无法在CIFAR100数据集[Keras]上训练VGG16,

我正在尝试从VGGNET-16数据集中的Keras库中训练CIFAR-100,但是验证的准确性和损失并没有提高,我认为在预处理数据时我犯了一些错误。

我已经尝试了Keras库中的CIFAR-100数据集,但是仍然面临着同样的问题。

代码

from tensorflow.keras.applications.vgg16 import VGG16
from tensorflow.keras import optimizers
from keras.utils import to_categorical

import numpy as np
import cv2 as cv
import glob
import os


train_path = r'/content/cifar-100/train'
test_path  = r'/content/cifar-100/test'

classes = ['class1','class2',...,'class100']


def load_train():

    images    = []
    labels    = []

    for fields in classes:

        index = classes.index(fields)
        path = os.path.join(train_path,fields,'*g')
        files = glob.glob(path)

        for fl in files:

          # Image
          image = cv.imread(fl)
          images.append(image)

          # Label
          label = np.zeros(len(classes))
          label[index] = 1.0
          labels.append(label)

    images = np.array(images)
    labels = np.array(labels)

    return images,labels

X_train,y_train = load_train()

model = VGG16(weights=None,classes=len(classes),input_shape=(32,32,3))

model.compile(loss='categorical_crossentropy',optimizer='sgd',metrics=['accuracy'])

history = model.fit(x=X_train,y=y_train,batch_size=256,epochs=40,verbose=1,validation_split=0.1,shuffle=True)

输出

Epoch 1/40
45000/45000 [==============================] - 16s 357us/sample - loss: 4.5153 - acc: 0.0157 - val_loss: 7.7937 - val_acc: 0.0000e+00
...
Epoch 10/40
45000/45000 [==============================] - 11s 248us/sample - loss: 3.2936 - acc: 0.1981 - val_loss: 10.8545 - val_acc: 0.0000e+00
...
Epoch 20/40
45000/45000 [==============================] - 11s 248us/sample - loss: 2.3035 - acc: 0.3951 - val_loss: 13.5597 - val_acc: 0.0000e+00
...
Epoch 30/40
45000/45000 [==============================] - 11s 248us/sample - loss: 0.7384 - acc: 0.7818 - val_loss: 21.9027 - val_acc: 0.0000e+00
...
Epoch 40/40
45000/45000 [==============================] - 11s 248us/sample - loss: 0.1570 - acc: 0.9527 - val_loss: 30.7987 - val_acc: 0.0000e+00

数据目录

无法在CIFAR100数据集[Keras]上训练VGG16,

任何人都可以看一下代码。

liyazhao 回答:无法在CIFAR100数据集[Keras]上训练VGG16,

如果标签和图像正确,则可以尝试多种操作。

1)您可以在将t赋予模型之前尝试对图像进行归一化。

    image = image / 255.

或者您也可以使用最小-最大规范化

min_val = np.min(image)
max_val = np.max(image)
image = (image-min_val) / (max_val-min_val)

2)您可以通过以下方式使用来自imagenet的预训练权重:

model = VGG16(weights="imagenet",classes=len(classes),input_shape=(32,32,3))

3)您可以使用自定义优化器并调整学习率。

optimizer = keras.optimizers.adam(lr=2e-5)

4)根据Daniel的建议,您可以添加辍学和批处理规范化层以减少过度拟合。

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