BRN Discussion Ongoing

FuzM

Regular
Took a peek at one of our partner, Bascom Hunter. They recently posted the 3U VPX SNAP Card which is ISR focused. Around the same time, they are also looking to hire Chief Engineer - ISR with the job being posted a couple of days ago.

Would be interesting to see how all this plays out in the next few months.

Screenshot 2026-02-14 110434.png


One thing that caught my attention is the Program Execution scope which includes
  • Support transition of technologies into Phase III and program-of-record funding, including production scaling considerations

Screenshot 2026-02-14 110605.png


Another interesting factor is the hiring person is Samuel Subbarao. Who is the Principal Investigator for the Implementing Neural Network Algorithms on Neuromorphic Processors SBIR.

https://www.sbir.gov/awards/195640
Screenshot 2026-02-14 111649.png
 
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Diogenese

Top 20
Afternoon Chippers,

Be thinking Kevin D . Johnston may well be a candidate for the NOBEL PEACE PRIZE this year.

* Ability to detect a human emotion shift 2 to 3 seconds before the market explodes 15 times.

Imagine if one will...... every mobile phone has such technology embedded within .... monitoring our partners mood & giving a little alert.

World Peace is finally within our grasp.

๐Ÿ˜‡

On a side note , is anyone able to pinch the vidio off LinkedIn & post on this forum.

I don't have a LinkedIn account , hence can't view it.

Thankyou in advance.

Regards,
Esq.
I know where he can get a second hand one, but the gold plating has been licked off.
 
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IloveLamp

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Good to see UWA (University of Western Australia) relationship turning out some work (Thesis) around neuromorphic and benchmarked on Akida platforms with substantial benefits on latency and energy.

Can't read the full thesis as it's embargoed till 2027 which can be for reasons like:

Intellectual Property and Patents
Future Publication
Sensitive Data/Confidentiality
Book Deal/Copyright
National Security

Maybe if it was something incredibly useful to industry, BC and Akida, we should pony up and get assigned to us haha.



Towards neuromorphic visual SLAM: A spiking neural network for efficient pose estimation and loop closure based on event camera data

