How AI is hijacking art history

Sonja Drimmer
Posted 11/1/21

(The Conversation is an independent and nonprofit source of news, analysis and commentary from academic experts.)

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(THE CONVERSATION) People tend to rejoice in the disclosure of a …

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How AI is hijacking art history

Posted

(The Conversation is an independent and nonprofit source of news, analysis and commentary from academic experts.)

,

(THE CONVERSATION) People tend to rejoice in the disclosure of a secret.

Or, at the very least, media outlets have come to realize that news of “mysteries solved” and “hidden treasures revealed” generate traffic and clicks.

So I’m never surprised when I see AI-assisted revelations about famous masters’ works of art go viral.

Over the past year alone, I’ve come across articles highlighting how artificial intelligence of a “lost lover” of Italian painter Modigliani, , and .

, I’ve become increasingly concerned about the coverage and circulation of these projects.

They have not, in actuality, revealed one secret or solved a single mystery.

What they have done is generate feel-good stories about AI.

Take the reports about the Modigliani and Picasso paintings.

These were projects executed by the same company, , which was founded not by art historians but by doctoral students in machine learning.

In both cases, Oxia Palus relied upon traditional X-rays, X-ray fluorescence and infrared imaging that had already been – work that had revealed preliminary paintings beneath the visible layer on the artists’ canvases.

The company edited these X-rays and by applying a technique called “.” This is a sophisticated-sounding term for a program that breaks works of art down into extremely small units, extrapolates a style from them and then promises to recreate images of other content in that same style.

Essentially, Oxia Palus stitches new works out of what the machine can learn from the existing X-ray images and other paintings by the same artist.

But outside of flexing the prowess of AI, is there any value – artistically, historically – to what the company is doing?

These recreations don’t teach us anything we didn’t know about the artists and their methods.

Artists paint over their works all the time. It’s so common that art historians and conservators have a word for it: . None of these earlier compositions was an Easter egg deposited in the painting for later researchers to discover. The original X-ray images were certainly valuable in that they .

But to me, what these programs are doing isn’t exactly newsworthy from the perspective of art history.

So when I do see these reproductions attracting media attention, it strikes me as soft diplomacy for AI, showcasing a “cultured” application of the technology at a time when skepticism of its , and is on the rise.

When AI gets attention for recovering lost works of art, it makes the technology sound a lot less scary than when it garners headlines or .

These studies and projects also seem to promote the idea that computer scientists are more adept at historical research than art historians.

For years, university humanities departments , with more money funneled into the sciences. With their claims to objectivity and empirically provable results, the sciences tend to command greater respect from funding bodies and the public, which offers an incentive to scholars in the humanities to adopt computational methods.

Art historian Claire Bishop , noting that when computer science becomes integrated in the humanities, “[t]heoretical problems are steamrollered flat by the weight of data,” which generates deeply simplistic results.

At their core, art historians study the ways in which art can offer insights into how people once saw the world. They explore how works of art shaped the worlds in which they were made and would go on to influence future generations.

A computer algorithm cannot perform these functions.

However, some scholars and institutions have allowed themselves to be subsumed by the sciences, adopting their methods and partnering with them in sponsored projects.

Literary critic Barbara Herrnstein Smith . In her view, the sciences and the humanities are not the polar opposites they are often publicly portrayed to be. But this portrayal has been to the benefit of the sciences, prized for their supposed clarity and utility over the humanities’ alleged obscurity and uselessness. At the same time, she that hybrid fields of study that fuse the arts with the sciences may lead to breakthroughs that wouldn’t have been possible had each existed as a siloed discipline.

I’m skeptical. Not because I doubt the utility of expanding and diversifying our toolbox; to be sure, some have taken up computational methods with subtlety and historical awareness to add nuance to or overturn entrenched narratives.

But my lingering suspicion emerges from an awareness of how public support for the sciences and disparagement of the humanities means that, in the endeavor to gain funding and acceptance, the humanities will lose what makes them vital. The field’s sensitivity to historical particularity and cultural difference makes the application of the same code to widely diverse artifacts utterly illogical.

How absurd to think that black-and-white photographs from 100 years ago would produce colors in the same way that digital photographs do now. And yet, this is exactly what does.

That particular example might sound like a small qualm, sure. But this effort to “” routinely mistakes representations for reality. Adding color does not show things as they were but recreates what is already a recreation – a photograph – in our own image, now with computer science’s seal of approval.

Near the conclusion of devoted to the use of AI to disentangle X-ray images of Jan and Hubert van Eyck’s “,” the mathematicians and engineers who authored it refer to their method as relying upon “choosing ‘the best of all possible worlds’ (borrowing Voltaire’s words) by taking the first output of two separate runs, differing only in the ordering of the inputs.”

Perhaps if they had familiarized themselves with the humanities more they would know how satirically those words were meant when Voltaire who believed that rampant suffering and injustice were all part of God’s plan – that the world as it was represented the best we could hope for.

Maybe this “gotcha” is cheap. But it illustrates the problem of art and history becoming toys in the sandboxes of scientists with no training in the humanities.

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If nothing else, my hope is that journalists and critics who report on these developments will cast a more skeptical eye on them and alter their framing.

In my view, rather than lionizing these studies as heroic achievements, those responsible for conveying their results to the public should see them as opportunities to question what the computational sciences are doing when they appropriate the study of art. And they should ask whether any of this is for the good of anyone or anything but AI, its most zealous proponents and those who profit from it.

This article is republished from The Conversation under a Creative Commons license. Read the original article here: .

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