Georgia Tech Research News - July 2005
Preventing Fowl-Ups
Computer Vision System Detects Foreign Objects in Processed Poultry and Other Food Products
|
John Stewart, a Georgia Tech Research Institute research engineer, is spearheading efforts to build a computer vision system that will automatically detect and then remove colored foreign objects from the food stream.
|
Although metal detectors help commercial food processors keep metal
fragments from ending up in finished products, these detectors can’t
identify plastic and other foreign objects.
And as plastic becomes more widespread, used in everything from conveyor
belts to latex gloves, plastic contamination is a growing concern for
many food processing operations.
For the past year, John Stewart, a research engineer at the Georgia
Tech Research Institute, has been leading a development team in building
a computer-vision system that identifies plastic and other unwanted
elements in finished food products. The project is funded by Georgia’s
Traditional Industries Program for Food Processing with additional
support from industrial partners.
The system, now in final development stages, is scheduled to begin
field testing later this summer. Also, Stewart presented a paper on
the project on July 18 at the American Society of Agricultural Engineers’ 2005
annual meeting in Tampa, Fla.
Incidences of plastic contamination are infrequent, but when they occur,
fallout can be extensive. Recalls are expensive, not only in terms
of logistics and returned product, but also because recalls can tarnish
a company’s brand image and reduce consumer confidence.
Even if contamination is caught before a product leaves the factory,
it can take a toll, depending on the extent of the problem and when
it occurred. “When you have 6,000 to 8,000 pounds of poultry
moving along the production line every hour, that’s a lot of
chicken to reprocess or write-off,” Stewart said.
To help food processors ensure product quality, GTRI’s innovative
inspection tool combines computer vision technology with sophisticated
color discrimination algorithms. The computer-vision system, which
sits above the production line adjacent to metal detectors, is first
trained to identify the conveyor belt background and desired characteristics
for the food product.
|
The squared segments indicate that the GTRI computer vision system’s software has detected a foreign object (in this case, plastic glove pieces) in the sample product.
|
This information is stored in the computer’s hard drive, and
as the product moves along the conveyor, the computer-vision system
captures digital pictures and analyzes them. If the system sees an
object it doesn’t recognize, it records the digital image and
activates an alarm and kick-off device that removes the product from
the line.
Although this system can determine a full range of color, lab tests
have focused on finding blue and green objects. Blue has become a standardized
color for plastic used in the food processing environment.
“
Few foods are blue, so food processors hope that line workers will
recognize any foreign objects making their way into the product stream,” Stewart
explained.
Yet humans don’t make the most consistent inspectors. Although
people are easily trained, they are also easily distracted, said
GTRI research engineer Doug Britton, who is also working on the project.
“
The product stream is moving very quickly – about 12 feet per
second, which is the equivalent of eight miles per hour. If a person
blinks or looks away for even a second, they can miss a problem,” Britton
explained. “In contrast, machine vision is very diligent. It
doesn’t get tired or bored.”
What’s more, line workers see only the top of finished products.
GTRI’s computer-vision system captures additional views of
surface area by taking digital images as products tumble off one
conveyor belt
and onto another.
“
That doesn’t guarantee the system will spot every single incidence,” Stewart
said. “Yet if it misses a fragment on one piece of product,
it should stop subsequent products. The key is to pinpoint where
contamination
happened and how widespread it is.”
In lab tests, the system has been able to identify foreign objects
as small as 1.5 millimeters with few false alarms and high accuracy
rates (approaching 100 percent), researchers said. As the researchers
begin field tests later this summer, one of their objectives is to
see how well the system works in a real-world setting over a long period
of time.
The system is designed to operate on conveyor belts moving 12 feet
per second. In the lab, top conveyor speeds were 3 feet per second.
But researchers simulated factory conditions by using dimmer lights
and a longer integration time to produce blur.
The ultimate goal is to make the computer-vision system as fast and
accurate as possible without outpricing the technology for industry
users, researchers noted. To that end, GTRI has partnered with Gainco
Inc., an equipment manufacturer in Gainesville, Ga. Gainco has provided
feedback during the system’s development, and the company plans
to make the production-scale system that will be used in field tests.
Though lab tests focused on finding plastic fragments in poultry
products, GTRI’s computer-vision system also can identify non-plastic
contaminants, such as glass, and be used for meat and other food
products.
“
We’re trying to make the system as generic as possible, so anything
that doesn’t look like the product will be detected,” Stewart
said. |