Author​

Sangay Tenzin, Edith Cowan UniversityFollow

Author Identifier​

Sangay Tenzin: http://orcid.org/0000-0001-5257-0302

Date of Award​

2026

Document Type​

Thesis

Publisher​

Edith Cowan University

Degree Name​

Master of Engineering Science

School​

School of Engineering

First Supervisor​

Alexander Rassau

Second Supervisor​

Douglas Chai

Abstract​

The need for effective Simultaneous Localisation and Mapping (SLAM) solutions has been pivotal across a wide range of applications, including autonomous vehicles, industrial robotics, and mobile service platforms where accurate localisation and environmental perception are essential. Visual SLAM (VSLAM) has emerged as a popular approach due to its cost effectiveness and ease of deployment. However, state-of-the-art VSLAM systems using conventional cameras face significant limitations, including high computational requirements, sensitivity to motion blur, restricted dynamic range, and poor performance under variable lighting conditions.
Event cameras present a promising alternative by producing asynchronous, high-temporal resolution data with low latency and power consumption. These characteristics make them ideal for use in dynamic and resource-constrained environments. Complementing this, neuromorphic processors designed for efficient event-driven computation are inherently compatible with sparse temporal data. Despite their synergy, the adoption of event cameras and neuromorphic computing in SLAM remains limited due to the scarcity of public datasets, underdeveloped algorithmic tools, and challenges in multimodal sensor fusion.
This thesis develops integrated Visual Odometry (VO) and Loop Closure (LC) models that leverage neuromorphic sensing, spiking neural networks (SNN), and probabilistic factor-graph optimisation as a pathway towards full event camera-based SLAM. A synchronised multimodal dataset, captured with a Prophesee STM32-GENx320 event camera, Livox MID-360 LiDAR, and Pixhawk 6C Mini IMU spans indoor and outdoor scenarios over 2,285 s. Raw events are aggregated into voxel-grid tensors using 100 ms windows with 20 temporal bins. LiDAR odometry from point clouds is refined with inertial constraints in Georgia Tech Smoothing and Mapping (GTSAM) to produce pseudo-ground-truth trajectories for supervised learning.
Two SNN models are developed using the SpikingJelly framework: a spiking VO network that predicts six-degree-of-freedom (6-DOF) pose increments from voxel grids, and a LC network that estimates inter-frame similarity scores for global trajectory correction. Both models are trained with surrogate gradient learning and employ Leaky Integrate-and-Fire neurons. The VO model uses a hybrid loss function that combines Root Mean Square Error for translation with a geodesic loss on the Special Orthogonal Group in 3D for rotation prediction. The LC model is optimised using a joint loss comprising a triplet margin loss for learning discriminative embeddings and a cross-entropy loss for binary classification.
These frontend models are integrated into a modular backend system based on a sliding window factor graph. The backend fuses VO predictions with IMU pre-integration and LC constraints and performs real-time optimisation using GTSAM. Empirical evaluation on kilometre-scale sequences demonstrates robust performance in diverse indoor and outdoor environments, achieving sub-metre Absolute Trajectory Error and competitive Relative Pose Error. Additionally, hardware benchmarking across conventional and neuromorphic processor such as BrainChip Akida platforms reveals up to a four times reduction in latency and an order of-magnitude gain in energy efficiency on neuromorphic hardware.
The main contributions of this work include a pipeline towards full VSLAM architecture combining SNNs, event-based vision, and multimodal sensor fusion for 6-DOF pose estimation and LC; a novel training pipeline using voxelised asynchronous event data and GTSAM refined pseudo-ground-truth; a modular backend architecture that performs drift-resilient optimisation using VO, IMU, and LC constraints; a cross-platform benchmarking study that highlights the advantages of neuromorphic hardware; and a synchronised multimodal dataset supporting the above components.
Overall, this thesis provides a pipeline towards a scalable and energy-efficient SLAM solution that bridges neuromorphic sensing, spiking computation, and probabilistic inference contributing substantially to the advancement of real-time robotic perception and autonomy and laying a strong foundation for next-generation lightweight, intelligent robotic systems. However, the system's performance is sensitive to sensor calibration and timestamp alignment, and the datasetโ€™s specificity may limit generalisation across broader deployment scenarios without further adaptation.

Related Publications​

Tenzin, S., Rassau, A., & Chai, D. (2024). Application of event cameras and neuromorphic computing to VSLAM: A survey. Biomimetics, 9(7). https://doi.org/10.3390/biomimetics9070444
https://ro.ecu.edu.au/ecuworks2022-2026/4278/

Access Note​

Access to this thesis is embargoed until 10th February 2027
 
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Are we seeing the momentum rising on neuromorphic.

Google India Software Engineer III with 10k LinkedIn followers believes the shift is happening now too.



Umanshi Bakshi
2w

The Von Neumann bottleneck has long been the ceiling for AI efficiency, but a massive industry shift is underway. We are moving toward Neuromorphic Computing that is hardware designed to mimic the human brainโ€™s neural structure. Unlike traditional chips that consume constant power, these brain-inspired architectures are event-driven, firing only when necessary. We are seeing potential for 100x to 1000x improvements in energy efficiency. Key Industry Drivers: - Decentralized Intelligence: Moving complex AI from the cloud to low-power edge devices (drones, wearables, sensors). - Real-Time Processing: Enabling microsecond reaction times for robotics and autonomous systems. - Sustainability: Reducing the massive carbon footprint associated with traditional AI scaling. The transition from simulating neural networks to running them on native biological-inspired silicon marks the next great era of computing.
 
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TheDrooben

Pretty Pretty Pretty Pretty Good
Larry has this feeling that IBM will be the new Mercedes run on the SP......and much bigger. CTO's from IBM talking up the benefits of Akida to such an extent is more promising than any announcement from the Board in the last 12 months. Speaking of which it is almost 12 months since the crap announcement of "possibly" moving to a US exchange was announced to the ASX (yes Antonio it WAS the US). What a debacle......NOTED!!!

