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cutout's Issues

Which version of SVHN is used to train?

Many thanks for your clean codes.

I wonder which version of SVHN dataset (it consists of two sub-versions, one including 73257 training images and 26032 test images, the other one named extra version containing 631131 images) is used to train?

About the test accuracy of cifar 100 on ResNet-18 without cutout

I have tried to run your code on cifar 100 with ResNet-18, but I can't get the same accuracy as you described in your paper.
My result is less than 70%, but yours is 77.54%
(with data augmentation, but without cutout. I just clone your code, and didn't do any change on your model or anything else)

So my question is: Is here any training tricks that didn't mention in your paper or code?

Thank you!

Questions about the parameters of cutout in object detection?

In object detection, I would like to ask how to set the default parameter of cut out better? For example, num_holes and length, I want to know whether you has done any experiments when adding these parameters, or has anyone else set them? Thank you

Need Help Getting Cutout to work Properly

Hi @TDeVries and @gwtaylor ! This paper is amazing(!!!!) and I've been using it's insights ever since it came out. Although I feel I am not getting the same benefits everyone else is getting when applying this regularization technique to my training process. I have a few questions to clear some cobwebs in my head regarding the technique:

  1. How important is per channel normalization to getting cutout to work properly? Is dividing by 255 a bad way to normalize images? What is a go-to image normalization approach?

  2. When should cutout be applied? Should it be applied before OR after image normalization?

  3. If I have other augmentations happening to my images, should cutout be applied before OR after my other augmentations?

Thank you!!

hi,I have a question about your paper?Could you give me some tips?

First,thank you very much,You have done a very good job.
I don't unstand the following content in your paper
Figure 4: Magnitude of feature activations, sorted by descending value, and averaged over all test samples. A standard ResNet18 is compared with a ResNet18 trained with cutout at three different depths.

could your give me some tips how do you generate these figures?
and I don't know the means of the abscissa and ordinate values.
I need you help.thank you.

Is there any change in Wide ResNet for STL10?

I only modify the global pooling according to STL10's image size. I also follow the implementation details you mentioned in the paper. But I cannot reproduce the result of STL10+ as 14:21 ± 0:29. My result is about 18. So I was wondering did you make some change in WRN?
My normalize parameters are mean as [0.44671097, 0.4398105 , 0.4066468 ], std as [0.2603405 , 0.25657743, 0.27126738]. Could you help me to reproduce the results?

TypeError: 'tuple' object is not callable

I am trying to use cutout in my implementation, I keep getting the error below when I run the train code. Please, am I doing something wrong?

from cutout import Cutout

train_transform = transforms.Compose([
transforms.RandomCrop(32, padding=4, fill=128),
transforms.RandomHorizontalFlip(),
CIFAR10Policy(),
Cutout(n_holes=1, length=16),
transforms.ToTensor(),
transforms.Normalize((0.4914, 0.4822, 0.4465), (0.2023, 0.1994, 0.2010))
])


TypeError Traceback (most recent call last)
in
4 correct = 0.0
5 total = 0.0
----> 6 for i, data in enumerate(train_loader):
7 # get the inputs; data is a list of [inputs, labels]
8 inputs, labels = data

~/anaconda3/lib/python3.7/site-packages/torch/utils/data/dataloader.py in next(self)
817 else:
818 del self._task_info[idx]
--> 819 return self._process_data(data)
820
821 next = next # Python 2 compatibility

~/anaconda3/lib/python3.7/site-packages/torch/utils/data/dataloader.py in _process_data(self, data)
844 self._try_put_index()
845 if isinstance(data, ExceptionWrapper):
--> 846 data.reraise()
847 return data
848

~/anaconda3/lib/python3.7/site-packages/torch/_utils.py in reraise(self)
383 # (https://bugs.python.org/issue2651), so we work around it.
384 msg = KeyErrorMessage(msg)
--> 385 raise self.exc_type(msg)

