Published:
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Updated:
| Role | Entity |
|---|---|
| Author | Joseph Byrum |
| Series Name | Complexity, AI, and the Future of Food |
| Publisher | Ag Funder News |
| Year Published | 2021 |
| Main Subjects of the Series | – Complex Systems – Artificial Intelligence – Agriculture |
| Has Parts | – Artificial Intelligence’s Food Security Impact – Biometrics & the Future of Food Safety – Toward the Age of Agrobots – Boosting Agriculture’s Climate Resilience – Thinking Beyond Human Capabilities – Artificial Intelligence’s Potential for Addressing Global Food Security |

Biometrics & the Future of Food Safety – Joseph Byrum
Published on Ag Funder News (Joseph Byrum)
Author’s note: This series Complexity, AI, & the Future of Food has been exploring the potential impacts that artificial intelligence (AI) technologies could have on food security. Part Four of this series discussed the collective intelligence benefits of agrobots.
Could fingerprints one day make your food safer? Well, a form of fingerprinting just might do so.
From Wild West Wanted Posters to Smart Food Safety
Whether you are opening a bank account, applying for a passport, crossing a border, or simply unlocking your smartphone, you are most likely being tagged by some form of biometric identification. Biometric technology is widely used in public services and the financial sector. It’s even built into many of the latest consumer devices.
Biometric technology is used to identify individuals through the measurement of unique physical or behavioral characteristics. This is a modern interpretation of an ancient technique. In the wild west, for example, sketch artists would draw the likeness of outlaws so that they could be on “wanted dead or alive” posters that outsourced the identification process to bounty hunters.
This technique was upgraded over time to use more precise technologies like photography, and later, computer generated image recognition, iris recognition, voice recognition, and fingerprinting. The most recent developments in biometrics now include what is being termed as soft biometrics, which instead of focusing on the precise measurement of specific physical characteristics of an individual, focuses on the sum of the unique structural features of an individual’s complete face.
Biological fingerprinting technology has a critical role to play in food safety. Instead of identifying people, biometrics can be used to perform a statistical analysis of the biological and organic status of post-harvest agricultural produce. It would do so through a statistical analysis of the rate of change for the nutritional composition of a given item of produce as it makes its way through the supply chain. Such as system requires smart biometrics that can instinctively adapt the analysis to specific produce and food types.
Why Random Food Inspections Are Failing Us (The Bad Apple Problem)
Traditional food safety methods are labor-intensive, requiring physical inspections and chemical sampling of farm produce. Despite the amount of effort involved, the process offers no guarantee of safety. It’s impossible to inspect every piece of produce before it makes its way to market. The system relies instead on random inspection of a statistically appropriate selection of products to find the bad apples and rotten meat before they can make their way to store shelves.
Biometrics offer a smarter method of inspection, one that measures specific biological and chemical parameters appropriate to each commodity. As the inspection process for vegetables is different than that for fruit as it is for red meat and fish, AI can help work through the complexity of developing the biometric signatures for each type of farm produce.
How Light Reveals Food’s Hidden Secrets (Hyperspectral Magic)
Smart biometrics in agriculture would combine hyperspectral imagery and algorithmic machine learning to the inspection of farm produce so that the inspection process would become more timely and more effective. Digital imaging and spectroscopy would be used to examine the total biological status of individual items of farm produce. Measurement of biological features would include things such as physical appearance, moisture content, nutritional content as well as freshness levels.
Light interacts with the biological features of organic objects in unique ways. Machine learning algorithms would catalog the signatures of individual produce and develop a system for identifying problems. Ultimately, these digital fingerprints should be far more effective in identifying the subtle signs of contamination, spoilage and other problems long before they would be apparent to a human inspector.
The Startup That Can Tell Fresh Fish From Thawed (ImpactVision)
A California-based startup, ImpactVision, has been developing the idea of using cameras mounted above conveyor belts to perform real-time analysis of food quality. Instead of relying on random samples, the system performs non-invasive analysis of all the produce as it comes out of a processing facility. Such an analysis is both deeper and broader than traditional inspection techniques. Among its reported features, ImpactVision can distinguish between thawed and fresh fish, analyze the tenderness of meat, and determine freshness of fruits. Likely, this is just an early taste of what’s ultimately possible.
The Contamination That Happens After Inspection (Chain Gaps)
Even testing everything before it comes out of a single facility may not be enough. Contamination can happen anywhere along the way to the supermarket shelves, or it can happen at the restaurant or bakery before it reaches the consumer. Sophisticated biometric monitors could one day be stationed at each location to boost the safety of the entire food chain.
The complex problems of agriculture inspire AI solutions that require innovative thinking and a deep understanding of nature. Next week, we’ll bring together the concepts already discussed and show how AI solutions are the best hope for achieving food security.

Joseph Byrum is an accomplished executive leader, innovator, and cross-domain strategist with a proven track record of success across multiple industries. With a diverse background spanning biotech, finance, and data science, he has earned over 50 patents that have collectively generated more than $1 billion in revenue. Dr. Byrum’s groundbreaking contributions have been recognized with prestigious honors, including the INFORMS Franz Edelman Prize and the ANA Genius Award. His vision of the “intelligent enterprise” blends his scientific expertise with business acumen to help Fortune 500 companies transform their operations through his signature approach: “Unlearn, Transform, Reinvent.” Dr. Byrum earned a PhD in genetics from Iowa State University and an MBA from the Stephen M. Ross School of Business, University of Michigan.


