Electronics Era

  • About Us
  • Advertise with Us
  • Contact Us
Header logo on website
Menu
  • News
    • Industry News
    • Product News
  • TECH ROOM
    • Semiconductor
    • AI/ML
    • Industry 4.0
    • IoT-Internet of Things
    • Robotic
    • Sensor
    • Security
    • VR / AR
    • Embedded
    • Power Electronics
    • Smart Machine
    • LED & Lighting
    • Medical Electronics
    • Telecom
    • Blockchain
    • Automation
    • 5G/6G
    • SMT/PCB/EMS
  • AUTOMOTIVE ELECTRONICS
    • EVs
    • HEVs
    • ADAS
    • Connected Cars
  • A & D
  • T & M
    • 5G testing
    • Oscilloscopes
    • SDN & NFV
    • RF & Wireless
  • RENEWABLES
    • Sustainability
  • DATA & CLOUD
    • Data Center
    • Cloud Computing
    • Big Data Analytics
  • Editor’s Pick
    • Tech Blog
    • Tech Article
    • White Papers
    • In Talks
    • Market Research
  • MORE
    • Webinars
    • Events
    • E-Mag
    • Subscription
    • Contact Us
  • News
    • Industry News
    • Product News
  • TECH ROOM
    • Semiconductor
    • AI/ML
    • Industry 4.0
    • IoT-Internet of Things
    • Robotic
    • Sensor
    • Security
    • VR / AR
    • Embedded
    • Power Electronics
    • Smart Machine
    • LED & Lighting
    • Medical Electronics
    • Telecom
    • Blockchain
    • Automation
    • 5G/6G
    • SMT/PCB/EMS
  • AUTOMOTIVE ELECTRONICS
    • EVs
    • HEVs
    • ADAS
    • Connected Cars
  • A & D
  • T & M
    • 5G testing
    • Oscilloscopes
    • SDN & NFV
    • RF & Wireless
  • RENEWABLES
    • Sustainability
  • DATA & CLOUD
    • Data Center
    • Cloud Computing
    • Big Data Analytics
  • Editor’s Pick
    • Tech Blog
    • Tech Article
    • White Papers
    • In Talks
    • Market Research
  • MORE
    • Webinars
    • Events
    • E-Mag
    • Subscription
    • Contact Us
Home TECH ROOM Robotic

Intel Labs Introduced a new approach to neural network-based object learning

Neuromorphic research chip Loihi demonstrates real-time learning with 175x lower energy.

Editorial by Editorial
September 1, 2022
in Robotic
Reading Time: 2 mins read
Robot neuromorphic

Share on FacebookShare on Twitter

Intel Labs, in collaboration with the Italian Institute of Technology and the Technical University of Munich, has introduced a new approach to neural network-based object learning. It specifically targets future applications like robotic assistants that interact with unconstrained environments, including in logistics, healthcare or elderly care. This research is a crucial step in improving the capabilities of future assistive or manufacturing robots. It uses neuromorphic computing through new interactive online object learning methods to enable robots to learn new objects after deployment. 

Using these new models, Intel and its collaborators successfully demonstrated continual interactive learning on Intel’s neuromorphic research chip, Loihi, measuring up to 175x lower energy to learn a new object instance with similar or better speed and accuracy compared to conventional methods running on a central processing unit (CPU). To accomplish this, researchers implemented a spiking neural network architecture on Loihi that localized learning to a single layer of plastic synapses and accounted for different object views by recruiting new neurons on demand. This enabled the learning process to unfold autonomously while interacting with the user.

The research was published in the paper “Interactive continual learning for robots: a neuromorphic approach,” which was named “Best Paper” at this year’s International Conference on Neuromorphic Systems (ICONS) hosted by Oak Ridge National Laboratory.   

In a simulated setup, a robot actively senses objects by moving its eyes (event-based camera or dynamic vision sensor), generating “miscrosaccades.” The events collected are used to drive a spiking neural network on the Loihi chip. If the object or the view is new, its SNN representation is learned or updated. If the object is known, it is recognized by the network and respective feedback is given to the user. (Credit: Intel Corporation)

“When a human learns a new object, they take a look, turn it around, ask what it is, and then they’re able to recognize it again in all kinds of settings and conditions instantaneously,” said Yulia Sandamirskaya, robotics research lead in Intel’s neuromorphic computing lab and senior author of the paper. “Our goal is to apply similar capabilities to future robots that work in interactive settings, enabling them to adapt to the unforeseen and work more naturally alongside humans. Our results with Loihi reinforce the value of neuromorphic computing for the future of robotics.” 

For further exploration, read about Intel Labs’ research on Intel.com’s neuromorphic computing page. 

Source: Intel Corporation
Tags: future of roboticsIITIntel LabsNew TechnologiesRobot
Editorial

Editorial

Join Our Newsletter

* indicates required
Tweets by Era Electronics
Electronics Era

Electronics Era, India's no.1 growing B2B news forum on Electronics and Cutting Edge Technology is exploring the editorial opportunity for organizations working in the Electronics Manufacturing Services(EMS) Industry.

Follow Us

Browse by Category

  • 5G testing
  • 5G/6G
  • A & D
  • ADAS
  • AI/ML
  • Automation
  • AUTOMOTIVE ELECTRONICS
  • Big Data Analytics
  • Blockchain
  • Cloud Computing
  • Connected Cars
  • DATA & CLOUD
  • Data Center
  • Embedded
  • EVs
  • HEVs
  • In Talks
  • Industry 4.0
  • Industry News
  • IoT-Internet of Things
  • LED & Lighting
  • Market Research
  • Medical Electronics
  • News
  • Oscilloscopes
  • Power Electronics
  • Product News
  • RENEWABLES
  • RF & Wireless
  • Robotic
  • SDN & NFV
  • Security
  • Semiconductor
  • Sensor
  • Smart Machine
  • SMT/PCB/EMS
  • Sustainability
  • T & M
  • Tech Article
  • Tech Blog
  • TECH ROOM
  • Telecom
  • Uncategorized
  • VR / AR
  • White Papers

Recent News

comint scene

R&S Introduced Next Generation EW Solutions at SOFINS

March 30, 2023
ROHM

ROHM Chosen by Apex Microtechnology for Newest Line of Power Module

March 30, 2023
  • About Us
  • Advertise with Us
  • Contact Us

© 2022-23 TechZone Print Media | All Rights Reserved

No Result
View All Result
  • News
    • Industry News
    • Product News
  • TECH ROOM
    • Semiconductor
    • AI/ML
    • Industry 4.0
    • IoT-Internet of Things
    • Robotic
    • Sensor
    • Security
    • VR / AR
    • Embedded
    • Power Electronics
    • Smart Machine
    • LED & Lighting
    • Medical Electronics
    • Telecom
    • Blockchain
    • Automation
    • 5G/6G
    • SMT/PCB/EMS
  • AUTOMOTIVE ELECTRONICS
    • EVs
    • HEVs
    • ADAS
    • Connected Cars
  • A & D
  • T & M
    • 5G testing
    • Oscilloscopes
    • SDN & NFV
    • RF & Wireless
  • RENEWABLES
    • Sustainability
  • DATA & CLOUD
    • Data Center
    • Cloud Computing
    • Big Data Analytics
  • Editor’s Pick
    • Tech Blog
    • Tech Article
    • White Papers
    • In Talks
    • Market Research
  • MORE
    • Webinars
    • Events
    • E-Mag
    • Subscription
    • Contact Us

© 2022-23 TechZone Print Media | All Rights Reserved