Original photo by Jen Christiansen. Transformation via Deep Dream Generator, based on open source code.

Remember last summer’s influx of convolutional neural network art, which took the form of hallucinogenic-like DeepDream images, like the one above? Prompted by a blog post and code release by a team of Google engineers, haunting composite generation—also known as inceptionism, as a nod to the movie-related internet meme “we need to go deeper”—became the poster child for artificial neural networks.

Perhaps you’re also familiar with last summer’s style transfer examples. In “A Neural Algorithm of Artistic Style” Leon Gatys, Alexander Ecker and Matthias Bethge describe it as a system that “uses neural representations to separate and recombine content and style of arbitrary images, providing a neural algorithm for the creation of artistic images.” Imagine your vacation photos rendered in the style of Pablo Picasso, or Leonardo da Vinci’s Mona Lisa painted in the style of Vincent Van Gogh’s Starry Night. You can see that example directly, in “Machines and Metaphors,” a blog post by artist and programmer Gene Kogan.

Last month, in his talk “The Neural Aesthetic” at Eyeo Festival in Minneapolis, Kogan reviewed the basic concepts and processes behind inceptionism, style transfer, and other machine learning approaches that involve visual output. And then he upped the ante—and blew my mind—with a series of magical moving pictures. Based on the approach described in "Artistic style transfer for videos," by Manuel Ruder, Alexey Dosovitskiy and Thomas Brox, and their code, Kogan developed a series of style transfer videos rooted in footage he took out the window of New York’s J-train. Here’s a peek at a few excerpts. The first renders the video in the style of Van Gogh’s Starry Night. The second renders it with Google Map imagery.

Kogan notes that he's "fascinated by style transfer in a more general sense—applying a similar technique in the audio domain, on text, or other kinds of media. Style is such an abstract concept to us, which is what makes algorithms inferring it so interesting, even when it's not aesthetically pleasing. If they can capture style, what other kinds of intangible things can they understand?" For more examples of both static and video style transfer, as well as a near real-time style transfer “mirror,” (!) see Kogan’s website.

For a few visual explanations of how deep learning works, check out “Unveiling the Hidden Layers of Deep Learning.” Too basic for you? Then move on to Machine Learning for Artists (an in-progress resource from Kogan and Francis Tseng) as well as Kogan’s NYU class notes and videos. For more from the pages of Scientific American, see “Springtime for AI: The Rise of Deep Learning” by Yoshua Bengio. It’s even better when paired with Bengio’s “Large Scale Machine Learning” video.