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Deep Learning based CBIR 101 (Part 1): intro

Content Based Image Retrieval (CBIR) systems are aimed to find similar images to an input image by querying an image data set. I am pretty sure you've used a CBIR several times before: here's the most popular one:



The search in CBIRs isn't text-based as images are indexed by their visual content. Features are extracted from an image database and stored in some file system or object storage.Then, any time a new image is passed as search criterion, all those images which features are closest to the input image features are returned as results.
The traditional feature extraction process relies on algorithms such as SURF or SIFT, but in this series I am going to describe my journey into CBIR using an unsupervised Deep Learning approach.
Here's a preview of the first attempt, in order to search for food images (the input image in this case is an apple pie):



In the next posts of this series I will walk through the details of the implementation before making things more complex by considering more challenging image sets. Stay tuned!

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