12、TensorFlow 图像处理

一、图像编码与解码

图像在存储时并不是直接记录这些矩阵中的数字,而是记录经过压缩编码之后的结果。所以要将一张图像还原成一个三维矩阵,需要解码的过程。OpenCV 中的 imreadimwrite 就是一个解码和编码的过程。TensorFLow 中提供了相应的编码和解码的函数。

# 图像解码函数
tf.image.decode_image(
    contents,
    channels=None,
    name=None
)

# 参数
contents: 0-D string. The encoded image bytes.
channels: An optional int. Defaults to 0. Number of color channels for the decoded image.

# 返回值
Tensor with type uint8 with shape [height, width, num_channels] for BMP, JPEG, and PNG images and shape [num_frames, height, width, 3] for GIF images. 


# 图像编码函数
tf.image.encode_jpeg()
tf.image.encode_png()

二、图像大小调整

# 1、缩放
tf.image.resize_images(
    images,
    size,
    method=ResizeMethod.BILINEAR,
    align_corners=False
)

# 参数
images: 4-D Tensor of shape [batch, height, width, channels] or 3-D Tensor of shape [height, width, channels].

size: A 1-D int32 Tensor of 2 elements: new_height, new_width. The new size for the images.

method can be one of:
ResizeMethod.BILINEAR: 双线性插值法,默认
ResizeMethod.NEAREST_NEIGHBOR: 最近邻法
ResizeMethod.BICUBIC: 双三线性插值法
ResizeMethod.AREA: 面积插值法

# 返回值(float)
If images was 4-D, a 4-D float Tensor of shape [batch, new_height, new_width, channels]. If images was 3-D, a 3-D float Tensor of shape [new_height, new_width, channels].



# 2、裁剪(居中)或补零(四周均匀)
tf.image.resize_image_with_crop_or_pad(
    image,
    target_height,
    target_width
)

# 参数
image: 4-D Tensor of shape [batch, height, width, channels] or 3-D Tensor of shape [height, width, channels].

# 返回值
Cropped and/or padded image. If images was 4-D, a 4-D float Tensor of shape [batch, new_height, new_width, channels]. If images was 3-D, a 3-D float Tensor of shape [new_height, new_width, channels]



# 3、按比例居中裁剪
tf.image.central_crop(
    image,
    central_fraction
)



# 4、对输入图像做剪裁并通过插值方法调整尺寸
tf.image.crop_and_resizecrop_and_resize(
    image,
    boxes,
    box_ind,
    crop_size,
    method='bilinear',
    extrapolation_value=0,
    name=None
)



# 5、沿着给定的 bbox 坐标进行裁剪
tf.image.crop_to_bounding_box(
    image,
    offset_height,
    offset_width,
    target_height,
    target_width
)

# 参数
image: 4-D Tensor of shape [batch, height, width, channels] or 3-D Tensor of shape [height, width, channels].

bbox: the top-left corner of the returned image is at offset_height, offset_width in image, and its lower-right corner is at offset_height + target_height, offset_width + target_width.

# 返回值
If image was 4-D, a 4-D float Tensor of shape [batch, target_height, target_width, channels] If image was 3-D, a 3-D float Tensor of shape [target_height, target_width, channels]



# 6、沿着原图像补零到指定高度(target_height)和宽度(target_width)
tf.image.pad_to_bounding_boxpad_to_bounding_box(
    image,
    offset_height,
    offset_width,
    target_height,
    target_width
)

# 工作原理
Adds offset_height rows of zeros on top, offset_width columns of zeros on the left, and then pads the image on the bottom and right with zeros until it has dimensions target_height, target_width.

# 参数
image: 4-D Tensor of shape [batch, height, width, channels] or 3-D Tensor of shape [height, width, channels].

offset_height: Number of rows of zeros to add on top.
offset_width: Number of columns of zeros to add on the left.

target_height: Height of output image.
target_width: Width of output image.

# 返回值
If image was 4-D, a 4-D float Tensor of shape [batch, target_height, target_width, channels] If image was 3-D, a 3-D float Tensor of shape [target_height, target_width, channels]

三、图像翻转、旋转

# 1、(随机)上下翻转
tf.image.flip_up_down(image)
tf.image.random_flip_up_down(image,seed=None)


# 2、(随机)左右翻转
tf.image.flip_left_right(image)
tf.image.random_flip_left_right(image,seed=None)


# 3、沿对角线翻转:交换图像的第一维和第二维
tf.image.transpose_image(image)
# 参数
image: 3-D tensor of shape [height, width, channels]

# 返回值
A 3-D tensor of the same type and shape as image


# 4、将图像逆时针旋转 90*k 度
tf.image.rot90(image, k=1)
# 参数
image: A 3-D tensor of shape [height, width, channels].
k: A scalar integer. The number of times the image is rotated by 90 degrees.
name: A name for this operation (optional).

