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Updated 2 years ago

image-text-embedding

Image-Text Retrieval Embdding with ALBEF

author: David Wang


Description

This operator extracts features for image or text with ALBEF which can generate embeddings for text and image by jointly training an image encoder and text encoder to maximize the cosine similarity. This research introduced a contrastive loss to ALign the image and text representations BEfore Fusing (ALBEF) them through cross-modal attention, which enables more grounded vision and language representation learning. This repo is an adaptation from salesforce / ALBEF


Code Example

Load an image from path './teddy.jpg' to generate an image embedding.

Read the text 'A teddybear on a skateboard in Times Square.' to generate an text embedding.

Write the pipeline in simplified style:

import towhee

towhee.glob('./teddy.jpg') \
      .image_decode() \
      .image_text_embedding.albef(model_name='albef_4m', modality='image') \
      .show()

towhee.dc(["A teddybear on a skateboard in Times Square."]) \
      .image_text_embedding.albef(model_name='albef_4m', modality='text') \
      .show()
result1 result2

Write a same pipeline with explicit inputs/outputs name specifications:

import towhee

towhee.glob['path']('./teddy.jpg') \
      .image_decode['path', 'img']() \
      .image_text_embedding.albef['img', 'vec'](model_name='albef_4m', modality='image') \
      .select['img', 'vec']() \
      .show()

towhee.dc['text'](["A teddybear on a skateboard in Times Square."]) \
      .image_text_embedding.albef['text','vec'](model_name='albef_4m', modality='text') \
      .select['text', 'vec']() \
      .show()
result1 result2


Factory Constructor

Create the operator via the following factory method

albef(model_name, modality)

Parameters:

model_name: str

​ The model name of ALBEF. Supported model names:

  • albef_4m
  • albef_14m

modality: str

​ Which modality(image or text) is used to generate the embedding.


Interface

An image-text embedding operator takes a towhee image or string as input and generate an embedding in ndarray.

Parameters:

data: towhee.types.Image (a sub-class of numpy.ndarray) or str

​ The data (image or text based on specified modality) to generate embedding.

Returns: numpy.ndarray

​ The data embedding extracted by model.

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