Popular on Amzeal
- MC-IF Announces 2025-26 Board of Directors to Advance Next-Generation Media Technologies - 166
- AirGyde Appoints SpaceX Principal Engineer Sanjeev Sharma as Technical Board Advisor - 166
- Post-Oscar Iftar Night Celebrates Academy Award-Winning Documentary No Other Land with a Packed House - 138
- The ADHD Epidemic: How Profit, Not Science, Drives the Surge in Diagnoses
- For Saving Home Services Inc. Helps GTA Homeowners Save with Heat Pump Rebates
- REVOBOTS Unveils TASKBOT at Mobile World Congress 2025
- The NRECC Brings Safety, Efficiency and Same-Day Liquidity to U.S. Real Estate
- Countertop Pro GTA Launches Full-Service Kitchen Remodeling in Greater Toronto
- Have a Special Japanese Honeymoon Experience in Nikko, Japan, With Photoshoot
- Wealthy Americans Look to Change Citizenship to Reduce Tax
Similar on Amzeal
- A New Frontier in Unidirectional Light Control with Diffractive Optics
- Matt Stuckert Joins Lineus Medical Board of Directors
- Mental Health Watchdog Seeks Action Amid Alarming Patient Sexual Abuse Cases
- Liquid Technologies Announces the Launch of Liquid Studio v21 and Liquid XML Data Binder v21
- ClearSkies Geomatics Highlights Hassle-Free Survey Equipment Rental with Website Update
- AI — Past, Present, and Future: Verb Presents Features Jay Preston
- LIB Environmental Test Chamber Leads the Industry with CSA Certification
- IEEE Region 4 Science Kits for Public Libraries Grant
- Lineus Medical Completes $4.6 Million Series C Funding Round
- International Institute of Forecasters Announces Wayfair as Winner of the 2025 IIF Forecasting Practice Competition
Nonlinear Encoding in Diffractive Optical Processors Based on Linear Materials
Amzeal News/10570777
LOS ANGELES - Amzeal -- UCLA researchers have conducted an in-depth analysis of nonlinear information encoding strategies for diffractive optical processors, offering new insights into their performance and utility. Their study, published in Light: Science & Applications, a journal of the Springer Nature, compared simpler-to-implement nonlinear encoding strategies that involve phase encoding, with the performance of data repetition-based nonlinear information encoding methods, shedding light on their advantages and limitations in the optical processing of visual information.
Diffractive optical processors, built using linear materials, perform computational tasks through the manipulation of light using structured surfaces. Nonlinear encoding of optical information can enhance these processors' performance, enabling them to better handle complex tasks such as image classification, quantitative phase imaging, and encryption.
The UCLA team, led by Professor Aydogan Ozcan, evaluated various nonlinear encoding strategies using different datasets to assess their inference performance. Findings revealed that data repetition within a diffractive volume, while enhancing inference accuracy, compromises the universal linear transformation capability of diffractive optical processors. As a result, data repetition-based diffractive blocks cannot serve as optical analogs to fully-connected or convolutional layers commonly used in digital neural networks. More generally, data-repetition-based diffractive processors can be perceived as a simplified optical analog of the dynamic convolution kernel concept used in some neural network architectures. Despite its different features, data repetition architecture within a diffractive optical processor is still effective for inference tasks and offers advantages in terms of noise resilience.
More on Amzeal News
As an alternative, phase encoding of input information, without data repetition, offers a simpler-to-implement nonlinear encoding strategy with statistically comparable inference accuracy. Implemented through spatial light modulators or phase-only objects, directly, phase encoding is a practical alternative due to its simplicity and effectiveness. Furthermore, diffractive processors without data repetition do not need pre-processing of input information through a digital system, which is required for visual data repetition. Therefore, data repetition can be time-consuming, especially for phase-only input objects, due to the need for digital phase recovery and pre-processing before visual data repetition can occur.
The research team's findings provide valuable insights into the push-pull relationship between linear material-based diffractive optical systems and nonlinear information encoding strategies. These results hold potential for a wide range of applications, including optical communications, surveillance, and computational imaging. The ability to enhance inference accuracy through nonlinear encoding strategies can improve the performance of optical processors in various fields, leading to more advanced and efficient visual information processing systems.
More on Amzeal News
The authors of this article include Yuhang Li, Jingxi Li, and Aydogan Ozcan, all affiliated with the UCLA Electrical and Computer Engineering Department. Professor Ozcan also serves as an associate director of the California NanoSystems Institute (CNSI).
This research was supported by DOE (USA) .
Original article: https://doi.org/10.1038/s41377-024-01529-8
Diffractive optical processors, built using linear materials, perform computational tasks through the manipulation of light using structured surfaces. Nonlinear encoding of optical information can enhance these processors' performance, enabling them to better handle complex tasks such as image classification, quantitative phase imaging, and encryption.
