Comments (2)
Hello,
I am sorry to hear that you are having this problem. I was using python 3.7 but have confirmed 3.8 and 3.9 also work as well. But don't worry, I have copied the mean_std for your convience:
{'ucf101std': array([0.10898684, 0.10810246, 0.10679939]),
'omniglotstd': array([0.27046935, 0.27046935, 0.27046935]),
'caltech256mean': array([0.55177064, 0.53382816, 0.50567107]),
'vgg-petsstd': array([0.25922821, 0.25420126, 0.26146911]),
'sketchesmean': array([0.97960958, 0.97960958, 0.97960958]),
'dtdstd': array([0.25226877, 0.2409176 , 0.2499409 ]),
'vgg-petsmean': array([0.47812268, 0.44583364, 0.39578528]),
'svhnmean': [0.4376821, 0.4437697, 0.47280442],
'daimlerpedclsmean': array([0.48203529, 0.48203529, 0.48203529]),
'mnistmean': array([0.18228742, 0.18228742, 0.18228742]),
'planktonstd': array([0.16591533, 0.16591533, 0.16591533]),
'gtsrbstd': array([0.27560347, 0.26576119, 0.27089863]),
'planktonmean': array([0.94033073, 0.94033073, 0.94033073]),
'imagenet12mean': [0.485, 0.456, 0.406],
'vgg-flowersstd': array([0.28509808, 0.23842338, 0.2639633 ]),
'gtsrbmean': array([0.33921263, 0.3117836 , 0.32047045]),
'ucf101mean': array([0.49953101, 0.49880386, 0.49981996]),
'svhnstd': [0.19803012, 0.20101562, 0.19703614],
'dtdmean': array([0.52696497, 0.47025164, 0.42396662]),
'mit-indoorstd': array([0.25213846, 0.24675795, 0.24937516]),
'aircraftstd': array([0.21070221, 0.20508901, 0.23729657]),
'cifar100mean': [0.50705882, 0.48666667, 0.44078431],
'mit-indoormean': array([0.48822609, 0.43138942, 0.37296835]),
'omniglotmean': array([0.08099839, 0.08099839, 0.08099839]),
'aircraftmean': array([0.47983041, 0.51074066, 0.53437998]),
'caltech256std': array([0.31026209, 0.30732538, 0.32094492]),
'sketchesstd': array([0.06532731, 0.06532731, 0.06532731]),
'daimlerpedclsstd': array([0.23612616, 0.23612616, 0.23612616]),
'imagenet12std': [0.229, 0.224, 0.225],
'vgg-flowersmean': array([0.43414682, 0.38309883, 0.29714763]),
'cifar100std': [0.26745098, 0.25647059, 0.27607843],
'mniststd': array([0.38076293, 0.38076293, 0.38076293])}
Hope that helps.
from mtan.
Thank you so much! I have no clue why this unpickling error happens but this solves my problem. Thanks again
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