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7für7

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I’ve been spending some time in Japan lately, and things are starting to get interesting when you look at who’s actually connected to whom.
During a conversation with a business partner, a company called Vector came up …a Japanese player… so let’s take a look.

Renesas, who,… as we all know,…licensed Akida from us, plays a pretty central role in all this. Not just because they’re integrating the Akida IP, but also because they’ve worked with Vector years ago. Back then, it was about CANopen and industrial Ethernet… not exactly headline material, but definitely industrially relevant.

So what’s Vector’s role? Well, they’re not some small outfit. They’re playing in the top league, especially in the AUTOSAR space. And more recently, they’ve teamed up with Synopsys to develop SDV platforms.
Yes, Synopsys… the same one that’s part of the Intel Foundry Alliance… just like BrainChip.

What’s emerging here is a pretty tight-knit web of players. Not all directly connected, but definitely linked through shared nodes:

Renesas ↔ Vector
Renesas ↔ BrainChip
Synopsys ↔ Intel Foundry ↔ BrainChip
Synopsys ↔ Vector

And when you also consider that Vector has been working with Mercedes-Benz on SDV tooling and embedded software…
Well, maybe it’s worth taking a closer look at what’s possibly already brewing quietly in the background.

Coincidence? Or is there already something moving under the radar that just hasn’t made it to the headlines yet?

Just asking for a friend.
I’m no engineer…
But the network is definitely there.

I’m not good at researching so I leave it to you @Bravo 😂😂







By the way… I’m not sure if it actually means anything, but when you type “Mercedes” into the search bar under “press release ,” something interesting does pop up.. even though there are no visible results.
So, did they maybe publish something a bit too early that they weren’t supposed to …and later pulled it, while the search system still picks it up?
Just asking a question here… nothing more.

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Frangipani

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In a recent article about the Future of Neuromorphic AI in Electronic Warfare, Steven Harbour from Parallax Advanced Research wrote that his company were “at the forefront of advancing third-generation AI algorithms, partnering with Intel and Brainchip to develop scalable neuromorphic hardware.”

But it is not only the use of NC in EW they are researching:

“Spiking neural networks are shaping the future of Arctic monitoring”.

A recent collaboration between Parallax Advanced Research, Ohio Aerospace Institute and the University of Dayton Vision Lab resulted in “the first-ever application of a Spiking U-Net architecture for pixelwise classification of Arctic imagery”.

“This innovation is crucial for Arctic missions, where satellite and UAV platforms must operate under extreme conditions with limited energy and bandwidth. By integrating spiking models into the traditionally dense U-Net architecture, our researchers have opened a new frontier in efficient, scalable, and real-time remote sensing.

(…) Accurate segmentation of open water, snow, and meltponds is critical for understanding and modeling Arctic climate dynamics. Meltponds, in particular, lower surface albedo and accelerate ice melt, creating a positive feedback loop that influences global sea-level rise. Monitoring these features in real-time supports navigation safety, wildlife conservation, satellite calibration, and, importantly, global climate models.




Our method enables onboard, low-power processing of Arctic imagery, paving the way for deployment on cubesats, long-endurance UAVs, and polar monitoring missions. This capability is essential for providing time-critical data that informs national and international policy efforts aimed at Arctic preservation and strategic environmental security.”


Replacing “standard convolutional neurons with Integrate-and-Fire (IF) and Leaky Integrate-and-Fire (LIF) neurons” suggests that future deployment of their model on neuromorphic hardware will involve Loihi, which is not surprising, given Steve Harbour’s long collaboration history with Intel during his years at Southwest Research Institute. He is one among a growing number of neuromorphic researchers who see merit in both Loihi and Akida.




View attachment 86939




Pioneering Energy-Efficient Arctic Remote Sensing with Spiking Neural Networks​

Published on
May 29, 2025

At Parallax Advanced Research and the Ohio Aerospace Institute (OAI), we are committed to pushing the boundaries of basic and applied science in ways that transform future aerospace and defense capabilities. Our latest collaboration with the University of Dayton Vision Lab exemplifies this commitment, with a groundbreaking achievement: the first-ever application of a Spiking U-Net architecture for pixelwise classification of Arctic imagery.

Why Spiking Neural Networks for the Arctic?​

Conventional deep learning models such as Convolutional Neural Networks (CNNs) have demonstrated high accuracy in image segmentation tasks. However, their compute-intensive nature and high energy demands make them ill-suited for resource-constrained environments like the Arctic. In contrast, spiking neural networks (SNNs) leverage sparse, event-driven computation inspired by biological neurons, drastically reducing power consumption while maintaining analytical precision.

Dr. Harbour, director of AI Hardware Research, Parallax Advanced Research Center of Excellence and Lead Scientist


Caption: Dr. Harbour, director of AI Hardware Research, Parallax Advanced Research Center of Excellence and Lead Parallax Research Scientist on this research project.



