gpt4 book ai didi

python - Keras 自定义层值错误 : An operation has `None` for gradient.

转载 作者:行者123 更新时间:2023-11-30 22:11:50 24 4
gpt4 key购买 nike

我创建了一个自定义 Keras Conv2D 层,如下所示:

class CustConv2D(Conv2D):

def __init__(self, filters, kernel_size, kernelB=None, activation=None, **kwargs):
self.rank = 2
self.num_filters = filters
self.kernel_size = conv_utils.normalize_tuple(kernel_size, self.rank, 'kernel_size')
self.kernelB = kernelB
self.activation = activations.get(activation)

super(CustConv2D, self).__init__(self.num_filters, self.kernel_size, **kwargs)

def build(self, input_shape):
if K.image_data_format() == 'channels_first':
channel_axis = 1
else:
channel_axis = -1
if input_shape[channel_axis] is None:
raise ValueError('The channel dimension of the inputs '
'should be defined. Found `None`.')

input_dim = input_shape[channel_axis]
num_basis = K.int_shape(self.kernelB)[-1]

kernel_shape = (num_basis, input_dim, self.num_filters)

self.kernelA = self.add_weight(shape=kernel_shape,
initializer=RandomUniform(minval=-1.0,
maxval=1.0, seed=None),
name='kernelA',
regularizer=self.kernel_regularizer,
constraint=self.kernel_constraint)

self.kernel = K.sum(self.kernelA[None, None, :, :, :] * self.kernelB[:, :, :, None, None], axis=2)

# Set input spec.
self.input_spec = InputSpec(ndim=self.rank + 2, axes={channel_axis: input_dim})
self.built = True
super(CustConv2D, self).build(input_shape)

我使用 CustomConv2D 作为模型的第一个 Conv 层。

img = Input(shape=(width, height, 1))
l1 = CustConv2D(filters=64, kernel_size=(11, 11), kernelB=basis_L1, activation='relu')(img)

模型编译良好;但在训练时出现以下错误。

ValueError: An operation has None for gradient. Please make sure that all of your ops have a gradient defined (i.e. are differentiable). Common ops without gradient: K.argmax, K.round, K.eval.

有没有办法找出哪个操作引发了错误?另外,我编写自定义层的方式是否存在任何实现错误?

最佳答案

您正在通过调用原始Conv2D构建来破坏您的构建(您的self.kernel将被替换,然后self.kernelA将永远不会被使用,因此反向传播将永远达不到)。

它也期待偏见和所有常规的东西:

class CustConv2D(Conv2D):

def __init__(self, filters, kernel_size, kernelB=None, activation=None, **kwargs):

#...
#...

#don't use bias if you're not defining it:
super(CustConv2D, self).__init__(self.num_filters, self.kernel_size,
activation=activation,
use_bias=False, **kwargs)

#bonus: don't forget to add the activation to the call above
#it will also replace all your `self.anything` defined before this call


def build(self, input_shape):

#...
#...

#don't use bias:
self.bias = None

#consider the layer built
self.built = True

#do not destroy your build
#comment: super(CustConv2D, self).build(input_shape)

关于python - Keras 自定义层值错误 : An operation has `None` for gradient.,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/51304703/

24 4 0
Copyright 2021 - 2024 cfsdn All Rights Reserved 蜀ICP备2022000587号
广告合作:1813099741@qq.com 6ren.com