在喀拉拉邦获得重量

时间:2019-12-08 18:41:04

标签: python-3.x tensorflow keras conv-neural-network

当我尝试使用get_weights来获取keras中CNN层的权重时,它会导致错误并说: “张量”对象没有属性“权重”。 我看到了keras文档,它说使用get_weights命令来处理权重。 所以我不知道这是怎么回事。 我也使用keras 2.2.4

这是我的代码的一部分:

input_layer = Input(shape=(32,32,3))
conv1 = Conv2D(32,(5,5), activation='relu', padding='same')(input_layer)
conv2 = Conv2D(32,(5,5), activation='relu', padding='same')(conv1)
maxpool1 = MaxPool2D(pool_size=2, padding='same')(conv2)
conv3 = Conv2D(32,(5,5), activation='relu', padding='same')(maxpool1)
conv4 = Conv2D(32,(5,5), activation='relu', padding='same')(conv3)
maxpool2 = MaxPool2D(pool_size=2, padding='same')(conv4)
conv5 = Conv2D(32,(5,5), activation='relu', padding='same')(maxpool2)
flatten1 = Flatten()(conv5)
dense1 = Dense(128, kernel_initializer='random_normal', bias_initializer='zeros')(flatten1)
dense2 = Dense(128,kernel_initializer='random_normal', bias_initializer='zeros')(dense1)
output_layer = Dense(10,activation='softmax',kernel_initializer='random_normal', bias_initializer='zeros')(dense2)
Cifar10_CNN = Model(input_layer, output_layer)

print(Cifar10_CNN.summary())

Cifar10_CNN.compile(optimizer=Adam(lr=0.0001), loss=categorical_crossentropy, metrics=['accuracy'])

conv1_weight_visualization = conv1.get_weights()
plt.imshow(conv1_weight_visualization)

1 个答案:

答案 0 :(得分:1)

for layer in Cifar10_CNN.layers: 
   print(layer.name, np.array(layer.get_weights()))

您可以像这样获得每个图层的权重。