Zebra Technologies Adds New Deep Learning Tools to Aurora Machine Vision Software
26 8월 2024 - 9:00PM
Business Wire
Expanded AI capabilities help manufacturers
solve more complex visual inspection problems
Zebra Technologies Corporation (NASDAQ: ZBRA), a leading digital
solution provider enabling businesses to intelligently connect
data, assets, and people, today announced a series of advanced AI
features enhancing its Aurora machine vision software to provide
deep learning capabilities for complex visual inspection use
cases.
Sixty-one percent of manufacturing leaders globally expect AI to
drive growth by 2029, according to Zebra’s 2024 Manufacturing
Vision Study. Another Zebra report on AI in the Automotive industry
found that AI, such as deep learning, is being used across the
automotive supply chain, but users want their AI doing more – these
new features respond to the needs of industry.
Zebra’s Aurora software suite with deep learning tools provides
powerful visual inspection solutions for machine and line builders,
engineers, programmers and data scientists in the automotive,
electronics and semiconductor, food and beverage and packaging
industries. The suite features no code deep learning optical
character recognition (OCR), drag and drop environments, and
extensive libraries that allow users to create solutions to solve
complex use cases that traditional rules-based systems struggle to
address.
“Manufacturers across many industries face longstanding quality
issues and new challenges with advances in materials and sectors
such as automotive and electronics,” said Donato Montanari, Vice
President and General Manager, Machine Vision, Zebra Technologies.
“They are looking for new solutions that complement and expand
their current toolbox with AI capabilities needed for more
effective visual inspection, particularly in complex use
cases.”
Aurora Design Assistant™
Users of Zebra’s Aurora Design Assistant integrated development
environment can create applications by constructing and configuring
flowcharts instead of writing traditional program code. The
software also enables users to design a web-based human-machine
interface (HMI) for the applications.
The software now comes with deep learning object detection and
the latest version of the Aurora Imaging Copilot companion
application with a dedicated workspace for training a deep learning
model on object detection. Separate add-ons are available for
training a deep learning model with an NVIDIA GPU card and running
a deep learning model to perform inference or prediction on an
NVIDIA GPU and Intel integrated GPU, respectively.
Aurora Vision Studio™
Machine and computer vision engineers using Aurora Vision Studio
can quickly create, integrate, and monitor powerful machine vision
applications. Its advanced and hardware-agnostic software provides
an intuitive graphical environment for the creation of
sophisticated vision applications without the need to write a
single line of code. It has a comprehensive set of over 3,000
proven and ready-to-use filters, enabling machine and computer
vision engineers to design customized solutions in a simple,
three-step workflow: design the algorithm, create a custom local
HMI or on-line Web HMI and deploy it to a PC-based industrial
computer.
A deep learning toolchain has been switched to a new training
engine with mechanisms for training data balancing which leads to
better training results on low quality datasets. Training is now
faster and more repeatable, and the deep learning add-on is
compatible with Linux systems, for inference only.
Aurora Imaging Library™
Zebra’s Aurora Imaging Library software development kit is for
experienced programmers coding vision applications in C++, C# and
Python. It includes a broad collection of tools for processing and
analyzing 2D images and 3D data using traditional rules-based
methods as well as those based on deep learning.
The latest additions expand its capabilities with the
introduction of anomaly detection tools using deep learning for
defect detection and assembly verification tasks where the aim is
to find abnormalities. Unlike other available deep learning tools,
the training is unsupervised, only needing normal references.
The deep-learning-based OCR tool uses a pre-trained deep neural
network model to read characters, digits, punctuation marks and
certain symbols without the need to specify or teach it specific
fonts. The deep learning-based OCR tool includes string models and
constraints to enable more robust and relevant reading.
KEY TAKEAWAYS
- Zebra has added a range of new deep learning features to its
Aurora machine vision software to support machine and line builders
as well as manufacturers faced with quality and visual inspection
challenges.
- Zebra’s Aurora software suite is designed for engineers,
programmers, and data scientists with easier-to-use tools for
complex use cases.
- Sixty-one percent of manufacturing leaders globally expect AI
to drive growth by 2029, according to Zebra’s 2024 Manufacturing
Vision Study.
ABOUT ZEBRA TECHNOLOGIES
Zebra (NASDAQ: ZBRA) helps organizations monitor, anticipate,
and accelerate workflows by empowering their frontline and ensuring
that everyone and everything is visible, connected and fully
optimized. Our award-winning portfolio spans software to
innovations in robotics, machine vision, automation, and digital
decisioning, all backed by a +50-year legacy in scanning,
track-and-trace and mobile computing solutions. With an ecosystem
of 10,000 partners across more than 100 countries, Zebra’s
customers include over 80% of the Fortune 500. Newsweek recently
recognised Zebra as one of America’s Most Loved Workplaces and
Greatest Workplaces for Diversity, and we are on Fast Company’s
list of the Best Workplaces for Innovators. Learn more at
www.zebra.com or sign up for news alerts. Follow Zebra’s Your Edge
blog, LinkedIn, Twitter, and Facebook,
and check out our Story Hub: Zebra Perspectives.
ZEBRA and the stylized Zebra head are trademarks of Zebra
Technologies Corp., registered in many jurisdictions worldwide. All
other trademarks are the property of their respective owners. ©2024
Zebra Technologies Corp. and/or its affiliates
View source
version on businesswire.com: https://www.businesswire.com/news/home/20240826727629/en/
Media Contact: Daniel Blackman Zebra Technologies +44
(0)7408 864 597 Daniel.Blackman@zebra.com
Industry Analyst Contact: Kasia Fahmy Zebra Technologies
+1-224-306-8654 k.fahmy@zebra.com
Zebra Technologies (NASDAQ:ZBRA)
과거 데이터 주식 차트
부터 10월(10) 2024 으로 11월(11) 2024
Zebra Technologies (NASDAQ:ZBRA)
과거 데이터 주식 차트
부터 11월(11) 2023 으로 11월(11) 2024