As far as IBM goes.....
giphy (25).gif


Happy as Larry
 
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Jimmy17

Regular
Please remind me to hit the sell button when we get that IBM run, and to never come back to BRN
 
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TheDrooben

Pretty Pretty Pretty Pretty Good
Please remind me to hit the sell button when we get that IBM run, and to never come back to BRN
Yep Larry has increased his holding x20 since then. Positioned for a big free carry if it ever gets back to $2. Sean has got 3 months to pull out $9M in "bookings" like he stated last year or his reputation will be in question as far as shareholders' faith in him goes. Have to agree with recent statements that he got it wrong in his initial path to IP only. The recent progress to taping out in volume for customers is proving that point. In hindsight a combination of IP and silicon looks like it would have been the correct path. Then again hindsight is 100% proven correct.....

Larry is watching and waiting.....

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Yep Larry has increased his holding x20 since then. Positioned for a big free carry if it ever gets back to $2. Sean has got 3 months to pull out $9M in "bookings" like he stated last year or his reputation will be in question as far as shareholders' faith in him goes. Have to agree with recent statements that he got it wrong in his initial path to IP only. The recent progress to taping out in volume for customers is proving that point. In hindsight a combination of IP and silicon looks like it would have been the correct path. Then again hindsight is 100% proven correct.....

Larry is watching and waiting.....

View attachment 95089
Notโ€ฆ.. happyโ€ฆ.. as โ€ฆโ€ฆ..
โ€ฆ.
โ€ฆ.
Larry??

Sad Vince Mcmahon GIF by namslam
 
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TheDrooben

Pretty Pretty Pretty Pretty Good
Notโ€ฆ.. happyโ€ฆ.. as โ€ฆโ€ฆ..
โ€ฆ.
โ€ฆ.
Larry??

Sad Vince Mcmahon GIF by namslam
Always Happy.......just varying levels of Happiness.

curb-your-enthusiasm-larry-david (12).gif


HAPPY as Larry
 
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Bro is happy as Larry with Akida I guess



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Yep Larry has increased his holding x20 since then. Positioned for a big free carry if it ever gets back to $2. Sean has got 3 months to pull out $9M in "bookings" like he stated last year or his reputation will be in question as far as shareholders' faith in him goes. Have to agree with recent statements that he got it wrong in his initial path to IP only. The recent progress to taping out in volume for customers is proving that point. In hindsight a combination of IP and silicon looks like it would have been the correct path. Then again hindsight is 100% proven correct.....

Larry is watching and waiting.....

View attachment 95089

This is outstanding news. Receiving endorsement and validation from IBMโ€™s CTO regarding what BrainChipโ€™s Akida is capable of is no small achievement. That level of recognition carries significant weight, and the market wonโ€™t overlook it for long!!!!!!

Cast your mind back to January 2022 during the Mercedes hype - the share price surged to $2.34 on fundamentals that were arguably less developed than what we have today. Fast forward to now: BrainChip is in a materially stronger position. The company has demonstrated tangible progress, broadened its partnerships, and secured validation from organisations such as NASA and the US Air Force, among others. The foundation today is far more substantial. If momentum builds from here, it wouldnโ€™t be surprising to see the share price move to multiples of its previous all-time high!!!!!!!

If IBMโ€™s ecosystem begins integrating or actively promoting Akida more broadly, the upside potential could be significant.

Go BrainChip!!! Stay strong, Comrades!!! Itโ€™s time to light up the shorters and bring the GameStop 2.0 moment to Australia!!!
 
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Donโ€™t think itโ€™s been posted before and it is a few months old and no Iโ€™ve not listened to it

 
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Mt09

Regular
This is outstanding news. Receiving endorsement and validation from IBMโ€™s CTO regarding what BrainChipโ€™s Akida is capable of is no small achievement. That level of recognition carries significant weight, and the market wonโ€™t overlook it for long!!!!!!

