Beispiel #1
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def get_transform(train, args):
    if train:
        return presets.DetectionPresetTrain(args.data_augmentation)
    elif not args.weights:
        return presets.DetectionPresetEval()
    else:
        weights = PM.get_weight(args.weights)
        return weights.transforms()
Beispiel #2
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def get_transform(train, args):
    if train:
        return presets.DetectionPresetTrain(data_augmentation=args.data_augmentation)
    elif args.weights and args.test_only:
        weights = torchvision.models.get_weight(args.weights)
        trans = weights.transforms()
        return lambda img, target: (trans(img), target)
    else:
        return presets.DetectionPresetEval()
Beispiel #3
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def get_transform(train, args):
    if train:
        return presets.DetectionPresetTrain(args.data_augmentation)
    elif not args.prototype:
        return presets.DetectionPresetEval()
    else:
        if args.weights:
            weights = prototype.models.get_weight(args.weights)
            return weights.transforms()
        else:
            return prototype.transforms.CocoEval()
Beispiel #4
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def get_transform(train):
    return presets.DetectionPresetTrain(
    ) if train else presets.DetectionPresetEval()
Beispiel #5
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def get_transform(train, data_augmentation):
    return presets.DetectionPresetTrain(
        data_augmentation) if train else presets.DetectionPresetEval()