Пример #1
0
def Onet(pretrained=True, input_shape=(3, 48, 48), **kwargs):
    if input_shape is not None and len(input_shape) == 3:
        input_shape = tuple(input_shape)
    else:
        input_shape = (3, 48, 48)
    onet = ImageDetectionModel(input_shape=(3, 48, 48), output=o_net())
    onet.preprocess_flow = [Normalize(0, 255), image_backend_adaption]
    if pretrained == True:
        download_model_from_google_drive('1a1dAlSzJOAfIz77Ic38JMQJYWDG_b7-_',
                                         dirname, 'onet.pth')
        recovery_model = load(os.path.join(dirname, 'onet.pth'))
        recovery_model = fix_layer(recovery_model)
        recovery_model.to(_device)
        onet.model = recovery_model
    return onet
Пример #2
0
def Rnet(pretrained=True, input_shape=(3, 24, 24), **kwargs):
    if input_shape is not None and len(input_shape) == 3:
        input_shape = tuple(input_shape)
    else:
        input_shape = (3, 24, 24)
    rnet = ImageDetectionModel(input_shape=(3, 24, 24), output=r_net())
    rnet.preprocess_flow = [Normalize(0, 255), image_backend_adaption]
    if pretrained == True:
        download_model_from_google_drive('1CH7z133_KrcWMx9zXAblMCV8luiQ3wph',
                                         dirname, 'rnet.pth')
        recovery_model = load(os.path.join(dirname, 'rnet.pth'))
        recovery_model = fix_layer(recovery_model)
        recovery_model.to(_device)
        rnet.model = recovery_model
    return rnet
def Pnet(pretrained=True, input_shape=(3, 12, 12), **kwargs):
    if input_shape is not None and len(input_shape) == 3:
        input_shape = tuple(input_shape)
    else:
        input_shape = (3, 12, 12)
    pnet = ImageDetectionModel(input_shape=(3, 12, 12), output=p_net())
    pnet.preprocess_flow = [normalize(0, 255), image_backend_adaption]
    if pretrained == True:
        download_model_from_google_drive('1w9ahipO8D9U1dAXMc2BewuL0UqIBYWSX',
                                         dirname, 'pnet.pth')
        recovery_model = torch.load(os.path.join(dirname, 'pnet.pth'))
        recovery_model = fix_layer(recovery_model)
        recovery_model.to(_device)
        pnet.model = recovery_model
    return pnet
Пример #4
0
def Pnet(pretrained=True,
         input_shape=(3, 12, 12),
         freeze_features=True,
         **kwargs):
    if input_shape is not None and len(input_shape) == 3:
        input_shape = tuple(input_shape)
    else:
        input_shape = (3, 224, 224)
    pnet = ImageDetectionModel(input_shape=(3, 12, 12), output=p_net())
    if pretrained == True:
        download_model_from_google_drive('1w9ahipO8D9U1dAXMc2BewuL0UqIBYWSX',
                                         dirname, 'pnet.pth')
        recovery_model = fix_layer(load(os.path.join(dirname, 'pnet.pth')))
        pnet.model = recovery_model

    pnet.model.input_shape = input_shape
    pnet.model.to(_device)
    return pnet