Cast your mind back to January 2022 during the Mercedes hype - the share price surged to $2.34 on fundamentals that were arguably less developed than what we have today. Fast forward to now: BrainChip is in a materially stronger position. The company has demonstrated tangible progress, broadened its partnerships, and secured validation from organisations such as NASA and the US Air Force, among others. The foundation today is far more substantial. If momentum builds from here, it wouldnโ€™t be surprising to see the share price move to multiples of its previous all-time high!!!!!!!

If IBMโ€™s ecosystem begins integrating or actively promoting Akida more broadly, the upside potential could be significant.

Go BrainChip!!! Stay strong, Comrades!!! Itโ€™s time to light up the shorters and bring the GameStop 2.0 moment to Australia!!!
We had the Merc spike on hopes and dreams, now we need revenue and licenses before anyone will buy. Nice things on LinkedIn are great, wonโ€™t pay the bills though.
 
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manny100

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Ranting on about Megachips but see the connection below from the Megachips website between neuromorohic AI and robotics.


"The robotic projects undertaken by MegaChips (see the press release dated Sep. 17, 2025) aim to promote the use of scalable, AI-based robotic systems that are independent of specific hardware.
Building on the expertise cultivated through joint research โ€“ such as AI-based robotic motion planning and high-speed control, as well as initiatives to enhance the safety and operational efficiency of robotic systems โ€“ we seek to develop these efforts into a competitive business."

" Through this collaboration with the Nara Institute of Science and Technology (NAIST), we will build on the experience gained from the joint research conducted through FY2024, โ€œHigh-speed robotic control using a Spiking Neural Network (SNN) applied to a high-rate 3D sensor,โ€ and continue activities to deepen our technical expertise toward commercialization."
My bold above.
Megachips likely have early access to the 1500M.2 CARD (Andes has access).

As discussed earlier the robotic software used is Acumino which is hardware agnostic so its likely that the will use both AKIDA and Quadric in order to get the high human like dexterity they aim for in robotics.
 
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Ranting on about Megachips but see the connection below from the Megachips website between neuromorohic AI and robotics.


"The robotic projects undertaken by MegaChips (see the press release dated Sep. 17, 2025) aim to promote the use of scalable, AI-based robotic systems that are independent of specific hardware.
Building on the expertise cultivated through joint research โ€“ such as AI-based robotic motion planning and high-speed control, as well as initiatives to enhance the safety and operational efficiency of robotic systems โ€“ we seek to develop these efforts into a competitive business."

" Through this collaboration with the Nara Institute of Science and Technology (NAIST), we will build on the experience gained from the joint research conducted through FY2024, โ€œHigh-speed robotic control using a Spiking Neural Network (SNN) applied to a high-rate 3D sensor,โ€ and continue activities to deepen our technical expertise toward commercialization."
My bold above.
Megachips likely have early access to the 1500M.2 CARD (Andes has access).

As discussed earlier the robotic software used is Acumino which is hardware agnostic so its likely that the will use both AKIDA and Quadric in order to get the high human like dexterity they aim for in robotics.


Acumino is a robotics and artificial intelligence company that specializes in "Physical AI," focusing on high-dexterity industrial automation and the development of a robotic workforce capable of performing complex human tasks.[1] [2] While Acuminoโ€™s proprietary software framework is primarily described as a hardware-agnostic, scalable AI system trained on large-scale robotic interaction data, there is significant evidence and industry analysis suggesting a deep integration with Spiking Neural Network (SNN) technology through its strategic hardware partnerships.[3] [4]

According to www.iAsk.Ai - Ask AI:

The connection between Acumino and SNN technology is most prominently established through its collaboration with MegaChips Corporation, a major Japanese semiconductor firm.[5] MegaChips is a key licensee of BrainChipโ€™s Akida technology, which is the worldโ€™s first commercialized neuromorphic processor based on Spiking Neural Networks.[4] [6] Industry reports and technical discussions indicate that the "next-generation AI-powered robotic workers" developed by Acumino and MegaChips utilize the Akida SNN architecture to achieve the low-latency, high-efficiency "on-chip learning" required for real-time robotic dexterity.[4] [7]
 
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TheDrooben

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Rach2512

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See comments.

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