首页
学习
活动
专区
圈层
工具
发布
社区首页 >问答首页 >基于彩色掩模的语义图像分割

基于彩色掩模的语义图像分割
EN

Stack Overflow用户
提问于 2019-10-02 03:03:07
回答 1查看 630关注 0票数 0

所以我有一组照片,它们的面具是彩色的,例如蓝色是椅子,红色是灯,等等。

因为我对所有这些都是新的,所以我已经尝试过用unet模型来做这件事,我已经用keras处理了图像,就像这样。

代码语言:javascript
复制
def data_generator(img_path,mask_path,batch_size):
    c=0
    n = os.listdir(img_path)
    m = os.listdir(mask_path)
    random.shuffle(n)
    while(True):
        img = np.zeros((batch_size,256,256,3)).astype("float")
        mask = np.zeros((batch_size,256,256,1)).astype("float")

        for i in range(c,c+batch_size):
            train_img = cv2.imread(img_path+"/"+n[i])/255.
            train_img = cv2.resize(train_img,(256,256))
            img[i-c] = train_img

            train_mask = cv2.imread(mask_path+"/"+m[i],cv2.IMREAD_GRAYSCALE)/255.
            train_mask = cv2.resize(train_mask,(256,256))
            train_mask = train_mask.reshape(256,256,1)

            mask[i-c]=train_mask

        c+=batch_size
        if(c+batch_size>=len(os.listdir(img_path))):
            c=0
            random.shuffle(n)

        yield img,mask

现在仔细观察,我认为这种方法不适用于我的口罩,我尝试将口罩处理为rgb颜色,但我的模型不会像那样训练。

模型。

代码语言:javascript
复制
def unet(pretrained_weights = None,input_size = (256,256,3)):
    inputs = Input(input_size)
    conv1 = Conv2D(64, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(inputs)
    conv1 = Conv2D(64, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv1)
    pool1 = MaxPooling2D(pool_size=(2, 2))(conv1)
    conv2 = Conv2D(128, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(pool1)
    conv2 = Conv2D(128, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv2)
    pool2 = MaxPooling2D(pool_size=(2, 2))(conv2)
    conv3 = Conv2D(256, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(pool2)
    conv3 = Conv2D(256, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv3)
    pool3 = MaxPooling2D(pool_size=(2, 2))(conv3)
    conv4 = Conv2D(512, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(pool3)
    conv4 = Conv2D(512, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv4)
    drop4 = Dropout(0.5)(conv4)
    pool4 = MaxPooling2D(pool_size=(2, 2))(drop4)

    conv5 = Conv2D(1024, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(pool4)
    conv5 = Conv2D(1024, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv5)
    drop5 = Dropout(0.5)(conv5)

    up6 = Conv2D(512, 2, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(UpSampling2D(size = (2,2))(drop5))
    merge6 = concatenate([drop4,up6], axis = 3)
    conv6 = Conv2D(512, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(merge6)
    conv6 = Conv2D(512, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv6)

    up7 = Conv2D(256, 2, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(UpSampling2D(size = (2,2))(conv6))
    merge7 = concatenate([conv3,up7], axis = 3)
    conv7 = Conv2D(256, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(merge7)
    conv7 = Conv2D(256, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv7)

    up8 = Conv2D(128, 2, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(UpSampling2D(size = (2,2))(conv7))
    merge8 = concatenate([conv2,up8], axis = 3)
    conv8 = Conv2D(128, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(merge8)
    conv8 = Conv2D(128, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv8)

    up9 = Conv2D(64, 2, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(UpSampling2D(size = (2,2))(conv8))
    merge9 = concatenate([conv1,up9], axis = 3)
    conv9 = Conv2D(64, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(merge9)
    conv9 = Conv2D(64, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv9)
    conv9 = Conv2D(2, 3, activation = 'relu', padding = 'same', kernel_initializer = 'he_normal')(conv9)
    conv10 = Conv2D(1, 1, activation = 'sigmoid')(conv9)

    model = Model(input = inputs, output = conv10)

    model.compile(optimizer = Adam(lr = 1e-4), loss = 'binary_crossentropy', metrics = ['accuracy'])

    #model.summary()

    if(pretrained_weights):
        model.load_weights(pretrained_weights)

    return model

所以我的问题是如何训练一个带有彩色图像蒙版的模型。

编辑,我拥有的数据的例子。

给定用于训练模型的图像

它的掩码

以及像这样的每个面罩的百分比。{"water": 4.2, "building": 33.5, "road": 0.0}

EN

回答 1

Stack Overflow用户

发布于 2019-10-02 09:54:33

在语义分割问题中,每个像素属于任何目标输出类/标签。因此,您的输出层conv10应该将类的总数(n_classes)作为no._of_kernels的值,将softmax作为激活函数,如下所示:

代码语言:javascript
复制
conv10 = Conv2D(**n_classes**, 1, activation = 'softmax')(conv9)

在这种情况下,在编译u-net模型时,损失也应该更改为categorical_crossentropy

代码语言:javascript
复制
model.compile(optimizer = Adam(lr = 1e-4), loss = 'categorical_crossentropy', metrics = ['accuracy'])

此外,您不应该标准化您的真实标签/蒙版图像,而是可以按如下方式进行编码:

代码语言:javascript
复制
train_mask = np.zeros((height, width, n_classes))
for c in range(n_classes):
    train_mask[:, :, c] = (img == c).astype(int)

我假设你有两个以上的真实输出类/标签,正如你提到的,你的掩码包含不同颜色的水,道路,建筑,...etc;如果你只有两个类,那么除了train_mask处理,你的模型配置是很好的。

票数 1
EN
页面原文内容由Stack Overflow提供。腾讯云小微IT领域专用引擎提供翻译支持
原文链接:

https://stackoverflow.com/questions/58190815

复制
相关文章

相似问题

领券
问题归档专栏文章快讯文章归档关键词归档开发者手册归档开发者手册 Section 归档