Module Name | vgg19_imagenet |
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Category | image classification |
Network | vgg19_imagenet |
Dataset | ImageNet-2012 |
Fine-tuning supported or not | No |
Module Size | 549MB |
Latest update date | - |
Data indicators | - |
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- VGG is a serial of models for image classification proposed by university of Oxford and DeepMind. The serial models demonstrate 'the deeper the network is, the better the performance is'. And VGG is used for feature extraction as the backbone by most image classification tasks. This module is based on VGG19, trained on ImageNet-2012, and can predict an image of size 2242243.
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paddlepaddle >= 1.4.0
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paddlehub >= 1.0.0 | How to install PaddleHub
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$ hub install vgg19_imagenet
- In case of any problems during installation, please refer to: Windows_Quickstart | Linux_Quickstart | Mac_Quickstart
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$ hub run vgg19_imagenet --input_path "/PATH/TO/IMAGE"
- If you want to call the Hub module through the command line, please refer to: PaddleHub Command Line Instruction
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import paddlehub as hub import cv2 classifier = hub.Module(name="vgg19_imagenet") test_img_path = "/PATH/TO/IMAGE" input_dict = {"image": [test_img_path]} result = classifier.classification(data=input_dict)
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def classification(data)
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classification API.
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Parameters
- data (dict): key is "image", value is a list of image paths
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Return
- result(list[dict]): classication results, each element in the list is dict, key is the label name, and value is the corresponding probability
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1.0.0
First release
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$ hub install vgg19_imagenet==1.0.0
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