten(y_pred)
	intersection = K.sum(y_true_f * y_pred_f)
	return (2. * intersection + smooth) / (K.sum(y_true_f) + K.sum(y_pred_f) + smooth)


def dice_coef_loss(y_true, y_pred):
	return -dice_coef(y_true, y_pred)

  在这里我自定义了一个指标 dice_coef 和一个损失函数 dice_coef_loss。因为使用 model.save(filepath) 得到的会保存训练的损失函数,但是这个损失函数在 Keras 中的 losses.py 是找不到的是,所以才会报这样的错。

2. 修改方法

  首先可以看一下函数 load_model 的源码,在这里只给出说明部分如下

def load_model(filepath, custom_objects=None, compile=True):
    """Loads a model saved via `save_model`.

    # Arguments
        filepath: String, path to the saved model.
        custom_objects: Optional dictionary mapping names
            (strings) to custom classes or functions to be
            considered during deserialization.
        compile: Boolean, whether to compile the model
            after loading.

    # Returns
        A Keras model instance. If an optimizer was found
        as part of the saved model, the model is already
        compiled. Otherwise, the model is uncompiled and
        a warning will be displayed. When `compile` is set
        to False, the compilation is omitted without any
        warning.

    # Raises
        ImportError: if h5py is not available.
        ValueError: In case of an invalid savefile.
    """

其中的 custom_objects 是可选的字典,在反序列化过程中映射名称(字符串)到要考虑的自定义类或函数,所以可以直接通过字典来制定缺失的指标或者损失函数,如下

# parameter for loss function
smooth = 1.

#  metric function and loss function
def dice_coef(y_true, y_pred):
	y_true_f = K.flatten(y_true)
	y_pred_f = K.flatten(y_pred)
	intersection = K.sum(y_true_f * y_pred_f)
	return (2. * intersection + smooth) / (K.sum(y_true_f) + K.sum(y_pred_f) + smooth)


def dice_coef_loss(y_true, y_pred):
	return -dice_coef(y_true, y_pred)

# load model 
weight_path = './weights.h5'
model = load_model(weight_path,custom_objects={'dice_coef_loss': dice_coef_loss,'dice_coef':dice_coef})

重点看上面代码的最后一行,通过字典指定我们自定义的函数(或许是一个指标,或许是一个损失函数)就可以解决上面的问题。

参考

[1] Bisgates Github https://github.com/keras-team/keras/issues/5916#issuecomment-300038263

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转载自blog.csdn.net/dugudaibo/article/details/83034054