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I'm building out a set of cooperative data stores with images, and I'm starting to implement some simple/trivial content-based search and sort algorithms: SIFT, sparse color-histogram distance, basic SVD, etc.

I am currently using sha1 hashes of binary data as indices in PostgreSQL tables. These hashes are 'dumb' -- they're calculated by feeding the data in question* straight to Python's hashlib.sha1 module, and stored in nullable char columns that are exactly as long as the sha1's base64 representation.

It would be quite a panacea to implement a hash algorithm that would yield hashes suitable for indexing Postgres tables, but that also described the image in some way, à la phash or hamming distance. While phash looks like a good candidate, it turns out to require the use of a proprietary storage engine and API... I'm looking for something less 'turn-key' that will play nice with my existing Python/Postgresql/Solr/Redis-based ecosystem.

It doesn't have to be the fastest -- it's more important for me to implement an algorithm (or algorithms) that can be hacked up a bit and stay somewhat cogent.

( * ) mostly this consists of untransformed or lightly transformed harvests from my images -- things like: JPEG/PNG/DNG image file content, ICC profile data structures, JSON dumps of EXIF/IPTC tagsets, and the like.

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There is a conflict between how DB indexes work and the requirements for an image hash. DB indexes are one-dimensional (linearly ordered). Image similarity is modeled as a metric in a multidimensional space (at least I don't know any algorithm that would use anything weaker.) There is no distance-preserving mapping from the multidimensional space onto the linear index. – Rafał Dowgird Aug 1 '11 at 10:41
Aha -- Jitamaro's post (below) seems to suggest a space-filling curve as a means to single-dimensionality without a great deal of lossiness. Is that a possible end-run in this case? ... In any case, at the moment I'm pursuing statistical color analysis rather than feature-extraction; I'll definitely take a different approach with indexing tables full of extracted features as per your point -- but so if you're humoring me here for a moment: might there be a hash for color data (single-channel or otherwise) that could also work as a db index?... Either way, thanks for the tip. – fish2000 Aug 1 '11 at 15:31
I'm afraid even a single color is too much for a single dimension. We humans are trichromatic, which means that color similarity is 3D. You have to pick a single value - luminancy, variance thereof, or something similar. Not much hope for accuracy with this approach, though. – Rafał Dowgird Aug 1 '11 at 19:02
@Rafal: A space-filling-curve can reduce any dimension to 1 dimension. That's because a sfc has a fractal dimension. So a 3d curve is possible. – Phpdevpad Aug 2 '11 at 8:19
For 2d and 3d you can find a good solution at I've wrote a fast 2d php version for (hilbert curve). I got the recipe from the hackers cookbook and from here…. The english wikipeda has some good code, too. But normaly you would start with writing a L-system and using a recursion. – Phpdevpad Aug 7 '11 at 16:52
up vote 0 down vote accepted

What about a space-filling-curve, for example a hilbert curve or moore curve?

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That's an interesting avenue of inquiry -- I have read a litte about hilbert curves, but I haven't put one to use. I'm assuming that I use the curve to flatten the image into a giant vector, upon which I can then apply a wide range of hashes and/or other transforms... Is that your suggestion? – fish2000 Aug 1 '11 at 15:20
Basically a hilbert curve is a tiling curve. It helps to reduce the 2d complexity to a 1d complexity but to transform it into a hash you will need another algorithm, maybe a fast fourier transformation. I wanted to suggest you something like the jpeg compression which uses a z-curve and a fast fourier transformation. – Phpdevpad Aug 1 '11 at 16:11

Quite interesting approach is described in

Basically image is scaled to 15x15 px, then intensity is calculated for each pixel (0.299 * red + 0,587 * green + 0,114 * blue). This array of 255 values is stored in PostgreSQL table column with Gin/Gist index for fast search of similar images.

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