Using very deep autoencoders for content-based image retrieval

@inproceedings{Krizhevsky2011UsingVD,
  title={Using very deep autoencoders for content-based image retrieval},
  author={Alex Krizhevsky and Geoffrey E. Hinton},
  booktitle={ESANN},
  year={2011}
}
We show how to learn many layers of features on color images and we use these features to initialize deep autoencoders. We then use the autoencoders to map images to short binary codes. Using semantic hashing [6], 28-bit codes can be used to retrieve images that are similar to a query image in a time that is independent of the size of the database. This extremely fast retrieval makes it possible to search using multiple di erent transformations of the query image. 256-bit binary codes allow… CONTINUE READING
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