TypeError: Caught TypeError in DataLoader worker process 0.
Original Traceback (most recent call last):
File "/home/enoch/anaconda3/lib/python3.7/site-packages/torch/utils/data/_utils/worker.py", line 178, in _worker_loop
data = fetcher.fetch(index)
File "/home/enoch/anaconda3/lib/python3.7/site-packages/torch/utils/data/_utils/fetch.py", line 44, in fetch
data = [self.dataset[idx] for idx in possibly_batched_index]
File "/home/enoch/anaconda3/lib/python3.7/site-packages/torch/utils/data/_utils/fetch.py", line 44, in
data = [self.dataset[idx] for idx in possibly_batched_index]
File "/home/enoch/anaconda3/lib/python3.7/site-packages/torchvision/datasets/cifar.py", line 125, in getitem
img = self.transform(img)
File "/home/enoch/anaconda3/lib/python3.7/site-packages/torchvision/transforms/transforms.py", line 61, in call
img = t(img)
File "/home/enoch/medicals/cutout.py", line 23, in call
h = img.size(1)
TypeError: 'tuple' object is not callable

CutOut in Albumentations

We added a generalized version of Cutout in Albumentains called CourseDropout

Generalized as it allows:

  1. Masking not one but many regions with the number of holes that is sampled or fixed.
  2. Shape could be square as in Cutout, or recnatgular
  3. Could be applied not only to images, but images, segmentation masks and key points

Feel free to check documentation

nb_layers should be int

When executing python train.py --dataset svhn --model wideresnet --learning_rate 0.01 --epochs 160 --cutout --length 20 I get the following error:

Traceback (most recent call last):
  File "train.py", line 149, in <module>
    dropRate=0.4)
  File "Cutout/model/wide_resnet.py", line 58, in __init__
    self.block1 = NetworkBlock(n, nChannels[0], nChannels[1], block, 1, dropRate)
  File "Cutout/model/wide_resnet.py", line 38, in __init__
    self.layer = self._make_layer(block, in_planes, out_planes, nb_layers, stride, dropRate)
  File "Cutout/model/wide_resnet.py", line 41, in _make_layer
    for i in range(nb_layers):
TypeError: 'float' object cannot be interpreted as an integer

This error stems from the division here. For Python3.x, integer division must be forced like this: n = (depth - 4) // 6

Extending Cutout with a probability of when it is applied

How about adding also a probability to vary when Cutout is applied? For example something like this:

class Cutout(object):
    """Randomly mask out one or more patches from an image.
    Args:
        n_holes (int): Number of patches to cut out of each image.
        length (int): The length (in pixels) of each square patch.
        p1 (float): Probability of applying CutOut (default value 1, always applied).
    """
    def __init__(self, n_holes, length, p1=1.0):
        self.n_holes = n_holes
        self.length = length
        self.p1 = p1
		
    def __call__(self, img):
        """
        Args:
            img (Tensor): Tensor image of size (C, H, W).
        Returns:
            Tensor: Image with n_holes of dimension length x length cut out of it.
        """
        if torch.rand(1) > p1:  #np.random.rand(1) > p1:  
            return img
            
            # [...]
            
            return img

So, when np.random.rand(1) is larger than p1 the input image is returned unchanged (most of the time if p1 is small), if I got it right.

Bug report same images are multiply generated when using multiple workers.

When I use torch.utils.data.DataLoader init with multi worker and also using Cutout for transform, I observed same transformed images were generated. This number of images are same as number of workers. I guess this is because use of numpy.random in Cutout source code. In torchvision.transforms, numpy seems to be initialized by the same seed in each workers.

This issue can be fixed by replacing numpy.random with torch.randint in Cutout source code.

Could you add a LICENSE.md?

@TDeVries This repository looks very useful thanks for putting it up!

Would you mind adding a license to this? Without a license it is impossible to legally clone or run this code. If you're not sure and would like a suggestion the Apache 2.0 license is a good option. A quick summary of apache 2.0 is available at tl;dr legal. This is the same license used by TensorFlow and it is compatible with the pytorch license. Here is the license text:

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