Popular on Amzeal
- Michelle Kerr Joins Summit Advisory Board - 256
- Sarah Novotny Joins Kosai as a Board Advisor: A New Chapter for Open Source Leadership - 123
- Summit Technologies Welcomes Angelo Mazzocco to Advisory Board - 118
- Morningscore Secures $700k in Funding to Build the Next Generation of AI SEO and Expand Globally
- OmegaBrand Introduces New Thermal Transfer Ribbons for Honeywell PC45t Printers
- Streetwise Artificial Intelligence Technology
- Stan Fitzgerald: A Profile in Resilience and Leadership with VFAF Veterans for America First Organizational Support for a Presidential Pardon
- Nola Blue Records signs legendary Maria Muldaur and estimable Candice Ivory
- IEEE Milwaukee 2024 Science Kits for Public Library Grant
- National GEM Consortium Celebrates Dr. Johney Green Jr's Selection as Director of Savannah River
Similar on Amzeal
- Global Collaboration Enhances Accessibility of Climate Data for Scientific Research
- Get to know Dr. Raphael E. Cuomo, PhD, Professor and Scientist at the University of California, San Diego
- Dr. Lauren Anderson Led a Successful CE Event: Digital Planning and Execution
- Blood Moons 2025 and Darkened Sun: Four Prophetic Signs We Can't Ignore
- CCHR Cites Newly Released Mind Control Records to Oppose Psychedelics
- JH Technologies Partners with SEM Manufacturer CIQTEK for North American Market
- AI-Powered Staining in Microbiology: Virtual Gram Staining of Label-free Bacteria
- Watchdog Reviews Milestones in Exposing Psychiatric Human Rights Abuses in 2024
- AstroGrav 5.3 Released for Windows and Mac
- National GEM Consortium Celebrates Dr. Johney Green Jr's Selection as Director of Savannah River
Complex-valued Linear Transformations using Spatially Incoherent Diffractive Optical Networks
Amzeal News/10551886
LOS ANGELES - Amzeal -- The bulk of the computing in state-of-the-art neural networks comprises linear operations, e.g., matrix-vector multiplications and convolutions. Linear operations can also play an important role in cryptography. While dedicated processors such as GPUs and TPUs are available for performing highly parallel linear operations, these devices are power-hungry, and the low bandwidth of electronics still limits their operation speed. Optics is better suited for such operations because of its inherent parallelism and large bandwidth and computation speed.
Built from a set of spatially engineered thin surfaces, diffractive deep neural networks (D2NN), also known as diffractive networks, form a recently emerging optical computing architecture capable of performing computational tasks passively at the speed of light propagation through an ultra-thin volume. These task-specific all-optical computers are designed digitally through learning of the spatial features of their constituent diffractive surfaces. Following this one-time design process, the optimized surfaces are fabricated and assembled to form the physical hardware of the diffractive optical network.
More on Amzeal News
In their recent publication in Advanced Photonics Nexus, a team of researchers led by Aydogan Ozcan, the Chancellor's Professor and the Volgenau Chair for Engineering Innovation at UCLA, has introduced a method to perform complex-valued linear operations with diffractive networks under spatially incoherent illumination. It had been shown previously by the same group that diffractive networks with sufficient degrees of freedom can perform arbitrary complex-valued linear transformations with spatially coherent light with negligible error. In contrast, with spatially incoherent light, these networks can perform arbitrary linear transformations of input optical intensities if the matrix elements defining the transformation are real and non-negative. Given that spatially incoherent illumination sources are more prevalent and easier to access, there is a growing need for spatially incoherent diffractive processors to handle data beyond just non-negative values.
More on Amzeal News
By incorporating preprocessing and postprocessing steps to represent complex numbers by a set of non-negative real numbers, UCLA researchers have extended the processing power of spatially incoherent diffractive networks to the domain of complex numbers. They demonstrated that such incoherent diffractive processors can be designed to perform an arbitrary complex-valued linear transformation with negligible error if there is a sufficient number of optimizable phase-only diffractive features within the design, which scales with the dimensions of the input and output complex vector spaces.
The researchers showcased the application of this novel scheme via encryption and decryption of complex-valued images using spatially incoherent diffractive networks. Apart from visual image encryption, such spatially incoherent diffractive processors could also be useful in other applications, e.g., in autonomous vehicles for ultra-fast and low-power processing of natural scenes.
Article: https://doi.org/10.1117/1.APN.3.1.016010
Built from a set of spatially engineered thin surfaces, diffractive deep neural networks (D2NN), also known as diffractive networks, form a recently emerging optical computing architecture capable of performing computational tasks passively at the speed of light propagation through an ultra-thin volume. These task-specific all-optical computers are designed digitally through learning of the spatial features of their constituent diffractive surfaces. Following this one-time design process, the optimized surfaces are fabricated and assembled to form the physical hardware of the diffractive optical network.
