
Machines are getting highbrow. One artificial intelligence has learned how to create new styles of art – now another is teaching itself art history.
By analysing thousands of paintings produced over hundreds of years, the AI was able to spot connections between generations of painters that matched accepted theories in the art world. It might even teach us something new. “The machine could be seeing some complex links that we have no idea about,” says , an art historian at the College of Charleston in South Carolina.
Paintings are often grouped according to their style: think of the Renaissance marvels of Botticelli and Michelangelo or the abstract expressionist masterpieces of Rothko and Pollock. Describing exactly what constitutes a style is tricky, even for art historians. But one way to do it involves something computers excel at: analysing large amounts of data.
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and his colleagues at Rutgers University, New Jersey wanted to see if machine learning software would spot the same sort of patterns across art movements that humans do. They fed almost 77,000 paintings from the early Renaissance to pop art into a suite of convolutional neural networks, a form of deep learning that is good at image recognition.
The system was trained to identify 20 different styles and then went on to teach itself finer-grained differences between painters and paintings.
Without knowing anything about the progression of art over the last few centuries, the machine was able to arrange the works chronologically, with one style transitioning into the next. “This showed that style changes smoothly, which confirms art historians’ hypothesis,” says Elgammal.
The AI found connections between distinctive styles and highlighted historically important artists. For example, it identified the work of Paul Cézanne as a bridge between post-impressionism and cubism. “Art historians had already understood that Cézanne was important,” says Mazzone, who worked with Elgammal’s team. “But, wow, how striking that the machine also saw that.”
Hidden links
It also found cycles, linking art from the Renaissance period – such as some of El Greco’s paintings, for example — with certain abstract paintings from the early 20th century. Some modern artists have discussed drawing inspiration from El Greco, says Mazzone. Even so, she was surprised how strongly the machine picked up this connection.
“It suggests it might be even deeper than art historians really give it credit for,” she says. She is excited about the possibility of finding stylistic links that humans have not picked up on.
“This paper shows once more that various methods from art history can be reconsidered with machine learning and computer vision,” says digital humanities researcher Peter Bell at the Friedrich-Alexander University Erlangan-Nuremberg in Germany.
There are limitations with the team’s approach, however. “Their understanding of style remains restricted to what can be seen visually,” says Sabine Lang at the University of Heidelberg in Germany. “Context, material and paint application are disregarded.”
Mazzone accepts some may be uncomfortable about using computers to understand art. “There’s a fear this could suggest there’s only one interpretation that’s correct,” she says. “But that’s not what’s going on here”.
She thinks art historians should embrace these new avenues of analysis. “Computer scientists are already working with art,” she says. “Do we want to be part of the conversation or not?”