This innovation is crucial for Arctic missions, where satellite and UAV platforms must operate under extreme conditions with limited energy and bandwidth. By integrating spiking models into the traditionally dense U-Net architecture, our researchers have opened a new frontier in efficient, scalable, and real-time remote sensing.

Advancing Pixelwise Classification: The Spiking U-Net​

Our Spiking U-Net preserves the U-Net's powerful encoder-decoder framework and critical skip connections for spatial precision. However, we replace standard convolutional neurons with Integrate-and-Fire (IF) and Leaky Integrate-and-Fire (LIF) neurons, enabling asynchronous, temporally aware processing. In this model, neurons accumulate input over time and "fire" once a threshold is met, mimicking biological synapses.



This design not only cuts energy consumption dramatically but also enhances the model's robustness to the noisy and dynamic conditions characteristic of Arctic data. This marks the first time a U-Net has been successfully adapted into a fully spiking architecture for high-resolution environmental monitoring.

Climate Science and Strategic Monitoring​

Accurate segmentation of open water, snow, and meltponds is critical for understanding and modeling Arctic climate dynamics. Meltponds, in particular, lower surface albedo and accelerate ice melt, creating a positive feedback loop that influences global sea-level rise. Monitoring these features in real-time supports navigation safety, wildlife conservation, satellite calibration, and, importantly, global climate models.



Our method enables onboard, low-power processing of Arctic imagery, paving the way for deployment on cubesats, long-endurance UAVs, and polar monitoring missions. This capability is essential for providing time-critical data that informs national and international policy efforts aimed at Arctic preservation and strategic environmental security.

See Fig. 1. Melt ponds on the arctic sea ice by NASA:
  • High-resolution imagery provides extensive spatial detail for pixel-wise analysis.
  • An autonomous and energy efficient method for meltpond detection is useful for environmental monitoring.
  • Would allow for timely calculations of important metrics such as the melting rate of meltponds.
  • Additional information about open water and sea ice would be useful for climatic studies.
  • Allows researchers to better track the overall activities in the Arctic region.

View attachment 86940

Fig. 1 Melt ponds on the arctic sea ice by NASA

See Fig. 2. Melt ponds on the arctic sea ice 1984 to 2016:
  • Rapid climate change is drastically transforming polar environments.
  • The Arctic is particularly sensitive, influencing global sea levels and ecosystems
  • Melting of sea ice (formation of meltponds), marine life.
  • Meltponds have lower albedo causing greater absorption of solar radiations.
  • Results in positive feedback loop accelerating the rate of melting of sea ice.
  • Accurate monitoring is crucial to track changes in vital classes (e.g., snow, meltponds, open water) and ecological shifts.

View attachment 86941

View attachment 86942
Fig. 2. Melt ponds on the arctic sea ice 1984 to 2016:

A Partnership Forging New Ground​

The synergy between the University of Dayton's expertise in computer vision and Parallax/OAI’s strengths in neuromorphic and bio-inspired computation has been a cornerstone of this achievement. Together, we created an interdisciplinary ecosystem capable of pushing SNNs from theoretical constructs into operational remote sensing workflows, with clear implications for both defense and environmental research.



This milestone also represents a historic first for the University of Dayton Vision Lab: the deployment of SNNs in practical, real-world imagery analysis.

Overcoming Technical Barriers​

Transitioning traditional convolutional architectures to support time-sensitive spiking neurons presented significant challenges. We successfully addressed these by modifying the U-Net decoder to incorporate LIF/IF neurons and implementing careful training protocols using Norse within the PyTorch framework. These modifications ensured model stability and effective learning, even under the sparsity inherent to spike-based updates.



Steve Harbour in front of chalk board

Looking Ahead​

Building on this success, future research will extend our Spiking U-Net to:
  • Temporal sequences for dynamic meltpond evolution tracking.
  • Multi-spectral data integration to enhance classification richness.
  • Neuromorphic hardware deployment to validate real-world energy savings.
  • Field deployment on Arctic UAVs and edge compute systems for in-situ monitoring.
Parallax/OAI continue to lead innovations at the intersection of neuromorphic computing, remote sensing, and environmental security. We welcome collaboration with academic institutions, government agencies, and industry partners who share our vision for pioneering resilient, energy-efficient technologies that meet tomorrow's defense and aerospace challenges. To discuss partnership opportunities or learn more about our cutting-edge initiatives, please contact our research development team today.

###

About Parallax Advanced Research & The Ohio Aerospace Institute (OAI)​

Parallax is a 501(c)(3) private nonprofit research institute that tackles global challenges through strategic partnerships with government, industry, and academia. It accelerates innovation, addresses critical global issues, and develops groundbreaking ideas with its partners. With offices in Ohio and Virginia, Parallax aims to deliver new solutions and speed them to market. In 2023, Parallax and OAI formed a collaborative affiliation to drive innovation and technological advancements in Ohio and for the nation. OAI plays a pivotal role in advancing the aerospace industry in Ohio and the nation by fostering collaborations between universities, aerospace industries, and government organizations, and managing aerospace research, education, and workforce development projects.

