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	Pipeline: Image Embedding using Resnet50
Authors: derekdqc, shiyu22
Overview
The pipeline is used to extract the feature vector of a given image. It first normalizes the image and then uses Resnet50 model to generate the vector.
Interface
Input Arguments:
- image:
- the input image to be encoded
- supported types: PIL.Image
 
Pipeline Output:
The pipeline returns a tuple Tuple[('feature_vector', numpy.ndarray)] containing following fields:
- feature_vector:
- the embedding of input image
- data type: numpy.ndarray
 
How to use
- Install Towhee
$ pip3 install towhee
You can refer to Getting Started with Towhee for more details. If you have any questions, you can submit an issue to the towhee repository.
- Run it with Towhee
>>> from towhee import pipeline
>>> from PIL import Image
>>> img = Image.open('path/to/your/image') # for example, './test.jpg'
>>> embedding_pipeline = pipeline('towhee/image-embedding-resnet50')
>>> embedding = embedding_pipeline(img)
How it works
This pipeline includes two main operators: transform image (implemented as towhee/transform-image) and image embedding (implemented as towhee/resnet50-image-embedding). The transform image op will first convert the original image into a normalized format, such as with 512x512 resolutions. Then, the normalized image will be encoded via image embedding op, and finally we get a feature vector of the given image.
Refer Towhee architecture for basic concepts in Towhee: pipeline, operator, dataframe.
		
      
        
        
        
          
            2.0 KiB
          
        
        
      
		
    
      
      
    
	
  
	Pipeline: Image Embedding using Resnet50
Authors: derekdqc, shiyu22
Overview
The pipeline is used to extract the feature vector of a given image. It first normalizes the image and then uses Resnet50 model to generate the vector.
Interface
Input Arguments:
- image:
- the input image to be encoded
- supported types: PIL.Image
 
Pipeline Output:
The pipeline returns a tuple Tuple[('feature_vector', numpy.ndarray)] containing following fields:
- feature_vector:
- the embedding of input image
- data type: numpy.ndarray
 
How to use
- Install Towhee
$ pip3 install towhee
You can refer to Getting Started with Towhee for more details. If you have any questions, you can submit an issue to the towhee repository.
- Run it with Towhee
>>> from towhee import pipeline
>>> from PIL import Image
>>> img = Image.open('path/to/your/image') # for example, './test.jpg'
>>> embedding_pipeline = pipeline('towhee/image-embedding-resnet50')
>>> embedding = embedding_pipeline(img)
How it works
This pipeline includes two main operators: transform image (implemented as towhee/transform-image) and image embedding (implemented as towhee/resnet50-image-embedding). The transform image op will first convert the original image into a normalized format, such as with 512x512 resolutions. Then, the normalized image will be encoded via image embedding op, and finally we get a feature vector of the given image.
Refer Towhee architecture for basic concepts in Towhee: pipeline, operator, dataframe.
 
  