The FashionMNIST dataset has 10 different output classes. How can I get a subset of this dataset with only specific classes? In my case, I only want images of sneaker, pullover, sandal and shirt classes (their classes are 7,2,5 and 6 respectively).
This is how I load my dataset.
train_dataset_full = torchvision.datasets.FashionMNIST(data_folder, train = True, download = True, transform = transforms.ToTensor())
The approach I’ve followed is below. Iterate through the dataset, one by one, then compare the 1st element (i.e. class) in the returned tuple to my required class. I’m stuck here. If the value returned is true, how can I append/add this observation to an empty dataset?
sneaker = 0 pullover = 0 sandal = 0 shirt = 0 for i in range(60000): if train_dataset_full[i] == 7: sneaker += 1 elif train_dataset_full[i] == 2: pullover += 1 elif train_dataset_full[i] == 5: sandal += 1 elif train_dataset_full[i] == 6: shirt += 1
Now, in place of
sneaker += 1,
pullover += 1,
sandal += 1 and
shirt += 1 I want to do something like this
empty_dataset.append(train_dataset_full[i]) or something similar.
If the above approach is incorrect, please suggest another method.