More on Amzeal News
- Manchester Insurance Announces Best Rates in Florida for Home Insurance
- New Middle East Partnership for up to $40 Million Supporting Entry Into Emerging Global MOBA Digital Game Arena: NIP Group (Stock Symbol: NIPG)
- Blitsor: The Future of Streaming That YouTube Fears!
- Saelig Introduces Economical Harogic PX Series 40GHz Realtime Spectrum Analyzers
- King Dumpsters Canton Launches Affordable, Reliable Dumpster Rental Services in Canton, Ohio
In their recent publication in Advanced Photonics Nexus, a team of researchers led by Aydogan Ozcan, the Chancellor's Professor and the Volgenau Chair for Engineering Innovation at UCLA, has introduced a method to perform complex-valued linear operations with diffractive networks under spatially incoherent illumination. It had been shown previously by the same group that diffractive networks with sufficient degrees of freedom can perform arbitrary complex-valued linear transformations with spatially coherent light with negligible error. In contrast, with spatially incoherent light, these networks can perform arbitrary linear transformations of input optical intensities if the matrix elements defining the transformation are real and non-negative. Given that spatially incoherent illumination sources are more prevalent and easier to access, there is a growing need for spatially incoherent diffractive processors to handle data beyond just non-negative values.
More on Amzeal News
- Matthew Cossolotto's The Joy of Public Speaking – Helping Readers Move from Stage Fright to Stage Delight – Wins 2024 Maincrest Media Book Award
- Lady Bird Laser Spa: Empowering Beauty with Advanced Skin Treatments and Exceptional Service
- Profitable Exciting New Entry Into Emerging Global MOBA Digital Game Arena, Plus New Strategic Partnership with The9 Limited: NIP Group; Stock: NIPG
- Biden's Farewell Fails Workers: Broken Promises, Billionaires First, and Americans Left Behind
- A Historic Night Awaits: RNHA Celebrating the Power of the Latino Vote at Inauguration 2025
By incorporating preprocessing and postprocessing steps to represent complex numbers by a set of non-negative real numbers, UCLA researchers have extended the processing power of spatially incoherent diffractive networks to the domain of complex numbers. They demonstrated that such incoherent diffractive processors can be designed to perform an arbitrary complex-valued linear transformation with negligible error if there is a sufficient number of optimizable phase-only diffractive features within the design, which scales with the dimensions of the input and output complex vector spaces.
The researchers showcased the application of this novel scheme via encryption and decryption of complex-valued images using spatially incoherent diffractive networks. Apart from visual image encryption, such spatially incoherent diffractive processors could also be useful in other applications, e.g., in autonomous vehicles for ultra-fast and low-power processing of natural scenes.
Article: https://doi.org/10.1117/1.APN.3.1.016010
Source: ucla ita
Filed Under: Science
0 Comments
Latest on Amzeal News
- Anti-Racism Song from Neal Fox Drops in Time for Martin Luther King Day
- SGS Partners with FPD to Launch Innovative Simulation-driven Training Solution for Clinicians
- Genpak Expands Foodservice Packaging to Include Durable, Polypropylene Bowls
- DayPass Expands to 50 New Destinations in 2024, Bringing Luxury Day Experiences to Travelers and Locals
- Game-Changing Sponsorship Platform Launches Ahead of the Super Bowl
- Dr. Lauren Anderson Led a Successful CE Event: Digital Planning and Execution
- "One World in a New World" Amplifies Voices of Transformation, Resilience, and Global Connection
- WalkerHughes Insurance Expands Footprint With Acquisition of Independent Brokers Agency LLC
- Hawk Tuah VIP Shop launches Exclusive Merchandise line for Viral Meme Fans
- Perfumeo x Google: Perfumeo Supported by Google to Revolutionize Smart Homes, Joins 'Google for Startups' Accelerator
- Orcas Island Property Owner Returns Two Prime Waterfront Properties to the Market
- Muench Workshops Welcomes New Partners Luke Dray and Sara Linssen, Announces Retirement of Andy Williams
- Qualis LLC welcomes Darren Gero as VP of Business Development
- Blood Moons 2025 and Darkened Sun: Four Prophetic Signs We Can't Ignore
- NuNorm Announces Stop Soldier Suicide as This Year's EQUAL Grant Recipient
- BKM Capital Partners Releases White Paper Examining E-Commerce's Profound Impact on Industrial Real Estate
- Darrin Jones: The Creative Force Behind the Trends—Raising Questions About Influence in The Weeknd's Music
- Bloomster Revolutionizes Holistic Learning with Free eBook Library for Parents & Adolescents (Ages 10-15)
- Foresight Practitioner Conference 2025 – Dates, Venue, Speakers, And Competition Finalists Announced
- ThoroughCare Partners with CareCo AI to Enhance Efficiency and Patient Care