The UCLA team, led by Professor Aydogan Ozcan, evaluated various nonlinear encoding strategies using different datasets to assess their inference performance. Findings revealed that data repetition within a diffractive volume, while enhancing inference accuracy, compromises the universal linear transformation capability of diffractive optical processors. As a result, data repetition-based diffractive blocks cannot serve as optical analogs to fully-connected or convolutional layers commonly used in digital neural networks. More generally, data-repetition-based diffractive processors can be perceived as a simplified optical analog of the dynamic convolution kernel concept used in some neural network architectures. Despite its different features, data repetition architecture within a diffractive optical processor is still effective for inference tasks and offers advantages in terms of noise resilience.
More on Amzeal News
- Announcing The Must-Read Crypto Playbook Of 2025!
- Revolutionizing Motor Copper Plate Brazing with FOCO INDUCTION's Portable Induction Heating Machine
- Etan Polinger Officially Recognized As New Mexico's First Certified Ai Consultant
- Expert Law Attorneys Nominates 2025 Personal Injury Firms
- The Ripple Effect Arts Leverages Social Media to Showcase the Benefits of Magic Magnesium Spray, Driving 200% Audience Growth
As an alternative, phase encoding of input information, without data repetition, offers a simpler-to-implement nonlinear encoding strategy with statistically comparable inference accuracy. Implemented through spatial light modulators or phase-only objects, directly, phase encoding is a practical alternative due to its simplicity and effectiveness. Furthermore, diffractive processors without data repetition do not need pre-processing of input information through a digital system, which is required for visual data repetition. Therefore, data repetition can be time-consuming, especially for phase-only input objects, due to the need for digital phase recovery and pre-processing before visual data repetition can occur.
The research team's findings provide valuable insights into the push-pull relationship between linear material-based diffractive optical systems and nonlinear information encoding strategies. These results hold potential for a wide range of applications, including optical communications, surveillance, and computational imaging. The ability to enhance inference accuracy through nonlinear encoding strategies can improve the performance of optical processors in various fields, leading to more advanced and efficient visual information processing systems.
More on Amzeal News
- America Is Being Ripped Off: It's Time To Take Action Against Fraud & Foreign Exploitation
- Independence Title Honored for Excellence in Fraud Prevention by Stewart Title
- Dentaluxe's New Website Launch!
- PawTides.com Partners with Rescue 22 Foundation to Support Veterans and Rescue Dogs
- Pan-Armenian Digital Trade Center Launched on Fastexverse
The authors of this article include Yuhang Li, Jingxi Li, and Aydogan Ozcan, all affiliated with the UCLA Electrical and Computer Engineering Department. Professor Ozcan also serves as an associate director of the California NanoSystems Institute (CNSI).
This research was supported by DOE (USA) .
Original article: https://doi.org/10.1038/s41377-024-01529-8
Source: ucla ita
Filed Under: Science
0 Comments
Latest on Amzeal News
- Multi-Million Dollar Contracts and Key Partnerships for Cybersecurity Solutions in the Rapidly Growing Market Nearing $200 Billion Annually $CYCU
- Unveil Hydrogen-Powered Maritime Innovation at H2Hub Summit
- Brookline Family Dentistry Updates Website URL for a Stronger Brand Identity
- Consensus Emerges on Urgent Need for Advanced Video Compression in Mobile Networks -- The Case for VVC
- Major Defense Contractor, Satellite and Multiple Deployable Tech Companies Partnering with Ascent Solar Technologies, Inc: Stock Symbol: ASTI
- Rosann Santos Ofrece el Programa Repensando el Síndrome del Impostor™
- Criptlán Partners with Top Capital and Technology Teams to Drive the Future of the Digital Economy
- From Sea to the Site: The Evolution of the Shipping Container From the Water to the Worksite
- Montel Williams Joins Citizen Green TV to Champion Veteran Wellness and Advocacy
- Inbound Lead Generation for Security Companies in 2025: The Key to Sustainable Growth
- Cytec launches new software solution to enable more effective corporate governance
- BroadSource Appoints Bill Placke as President, Americas
- Frame Up Now Leverages Cyntexa and Salesforce to Fuel Their Operations & Power Up Lead Conversion
- M Film Lab Launches Spring 2025 Screenwriting Lab: Tales of Identity & Imagination
- TFL Tech Inc. Launches New & Improved Website
- The Right Reverend Mariann Edgar Budde, Bishop of the Episcopal Diocese of Washington, Joins Seabury Resources for Aging® Board of Governors
- Aries Industries Celebrates 40 Years of Innovation, Growth and Service
- Electro Standards Laboratories to Attend APEC for IEEE Paper on Dynamic EV Wireless Charging
- Smarter Maintenance Starts Here: iMarq Unveils Enhancements to AI-driven Insights, Inventory Management, and Communication
- Royalty Settlement in Patent Infringement Suit with New Strategic Partnership for AI Marketing Tech Company: Alpha Modus Corp. (Stock Symbol:: AMOD)