New! Sign up for our free email newsletter.
Science News
from research organizations

An uncrackable combination of invisible ink and artificial intelligence

Date:
May 5, 2021
Source:
American Chemical Society
Summary:
Coded messages in invisible ink sound like something only found in espionage books, but in real life, they can have important security purposes. Yet, they can be cracked if their encryption is predictable. Now, researchers have printed complexly encoded data with normal ink and a carbon nanoparticle-based invisible ink, requiring both UV light and a computer that has been taught the code to reveal the correct messages.
Share:
FULL STORY

Coded messages in invisible ink sound like something only found in espionage books, but in real life, they can have important security purposes. Yet, they can be cracked if their encryption is predictable. Now, researchers reporting in ACS Applied Materials & Interfaces have printed complexly encoded data with normal ink and a carbon nanoparticle-based invisible ink, requiring both UV light and a computer that has been taught the code to reveal the correct messages.

Even as electronic records advance, paper is still a common way to preserve data. Invisible ink can hide classified economic, commercial or military information from prying eyes, but many popular inks contain toxic compounds or can be seen with predictable methods, such as light, heat or chemicals. Carbon nanoparticles, which have low toxicity, can be essentially invisible under ambient lighting but can create vibrant images when exposed to ultraviolet (UV) light -- a modern take on invisible ink. In addition, advances in artificial intelligence (AI) models -- made by networks of processing algorithms that learn how to handle complex information -- can ensure that messages are only decipherable on properly trained computers. So, Weiwei Zhao, Kang Li, Jie Xu and colleagues wanted to train an AI model to identify and decrypt symbols printed in a fluorescent carbon nanoparticle ink, revealing hidden messages when exposed to UV light.

The researchers made carbon nanoparticles from citric acid and cysteine, which they diluted with water to create an invisible ink that appeared blue when exposed to UV light. The team loaded the solution into an ink cartridge and printed a series of simple symbols onto paper with an inkjet printer. Then, they taught an AI model, composed of multiple algorithms, to recognize symbols illuminated by UV light and decode them using a special codebook. Finally, they tested the AI model's ability to decode messages printed using a combination of both regular red ink and the UV fluorescent ink. With 100% accuracy, the AI model read the regular ink symbols as "STOP," but when a UV light was shown on the writing, the invisible ink illustrated the desired message "BEGIN." Because these algorithms can notice minute modifications in symbols, this approach has the potential to encrypt messages securely using hundreds of different unpredictable symbols, the researchers say.


Story Source:

Materials provided by American Chemical Society. Note: Content may be edited for style and length.


Journal Reference:

  1. Yunhuan Yuan, Jian Shao, Mao Zhong, Haoran Wang, Chen Zhang, Jun Wei, Kang Li, Jie Xu, Weiwei Zhao. Paper Information Recording and Security Protection Using Invisible Ink and Artificial Intelligence. ACS Applied Materials & Interfaces, 2021; 13 (16): 19443 DOI: 10.1021/acsami.1c01179

Cite This Page:

American Chemical Society. "An uncrackable combination of invisible ink and artificial intelligence." ScienceDaily. ScienceDaily, 5 May 2021. <www.sciencedaily.com/releases/2021/05/210505111356.htm>.
American Chemical Society. (2021, May 5). An uncrackable combination of invisible ink and artificial intelligence. ScienceDaily. Retrieved December 21, 2024 from www.sciencedaily.com/releases/2021/05/210505111356.htm
American Chemical Society. "An uncrackable combination of invisible ink and artificial intelligence." ScienceDaily. www.sciencedaily.com/releases/2021/05/210505111356.htm (accessed December 21, 2024).

Explore More

from ScienceDaily

RELATED STORIES