geospatial: everything about it is hard, but it's also the most fun problem area, also all of the hard problems are things that nobody expects to be hard
My "day job" is working at the Flickr Foundation helping nurture and grow Flickr Commons. We're approaching an important milestone, re-opening the doors to Flickr Commons, a collection of photography collections all of which have no known copyright restrictions.
It's been around since 2008 and is comprised of nearly two million photos. Do you work for a GLAM institution that might want to be part of it? If so, please read our main post and send us your details. 🤩
It’s pretty old-fashioned now. The vanilla DWT, the Tudor-era entropy coder – with only admiration for what it was in 2003, no one would propose a new format like ICER today. But it’s interesting in itself and as a what-if. (What if JPEG 2000 were designed for normal people, basically.)
I was just saying to a friend that JPEG 2000 never succeeded in supplanting JPEG outside a few high-end niches (mapping, archives, medical imaging) due to a scope-crept, complex, IP-unclear, and generally unappealing-to-nonspecialist-developers design, but I think there’s an alternate history not too far away in the multiverse where someone adapted ICER into an OS and browser-supported JPEG replacement in, like, 2005.
https://github.com/TheRealOrange/icer_compression is pretty neat – a mostly complete implementation of ICER, a wavelet-based, error-resilient image compression format designed by NASA 20+ years ago for Spirit and Opportunity.
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Image→image ANN design opinions
@secretasianman Their podcasters are terrible.
Image→image ANN design opinions
Based on informal tinkering and reading. Happy to discuss, within reason.
1. QKV attention transformers work but are gross – O(n²) and equivariance problems – and will not last.
2. Most – not all! – learned convolutions are wasted and should be replaced by fixed bases or frames, or at least grouped convolutions.
3. Diffusion and flow training approaches are immature but way more elegant than x→y training.
5. MMA regularization is good.
I’m tinkering with something where shearlets are very clearly The Right Tool For The Job. There is one pytorch library implementing them in what looks like a good way. Its last commit was 3 years ago and it’s not on PyPI; turns out you have to compile it locally against the CUDA SDK. Using it would instantly make my project unportable. I’m not complaining about the author of the library – if anything, I’m grateful to them. But I’m certainly complaining about the situation.
@kissane It was @grantimatter who introduced me to it. (I haven’t been keeping up lately but I’m looking forward to catching up eventually.)
Like if you see something real and find yourself wanting to think or say “Haha, just like in the movies/books/longform fiction podcasts”, interrogate that impulse at least medium-hard.
Nothings as analogous to human constructions as capstones, but there is intentionality in grain placement.
“We hypothesized that the ants could sense these force chains and avoided digging there,” Andrade says. “We thought maybe they were tapping grains of soil, and that way they could assess the mechanical forces on them.”
You know him on the internet. Eucalypt-adjacent; very occasional writer. Consulting and passively looking for work in geospatial, image processing, and related fields.