| @@ -34,7 +34,7 @@ class GaussianBlur(_NaturalPerturb): | |||
| ksize (int): Size of gaussian kernel, this value must be non-negnative. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> ksize = 5 | |||
| @@ -74,11 +74,11 @@ class MotionBlur(_NaturalPerturb): | |||
| Args: | |||
| degree (int): Degree of blur. This value must be positive. Suggested value range in [1, 15]. | |||
| angle: (union[float, int]): Direction of motion blur. Angle=0 means up and down motion blur. Angle is | |||
| angle (union[float, int]): Direction of motion blur. Angle=0 means up and down motion blur. Angle is | |||
| counterclockwise. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> angle = 0 | |||
| @@ -132,7 +132,7 @@ class GradientBlur(_NaturalPerturb): | |||
| center (bool): Blurred or clear at the center of a specified point. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('xx.png') | |||
| >>> img = np.array(img) | |||
| >>> number = 5 | |||
| @@ -35,7 +35,7 @@ class UniformNoise(_NaturalPerturb): | |||
| [0.001, 0.15]. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> factor = 0.1 | |||
| @@ -80,7 +80,7 @@ class GaussianNoise(_NaturalPerturb): | |||
| [0.001, 0.15]. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> factor = 0.1 | |||
| @@ -124,7 +124,7 @@ class SaltAndPepperNoise(_NaturalPerturb): | |||
| [0.001, 0.15]. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> factor = 0.1 | |||
| @@ -28,16 +28,16 @@ TAG = 'Image Luminance' | |||
| class Contrast(_NaturalPerturb): | |||
| """ | |||
| r""" | |||
| Contrast of an image. | |||
| Args: | |||
| alpha (Union[float, int]): Control the contrast of an image. :math:`out_image = in_image*alpha+beta`. | |||
| alpha (Union[float, int]): Control the contrast of an image. :math:`out\_image = in\_image*alpha+beta`. | |||
| Suggested value range in [0.2, 2]. | |||
| beta (Union[float, int]): Delta added to alpha. Default: 0. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> alpha = 0.1 | |||
| @@ -37,7 +37,7 @@ class Translate(_NaturalPerturb): | |||
| in [-0.1, 0.1]. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> x_bias = 0.1 | |||
| @@ -84,7 +84,7 @@ class Scale(_NaturalPerturb): | |||
| abs(factor_y - factor_x) < 0.5. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> factor_x = 0.7 | |||
| @@ -131,7 +131,7 @@ class Shear(_NaturalPerturb): | |||
| direction (str): Direction of deformation. Optional value is 'vertical' or 'horizontal'. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> factor = 0.2 | |||
| @@ -186,7 +186,7 @@ class Rotate(_NaturalPerturb): | |||
| angle (Union[float, int]): Degrees of counter clockwise. Suggested value range in [-60, 60]. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> angle = 20 | |||
| @@ -240,7 +240,7 @@ class Perspective(_NaturalPerturb): | |||
| dst_pos (list): The point coordinates of the 4 points in ori_pos after perspective transformation. | |||
| auto_param (bool): Auto selected parameters. Selected parameters will preserve semantics of image. | |||
| Example: | |||
| Examples: | |||
| >>> img = cv2.imread('1.png') | |||
| >>> img = np.array(img) | |||
| >>> ori_pos = [[0, 0], [0, 800], [800, 0], [800, 800]] | |||