# Copyright 2020 - 2021 MONAI Consortium
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
# http://www.apache.org/licenses/LICENSE-2.0
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from typing import Optional, Tuple
import numpy as np
from monai.transforms.utils import rescale_array
__all__ = ["create_test_image_2d", "create_test_image_3d"]
[docs]def create_test_image_2d(
width: int,
height: int,
num_objs: int = 12,
rad_max: int = 30,
rad_min: int = 5,
noise_max: float = 0.0,
num_seg_classes: int = 5,
channel_dim: Optional[int] = None,
random_state: Optional[np.random.RandomState] = None,
) -> Tuple[np.ndarray, np.ndarray]:
"""
Return a noisy 2D image with `num_objs` circles and a 2D mask image. The maximum and minimum radii of the circles
are given as `rad_max` and `rad_min`. The mask will have `num_seg_classes` number of classes for segmentations labeled
sequentially from 1, plus a background class represented as 0. If `noise_max` is greater than 0 then noise will be
added to the image taken from the uniform distribution on range `[0,noise_max)`. If `channel_dim` is None, will create
an image without channel dimension, otherwise create an image with channel dimension as first dim or last dim.
Args:
width: width of the image. The value should be larger than `2 * rad_max`.
height: height of the image. The value should be larger than `2 * rad_max`.
num_objs: number of circles to generate. Defaults to `12`.
rad_max: maximum circle radius. Defaults to `30`.
rad_min: minimum circle radius. Defaults to `5`.
noise_max: if greater than 0 then noise will be added to the image taken from
the uniform distribution on range `[0,noise_max)`. Defaults to `0`.
num_seg_classes: number of classes for segmentations. Defaults to `5`.
channel_dim: if None, create an image without channel dimension, otherwise create
an image with channel dimension as first dim or last dim. Defaults to `None`.
random_state: the random generator to use. Defaults to `np.random`.
"""
if rad_max <= rad_min:
raise ValueError("`rad_min` should be less than `rad_max`.")
if rad_min < 1:
raise ValueError("`rad_min` should be no less than 1.")
min_size = min(width, height)
if min_size <= 2 * rad_max:
raise ValueError("the minimal size of the image should be larger than `2 * rad_max`.")
image = np.zeros((width, height))
rs: np.random.RandomState = np.random.random.__self__ if random_state is None else random_state # type: ignore
for _ in range(num_objs):
x = rs.randint(rad_max, width - rad_max)
y = rs.randint(rad_max, height - rad_max)
rad = rs.randint(rad_min, rad_max)
spy, spx = np.ogrid[-x : width - x, -y : height - y]
circle = (spx * spx + spy * spy) <= rad * rad
if num_seg_classes > 1:
image[circle] = np.ceil(rs.random() * num_seg_classes)
else:
image[circle] = rs.random() * 0.5 + 0.5
labels = np.ceil(image).astype(np.int32, copy=False)
norm = rs.uniform(0, num_seg_classes * noise_max, size=image.shape)
noisyimage: np.ndarray = rescale_array(np.maximum(image, norm)) # type: ignore
if channel_dim is not None:
if not (isinstance(channel_dim, int) and channel_dim in (-1, 0, 2)):
raise AssertionError("invalid channel dim.")
if channel_dim == 0:
noisyimage = noisyimage[None]
labels = labels[None]
else:
noisyimage = noisyimage[..., None]
labels = labels[..., None]
return noisyimage, labels
[docs]def create_test_image_3d(
height: int,
width: int,
depth: int,
num_objs: int = 12,
rad_max: int = 30,
rad_min: int = 5,
noise_max: float = 0.0,
num_seg_classes: int = 5,
channel_dim: Optional[int] = None,
random_state: Optional[np.random.RandomState] = None,
) -> Tuple[np.ndarray, np.ndarray]:
"""
Return a noisy 3D image and segmentation.
Args:
height: height of the image. The value should be larger than `2 * rad_max`.
width: width of the image. The value should be larger than `2 * rad_max`.
depth: depth of the image. The value should be larger than `2 * rad_max`.
num_objs: number of circles to generate. Defaults to `12`.
rad_max: maximum circle radius. Defaults to `30`.
rad_min: minimum circle radius. Defaults to `5`.
noise_max: if greater than 0 then noise will be added to the image taken from
the uniform distribution on range `[0,noise_max)`. Defaults to `0`.
num_seg_classes: number of classes for segmentations. Defaults to `5`.
channel_dim: if None, create an image without channel dimension, otherwise create
an image with channel dimension as first dim or last dim. Defaults to `None`.
random_state: the random generator to use. Defaults to `np.random`.
See also:
:py:meth:`~create_test_image_2d`
"""
if rad_max <= rad_min:
raise ValueError("`rad_min` should be less than `rad_max`.")
if rad_min < 1:
raise ValueError("`rad_min` should be no less than 1.")
min_size = min(width, height, depth)
if min_size <= 2 * rad_max:
raise ValueError("the minimal size of the image should be larger than `2 * rad_max`.")
image = np.zeros((width, height, depth))
rs: np.random.RandomState = np.random.random.__self__ if random_state is None else random_state # type: ignore
for _ in range(num_objs):
x = rs.randint(rad_max, width - rad_max)
y = rs.randint(rad_max, height - rad_max)
z = rs.randint(rad_max, depth - rad_max)
rad = rs.randint(rad_min, rad_max)
spy, spx, spz = np.ogrid[-x : width - x, -y : height - y, -z : depth - z]
circle = (spx * spx + spy * spy + spz * spz) <= rad * rad
if num_seg_classes > 1:
image[circle] = np.ceil(rs.random() * num_seg_classes)
else:
image[circle] = rs.random() * 0.5 + 0.5
labels = np.ceil(image).astype(np.int32, copy=False)
norm = rs.uniform(0, num_seg_classes * noise_max, size=image.shape)
noisyimage: np.ndarray = rescale_array(np.maximum(image, norm)) # type: ignore
if channel_dim is not None:
if not (isinstance(channel_dim, int) and channel_dim in (-1, 0, 3)):
raise AssertionError("invalid channel dim.")
noisyimage, labels = (
(noisyimage[None], labels[None]) if channel_dim == 0 else (noisyimage[..., None], labels[..., None])
)
return noisyimage, labels