Expanding our perception of color provides a huge number of data points all assisting in identification. It is really the best tool we have.
So yes this is great news.
Just narrow it down to facial recognition as individual skin and skin placement has to be unique. This could easily make it bullet proof along with automatic driving were identifying what is in front really matters.
A-Eye Can See Millions of Colors for Better Automation
A-Eye Can See Millions of Colors for Better Automation
October 24, 2022 by Brian Wang
https://www.nextbigfuture.com/2022/10/a-eye-can-see-millions-of-colors-for-better-automation.html#more-177890
Researchers at Northeastern have built a device that can recognize “millions of colors” using new artificial intelligence techniques. “In the world of automation, shapes and colors are the most commonly used items by which a machine can recognize objects,” Kar says.
The breakthrough is twofold. Researchers were able to engineer two-dimensional material whose special quantum properties, when built into an optical window used to let light into the machine, can process a rich diversity of color with “very high accuracy”—something practitioners in the field haven’t been able to achieve before.
Additionally, A-Eye is able to “accurately recognize and reproduce ‘seen’ colors with zero deviation from their original spectra” thanks, also, to the machine-learning algorithms developed by a team of AI researchers, helmed by Sarah Ostadabbas, an assistant professor of electrical and computer engineering at Northeastern. The project is a result of unique collaboration between Northeastern’s quantum materials and Augmented Cognition labs.
Machines typically recognize color by breaking it down, using conventional RGB (red, green, blue) filters, into its constituent components, then use that information to essentially guess at, and reproduce, the original color. When you point a digital camera at a colored object and take a photo, the light from that object flows through a set of detectors with filters in front of them that differentiate the light into those primary RGB colors.
You can think about these color filters as funnels that channel the visual information or data into separate boxes, which then assign “artificial numbers to natural colors,” Kar says.
“So if you’re just breaking it down into three components [red, green, blue], there are some limitations,” Kar says.
Instead of using filters, Kar and his team used “transmissive windows” made of the unique two-dimensional material.
“We are making a machine recognize color in a very different way,” Kar says. “Instead of breaking it down into its principal red, green and blue components, when a colored light appears, say, on a detector, instead of just seeking those components, we are using the entire spectral information. And on top of that, we are using some techniques to modify and encode them, and store them in different ways. So it provides us with a set of numbers that help us recognize the original color much more uniquely than the conventional way.”
bstract
Dispersion is accepted as a fundamental step required for analyzing broadband light. The recognition of color by the human eye, its digital reproduction by a camera, or detailed analysis by a spectrometer all utilize dispersion; it is also an inherent component of color detection and machine vision. Here, we present a device (called artificial eye or, A-Eye) that accurately recognizes and reproduces tested colors, without any spectral dispersion. Instead, A-Eye uses N = 3–12 transmissive windows each with unique spectral features resulting from the broadband transmittance and excitonic peak-features of 2D transition metal dichalcogenides. Colored light passing through (and modified by) these windows and incident on a single photodetector generated different photocurrents, and these were used to create a reference database (training set) for 1337 “seen” and 0.55 million synthesized “unseen” colors. By “looking” at test colors modified by these windows, A-Eye can accurately recognize and reproduce “seen” colors with zero deviation from their original spectra and “unseen” colors with only ∼1 % median deviation, using the k-NN algorithm. A-Eye can continuously improve color estimation by adding any corrected guesses to its training database. A-Eye’s accurate color recognition dispels the notion that dispersion of colors is a prerequisite for color identification and paves the way for ultra-reliable color-recognition by machines with reduced engineering complexity.
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