arssite's picture
Upload 28 files
ffbb48e verified
import nibabel as nib
import os
from torch.utils.data import Dataset
import numpy as np
import matplotlib.pyplot as plt
from skimage.transform import resize
from PIL import Image
import random
AX_INDEX = 78
COR_INDEX = 79
SAG_INDEX = 57
AX_SCETION = "[:, :, slice_i]"
COR_SCETION = "[:, slice_i, :]"
SAG_SCETION = "[slice_i, :, :]"
class AD_Standard_2DTestingSlices(Dataset):
"""labeled Faces in the Wild dataset."""
def __init__(self, root_dir, data_file, transform=None, slice = slice, size = 9):
"""
Args:
root_dir (string): Directory of all the images.
data_file (string): File name of the train/test split file.
transform (callable, optional): Optional transform to be applied on a sample.
data_augmentation (boolean): Optional data augmentation.
"""
self.root_dir = root_dir
self.data_file = data_file
self.transform = transform
self.size = size
def __len__(self):
return sum(1 for line in open(self.data_file))
def __getitem__(self, idx):
df = open(self.data_file)
lines = df.readlines()
lst = lines[idx].split()
img_name = lst[0]
img_label = lst[1]
image_path = os.path.join(self.root_dir, img_name)
image = nib.load(image_path)
samples = []
if img_label == 'Normal':
label = 0
elif img_label == 'AD':
label = 1
elif img_label == 'MCI':
label = 2
AXimageList = None
CORimageList = None
SAGimageList = None
if self.size == 3:
AXimageList = axKeySlice(image)
CORimageList = corKeySlice(image)
SAGimageList = sagKeySlice(image)
elif self.size == 9:
AXimageList = ax3Slices(image)
CORimageList = cor3Slices(image)
SAGimageList = sag3Slices(image)
for img2DList in (AXimageList, CORimageList, SAGimageList):
for image2D in img2DList:
if self.transform:
image2D = self.transform(image2D)
sample = {'image': image2D, 'label': label}
samples.append(sample)
assert len(samples) == self.size
random.shuffle(samples)
return samples
def getSlice(image_array, keyIndex, section, step = 1):
slice_p = keyIndex
slice_2Dimgs = []
slice_select_0 = None
slice_select_1 = None
slice_select_2 = None
i = 0
for slice_i in range(slice_p-step, slice_p+step+1, step):
slice_select = eval("image_array"+section)
exec("slice_select_"+str(i)+"=slice_select")
i += 1
slice_2Dimg = np.stack((slice_select_0, slice_select_1, slice_select_2), axis = 2)
slice_2Dimgs.append(slice_2Dimg)
return slice_2Dimgs
def axKeySlice(image):
image_array = np.array(image.get_data())
return getSlice(image_array, AX_INDEX, AX_SCETION)
def corKeySlice(image):
image_array = np.array(image.get_data())
return getSlice(image_array, COR_INDEX, COR_SCETION)
def sagKeySlice(image):
image_array = np.array(image.get_data())
return getSlice(image_array, SAG_INDEX, SAG_SCETION)
def get3Slices(image_array, keyIndex, section, step = 1):
slice_p = keyIndex
slice_2Dimgs = []
slice_select_0 = None
slice_select_1 = None
slice_select_2 = None
for shift in (-5, 0, 5):
slice_sp = slice_p + shift
i = 0
slice_select_0 = None
slice_select_1 = None
slice_select_2 = None
for slice_i in range(slice_sp-step, slice_sp+step+1, step):
slice_select = eval("image_array"+section)
exec("slice_select_"+str(i)+"=slice_select")
i += 1
slice_2Dimg = np.stack((slice_select_0, slice_select_1, slice_select_2), axis = 2)
slice_2Dimgs.append(slice_2Dimg)
return slice_2Dimgs
def ax3Slices(image):
image_array = np.array(image.get_data())
return get3Slices(image_array, AX_INDEX, AX_SCETION)
def cor3Slices(image):
image_array = np.array(image.get_data())
return get3Slices(image_array, COR_INDEX, COR_SCETION)
def sag3Slices(image):
image_array = np.array(image.get_data())
return get3Slices(image_array, SAG_INDEX, SAG_SCETION)