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View attachment 86962

Article titled “A Coming Revolution: Neuromorphic Computing is Key to AI Implementation” in the latest issue of Emerging Defense, featuring the neuromorphic research conducted by Steve Harbour and Parallax Advanced Research:

Steve Harbour shared a link to this article via LinkedIn and added:

“Neuromorphic AI is no longer science fiction—it’s operational reality!

(…) At Parallax Advanced Research, we’re building adaptive, explainable, accurate, and ultra-low-power neuromorphic systems for the most contested and obstructed areas & missions:

o Resilient edge AI
o Real-time RF signal classification
o Self-correcting sensor intelligence
o Human-interpretable autonomy
o Next: Data Centers, Server Farms, Cloud Computing, and GenAI

We’re not mimicking the brain—we’re engineering new, biologically-inspired intelligence and microsystems for NGA*, DARPA, Space, and beyond.”

*NGA = “The National Geospatial-Intelligence Agency is a combat support agency within the United States Depart Of Defense whose primary mission is collecting, analyzing, and distributing geospatial intelligence (GEOINT) to support national security.” (https://en.m.wikipedia.org/wiki/National_Geospatial-Intelligence_Agency)



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BrainShit

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I wonder are brn involved here, it seems and sounds very familiar technology.

No, BrainChip is not involved.
Qualcomm uses the 3rd generation of the Qualcomm Hexagon NPU, which employs a DSP architecture specialized for parallel signal processing and AI.
 
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BrainShit

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I’ve always said it’s Brainchip that try’s to implement the NDA with customer when they can, just can’t work out why some and not the others 🤔

Perhaps there will be a big revelation at some point, and several mega-corporations will look at each other because they now know that they all use the same secrect sauce .... Akida 🤣😂
 
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7für7

Top 20
By the way… I’m not sure if it actually means anything, but when you type “Mercedes” into the search bar under “press release ,” something interesting does pop up.. even though there are no visible results.
So, did they maybe publish something a bit too early that they weren’t supposed to …and later pulled it, while the search system still picks it up?
Just asking a question here… nothing more.

View attachment 87063


My bad… I made a mistake… it’s not a Japanese company.. it’s a German company! He just changed the language to Japanese when we was taking a look 😂
 
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Beebo

Regular
I was listening to Sean’s presentation (a few weeks ago) to Pitt Street’s Research Semiconductor Conference, and the last question from the audience was about what market verticals were best or most advanced for BrainChip.

Sean highlighted the following three:
1. IoT…predictive maintenance, etc.
2. Medical… we know about Onsor and possibly TATA
3. Consumer Electronics…what could this possibly be? Anyone…
4. Distant fourth was auto…admittedly slow adoption cycle.
 
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7für7

Top 20
I was listening to Sean’s presentation (a few weeks ago) to Pitt Street’s Research Semiconductor Conference, and the last question from the audience was about what market verticals were best or most advanced for BrainChip.

Sean highlighted the following three:
1. IoT…predictive maintenance, etc.
2. Medical… we know about Onsor and possibly TATA
3. Consumer Electronics…what could this possibly be? Anyone…
4. Distant fourth was auto…admittedly slow adoption cycle.

Sean knows nothing about the AI market!! BECAUSE….I WAS LISTENING TO AN OTHER INTERVIEW WHERE A BRAINCHIP GUY CLEARLY STATED “IN EVERY PRODUCT”!!! 😤😤😤
 
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Rach2512

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I was listening to Sean’s presentation (a few weeks ago) to Pitt Street’s Research Semiconductor Conference, and the last question from the audience was about what market verticals were best or most advanced for BrainChip.

Sean highlighted the following three:
1. IoT…predictive maintenance, etc.
2. Medical… we know about Onsor and possibly TATA
3. Consumer Electronics…what could this possibly be? Anyone…
4. Distant fourth was auto…admittedly slow adoption cycle.
My guess ...Glasses
 
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zeeb0t

Administrator
Staff member
Hi all, due to an ongoing battle with abusers of the community reporting functionality, the ability to report (and auto-moderation) are currently disabled. Unfortunately, since the attack came from quite a number of handles, it became practically impossible to release removed posts from being hidden, as they outpaced my actions.

I have now enabled all posts that had been removed since the beginning of May and will consider turning on the disabled features once I am confident they cannot be gamed again.
 
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7für7

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Hi all, due to an ongoing battle with abusers of the community reporting functionality, the ability to report (and auto-moderation) are currently disabled. Unfortunately, since the attack came from quite a number of handles, it became practically impossible to release removed posts from being hidden, as they outpaced my actions.

I have now enabled all posts that had been removed since the beginning of May and will consider turning on the disabled features once I am confident they cannot be gamed again.

Crapper basher in 3..2…1….
 
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