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i've recently followed a tutorial here https://www.provideocoalition.com/automatic-rotoscopingfor-free/

And ended with a functional bit of code that generate masks outlining interestings objects.

But now, i want ot run it on my gpu, since cpu is way too slow.

I have CUDA installed and all, but pytorch refuses to use it. I've used most tricks like setting torch.device and all, but to no avail; pytorch keep using 0 gpu.

here's the code :

from PIL import Image
import torch
import torchvision.transforms as T
from torchvision import models
import numpy as np

fcn = None


device = torch.device('cuda')
torch.cuda.set_device(0)
print('Using device:', device)
print()

if device.type == 'cuda':
    print(torch.cuda.get_device_name(0))
    print('Memory Usage:')
    print('Allocated:', round(torch.cuda.memory_allocated(0)/1024**3,1), 'GB')
    print('Cached:', round(torch.cuda.memory_cached(0)/1024**3,1), 'GB')


def getRotoModel():
    global fcn
    #fcn = models.segmentation.fcn_resnet101(pretrained=True).eval()
    fcn = models.segmentation.deeplabv3_resnet101(pretrained=True).eval()


# Define the helper function
def decode_segmap(image, nc=21):

    label_colors = np.array([(0, 0, 0),  # 0=background
                           # 1=aeroplane, 2=bicycle, 3=bird, 4=boat, 5=bottle
               (128, 0, 0), (0, 128, 0), (128, 128, 0), (0, 0, 128), (128, 0, 128),
               # 6=bus, 7=car, 8=cat, 9=chair, 10=cow
               (0, 128, 128), (128, 128, 128), (64, 0, 0), (192, 0, 0), (64, 128, 0),
               # 11=dining table, 12=dog, 13=horse, 14=motorbike, 15=person
               (192, 128, 0), (64, 0, 128), (192, 0, 128), (64, 128, 128), (192, 128, 128),
               # 16=potted plant, 17=sheep, 18=sofa, 19=train, 20=tv/monitor
               (0, 64, 0), (128, 64, 0), (0, 192, 0), (128, 192, 0), (0, 64, 128)])

    r = np.zeros_like(image).astype(np.uint8)
    g = np.zeros_like(image).astype(np.uint8)
    b = np.zeros_like(image).astype(np.uint8)

    for l in range(0, nc):
        idx = image == l
        r[idx] = label_colors[l, 0]
        g[idx] = label_colors[l, 1]
        b[idx] = label_colors[l, 2]

    rgb = np.stack([r, g, b], axis=2)
    return rgb

def createMatte(filename, matteName, size):
    img = Image.open(filename)
    trf = T.Compose([T.Resize(size),
                     T.ToTensor(), 
                     T.Normalize(mean = [0.485, 0.456, 0.406], 
                                 std = [0.229, 0.224, 0.225])])
    inp = trf(img).unsqueeze(0)
    if (fcn == None): getRotoModel()
    out = fcn(inp)['out']
    om = torch.argmax(out.squeeze(), dim=0).detach().cpu().numpy()
    rgb = decode_segmap(om)
    im = Image.fromarray(rgb)
    im.save(matteName)

What could i do ? thanks.

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  • 3
    Did you move any tensor to GPU (by using .cuda()) or created one on the GPU? – Raz Haleva Feb 4 '20 at 19:50
  • mh i don't think this code does that ? if i understood, tensors are like GPU matrixes, so i should rewrite all the numpy arrays as cuda tensors ? because i think that means rewriting the whole thing – Orsu Feb 4 '20 at 19:53
  • what do you mean by it refuses to use cuda but it keeps using GPU 0? if it's using GPU 0 it's also using cuda. Are you instead looking for multi-gpu support? for example nn.DataParallel? – jodag Feb 4 '20 at 20:21
  • @jodag sorry. By "using 0 GPU" meant, not using any gpu at all. Sorry! My gpu shows up when I run get_device_name but I can tell from the time it takes and the windows perf thing that the GPU is idle – Orsu Feb 4 '20 at 20:25
  • 1
    Try the following. In getRotoModel() add the line fcn.cuda() to the end and change fcn(inp)['out'] to fcn(inp.cuda())['out']. If you want to use the GPU you need to move the model and input tensor to the GPU. – jodag Feb 4 '20 at 20:33
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If everything is set up correctly you just have to move the tensors you want to process on the gpu to the gpu. You can try this to make sure it works in general

import torch
t = torch.tensor([1.0]) # create tensor with just a 1 in it
t = t.cuda() # Move t to the gpu
print(t) # Should print something like tensor([1], device='cuda:0')
print(t.mean()) # Test an operation just to be sure

You already have a device variable so instead of .cuda() you can just use .to(device). Which is also the preferable way to do it so you can just switch between cpu and gpu by setting one variable.

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  • so i'd need to rewrite most, if not all of my file right ? i hoped there would have been a "compute everything on the gpu" switch – Orsu Feb 5 '20 at 18:33
  • You don't really need to rewrite everything. Just add some .to(device) From looking at the code it might be enough to do it for the inp tensor and for the fcn model. So the network will be run on the gpu. I guess that is the part taking the longest to compute on CPU. – Nopileos Feb 6 '20 at 6:34

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