museums

la’s-museum-of-jurassic-technology-damaged-by-fire

LA’s Museum of Jurassic Technology damaged by fire

Not all of the artifacts housed within the MJT’s labyrinthine space are, shall we say, truly historical; Wilson has a sense of humor, a vivid imagination, and a cheeky fondness for the absurd. Lawrence Weschler tracked down the provenance (where relevant) of the exhibits in his 1996 book, Mr. Wilson’s Cabinet of Wonder: Pronged Ants, Horned Humans, Mice on Toast, and Other Marvels of Jurassic Technology. (It’s a delightful read.)

Weschler’s blog provides the most detailed account of what happened when the fire broke out on the night of July 8. Wilson, who lives out back, saw what was happening, grabbed a couple of fire extinguishers, and ran to the gift shop entry hall, where he emptied the canisters into what Wilson describes as “a ferocious column of flame lapping up the far street-facing corner wall.”

That wasn’t enough to douse the fire, but fortunately, Wilson’s daughter and son-in-law soon arrived with a much bigger extinguisher and doused the flames. Firefighters showed up shortly thereafter to stamp out any lingering embers and told Wilson, “Just one more minute and you’d likely have lost the whole building.” Wilson described the smoke damage “as if a thin creamy brown liquid had been evenly poured over all the surfaces—the walls, the vitrines, the ceiling, the carpets, and eyepieces, everything.”

Staff and volunteers have been working to repair the damage ever since, with smoke damage repairs being particularly labor-intensive. Weschler closed his blog post with a call for donations to the MJT’s general fund to help the cash-strapped museum weather this particular storm, praising the MJT as “one of the most truly sublime institutions in the country.”

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mit-student-prints-ai-polymer-masks-to-restore-paintings-in-hours

MIT student prints AI polymer masks to restore paintings in hours

MIT graduate student Alex Kachkine once spent nine months meticulously restoring a damaged baroque Italian painting, which left him plenty of time to wonder if technology could speed things up. Last week, MIT News announced his solution: a technique that uses AI-generated polymer films to physically restore damaged paintings in hours rather than months. The research appears in Nature.

Kachkine’s method works by printing a transparent “mask” containing thousands of precisely color-matched regions that conservators can apply directly to an original artwork. Unlike traditional restoration, which permanently alters the painting, these masks can reportedly be removed whenever needed. So it’s a reversible process that does not permanently change a painting.

“Because there’s a digital record of what mask was used, in 100 years, the next time someone is working with this, they’ll have an extremely clear understanding of what was done to the painting,” Kachkine told MIT News. “And that’s never really been possible in conservation before.”

Figure 1 from the paper.

Figure 1 from the paper. Credit: MIT

Nature reports that up to 70 percent of institutional art collections remain hidden from public view due to damage—a large amount of cultural heritage sitting unseen in storage. Traditional restoration methods, where conservators painstakingly fill damaged areas one at a time while mixing exact color matches for each region, can take weeks to decades for a single painting. It’s skilled work that requires both artistic talent and deep technical knowledge, but there simply aren’t enough conservators to tackle the backlog.

The mechanical engineering student conceived the idea during a 2021 cross-country drive to MIT, when gallery visits revealed how much art remains hidden due to damage and restoration backlogs. As someone who restores paintings as a hobby, he understood both the problem and the potential for a technological solution.

To demonstrate his method, Kachkine chose a challenging test case: a 15th-century oil painting requiring repairs in 5,612 separate regions. An AI model identified damage patterns and generated 57,314 different colors to match the original work. The entire restoration process reportedly took 3.5 hours—about 66 times faster than traditional hand-painting methods.

A handout photo of Alex Kachkine, who developed the AI printed film technique.

Alex Kachkine, who developed the AI-printed film technique. Credit: MIT

Notably, Kachkine avoided using generative AI models like Stable Diffusion or the “full-area application” of generative adversarial networks (GANs) for the digital restoration step. According to the Nature paper, these models cause “spatial distortion” that would prevent proper alignment between the restored image and the damaged original.

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