UNIVERSITY PARK, Pa. — Butterflies can see more of the world than humans, including more colors and the field oscillation direction, or polarization, of light. This special ability enables them to navigate with precision, forage for food and communicate with one another. Other species, like the mantis shrimp, can sense an even wider spectrum of light, as well as the circular polarization, or spinning states, of light waves. They use this capability to signal a “love code,” which helps them find and be discovered by mates.
Inspired by these abilities in the animal kingdom, a team of researchers in the Penn State College of Engineering developed an ultrathin optical element known as a metasurface, which can attach to a conventional camera and encode the spectral and polarization data of images captured in a snapshot or video through tiny, antenna-like nanostructures that tailor light properties. A machine learning framework, also developed by the team, then decodes this multi-dimensional visual information in real-time on a standard laptop.
The researchers published their work today (Sept. 4) in Science Advances.
“As the animal kingdom shows us, the aspects of light beyond what we can see with our eyes holds information that we can use in a variety of applications,” said Xingjie Ni, associate professor of electrical engineering and lead corresponding author of the paper. “To do this, we effectively transformed a conventional camera into a compact, lightweight hyperspectro-polarimetric camera by integrating our metasurface within it.”
Hyperspectral and polarimetric cameras — which often are bulky and expensive to produce — capture either spectrum or polarization data, but not both simultaneously, Ni explained. By contrast, when positioned between a photography camera’s lens and sensors, the three-millimeter-by-three-millimeter metasurface, which is inexpensive to manufacture, captures both types of imaging data simultaneously and transmits the data immediately to a computer.
The raw images must then be decoded to reveal the spectral and polarization information. To achieve this, Bofeng Liu, a doctoral student in electrical engineering and co-author of the paper, built a machine learning framework trained on 1.8 million images using data augmentation techniques.