# 返回值
A rotated 3-D tensor of the same type and shape as image.


# 5、Rotate image(s) by the passed angle(s) in radians(弧度)
tf.contrib.image.rotate(
    images,
    angles,
    interpolation='NEAREST'
)
# 参数
images: A tensor of shape (num_images, num_rows, num_columns, num_channels) (NHWC), (num_rows, num_columns, num_channels) (HWC), or (num_rows, num_columns) (HW).

angles: A scalar angle to rotate all images by, or (if images has rank 4) a vector of length num_images, with an angle for each image in the batch.

interpolation: Interpolation mode. Supported values: "NEAREST", "BILINEAR".

# 返回值
Image(s) with the same type and shape as images, rotated by the given angle(s). Empty space due to the rotation will be filled with zeros. 

四、图像色彩调整

# 1、调整 RGB 图像或灰度图的亮度
# delta is the amount to add to the pixel values, should be in [0,1)
tf.image.adjust_brightness(
    image,
    delta
)


# 2、调整 RGB 图像的色相, delta must be in the interval [-1, 1]
tf.image.adjust_hue(
    image,
    delta,
    name=None
)


# 3、调整 RGB 图像或灰度图的对比度
tf.image.adjust_contrast(
    images,
    contrast_factor
)


# 4、调整 RGB 图像的饱和度
tf.image.adjust_saturation(
    image,
    saturation_factor,
    name=None
)


# 5、在输入图像上执行伽马校正
tf.image.adjust_gamma(
    image,
    gamma=1,
    gain=1
)


# 6、在[-max_delta, max_delta]的范围内随机调整图像的亮度,0 的时候就是原始图像
tf.image.random_brightness(
    image,
    max_delta,
    seed=None
)


# 7、在[-max_delta, max_delta]的范围内随机调整图像的色相
# max_delta must be in the interval [0, 0.5]
tf.image.random_hue(
    image,
    max_delta,
    seed=None
)


# 8、在[lower, upper] 的范围随机调整图像的对比度
tf.image.random_contrast(
    image,
    lower,
    upper,
    seed=None
)


# 9、在[lower, upper] 的范围随机调整图像的饱和度
tf.image.random_saturation(
    image,
    lower,
    upper,
    seed=None
)

# 10、图像色彩空间转换
tf.image.rgb_to_grayscale()
tf.image.grayscale_to_rgb()
tf.image.hsv_to_rgb()
tf.image.rgb_to_hsv()  # 必须先转换为实数(float32)图像


# 11、图像数据类型转换,eg: 转成 uint8-->float32, 除 255 转成 [0,1)
tf.image.convert_image_dtype(
    image,
    dtype,
    saturate=False,
    name=None
)


# 12、图像标准化处理(均值为0,方差为1)
tf.image.per_image_standardization(image)

五、处理标注框(bounding_box)

# 1、Draw bounding boxes on a batch of images
draw_bounding_boxes(
    images,
    boxes,
    name=None
)
# 参数
images: A Tensor. Must be one of the following types: float32, half. 4-D with shape [batch, height, width, depth]. A batch of images.

boxes: A Tensor of type float32. 3-D with shape [batch, num_bounding_boxes, 4] containing bounding boxes.

# 返回值
A Tensor. Has the same type as images. 4-D with the same shape as images. The batch of input images with bounding boxes drawn on the images.

# 数据类型和维度注意事项
images 要求为实数,所以需要先将图像矩阵转化为实数类型,并增加一个 batch 维度 1,eg:
batched = tf.expand_dims(
    tf.image.convert_image_dtype(images, tf.float32),
    axis=0
)

# 坐标系顺序和相对坐标注意事项
The coordinates of the each bounding box in boxes are encoded as [y_min, x_min, y_max, x_max]. The bounding box coordinates are floats in [0.0, 1.0] relative to the width and height of the underlying image.

For example, if an image is 100 x 200 pixels and the bounding box is [0.1, 0.2, 0.5, 0.9], the bottom left and upper right coordinates of the bounding box will be (10, 40) to (50, 180).



# 2、非极大值抑制
tf.image.non_max_suppression(
    boxes,
    scores,
    max_output_size,
    iou_threshold=0.5,
    name=None
)



# 3、Generate a single randomly distorted bounding box for an image
tf.image.sample_distorted_bounding_box(
    image_size,
    bounding_boxes,
    seed=None,
    seed2=None,
    min_object_covered=None,
    aspect_ratio_range=None,
    area_range=None,
    max_attempts=None,
    use_image_if_no_bounding_boxes=None,
    name=None
)

六、参考资料

1、https://www.tensorflow.org/api_docs/python/tf/image
2、https://www.tensorflow.org/api_docs/python/tf/contrib/image

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转载自blog.csdn.net/mzpmzk/article/details/78647662