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by qz_kb
1006 days ago
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How the hell does the Seek by iNaturalist app work so well and also be small/performant enough to the job completely offline on a phone? You should really try it out for IDing animals and plants if you haven't, it's like a real life pokedex. Have they released any information (e.g. a whitepaper?) about how the model works or how it was trained? The ability to classify things incrementally and phylogenetically makes it helpful to narrow down your own search even when it doesn't know the exact species. I've been surprised by it even IDing the insects that made specific galls on random leaves or plants. |
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I use it to automatically tag pictures that I take. I took up bird photography a few years ago and it's become a very serious hobby. I just run my Python script (which wraps their TF model) and it extracts JPG thumbnails from my RAW photos, automatically crops them based on EXIF data (regarding the focus point and the focus distance) and then feeds it into the model. This cropping was critical - I can't just throw the model a downsampled 45 megapixel image straight from the camera, usually the subject is too small in the frame. I store the results in a sqlite database. So now I can quickly pull up all photos of a given species, and even sort them by other EXIF values like focus distance. I pipe the results of arbitrary sqlite queries into my own custom RAW photo viewer and I can quickly browse the photos. (e.g. "Show me all Green Heron photos sorted by focus distance.") The species identification results aren't perfect, but they are very good. And I store the score in sql too, so I can know how confident the model was.
One cool thing was that it revealed that I had photographed a Blackpoll Warbler in 2020 when I was a new and budding birder. I didn't think I had ever seen one. But I saw it listed in the program results, and was able to confirm by revisiting the photo.
I don't know if they've changed anything recently. Judging by some of their code on GitHub, it looked like they were also working on considering location when determining species, but the model I found doesn't seem to do that.
I can't tell you anything about how the model was actually trained, but this information may still be useful in understanding how the app operates.
Of course, I haven't published any of this code because the model isn't my own work.