BrainChip Patents

Terroni2105

Founding Member
below Is a patent list, all are now granted as of BRN announcement to the ASX on 2/2/22.

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They have also stated in late 2021 that they will be filing numerous patents around the world.
This strategy means that the oldest patents in the US have an expiry within a decade or so, but the international variants will be given many years from their new starting point. So BrainChip will be protecting their IP for many years in the future.

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I see the process has already started on filings by the looks. I meant to post these a few days ago but anyway...

Couple new AU filings end of 21 but would appear AusPat being a :poop:

From a skim we have some step issues or something against some prev IBM patents but someone more learned than me might understand better?

Doesn't mean dead, just we probs need reword or rework the step process in the applications and have till end 22.

The latest filing doesn't have any doc's uploaded yet but presume by title these are all family related overall.

Hopefully snips below and docs all attach properly.

Objections attached but link to AusPat HERE

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Diogenese

Top 20
Hi FMF,

AU2021904165 is a provisional application filed in December 2021. It will not be published for 18 months and only if a PCT or an Australian complete application is filed within 12 months.


AU2021254524 is the Au National Phase application for:
WO2020092691A1 AN IMPROVED SPIKING NEURAL NETWORK

This describes the basic Akida NPU:


1644112329528.png



The International Search report only cites Category "A" documents. There are background documents which the Patent Examiner considers do not deprive the claimed invention of inventiveness:
1644112651879.png


This should help expedite the grant of the National Phase application in Australia.
 
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buena suerte :-)

BOB Bank of Brainchip
Hi FMF,

AU2021904165 is a provisional application filed in December 2021. It will not be published for 18 months and only if a PCT or an Australian complete application is filed within 12 months.


AU2021254524 is the Au National Phase application for:
WO2020092691A1 AN IMPROVED SPIKING NEURAL NETWORK

This describes the basic Akida NPU:


View attachment 317


The International Search report only cites Category "A" documents. There are background documents which the Patent Examiner considers do not deprive the claimed invention of inventiveness:
View attachment 318

This should help expedite the grant of the National Phase application in Australia.
Great to see you over here with a different passport !! :cool:
 
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Diogenese

Top 20
Hi FMF,

AU2021904165 is a provisional application filed in December 2021. It will not be published for 18 months and only if a PCT or an Australian complete application is filed within 12 months.


AU2021254524 is the Au National Phase application for:
WO2020092691A1 AN IMPROVED SPIKING NEURAL NETWORK

This describes the basic Akida NPU:


View attachment 317


The International Search report only cites Category "A" documents. There are background documents which the Patent Examiner considers do not deprive the claimed invention of inventiveness:
View attachment 318

This should help expedite the grant of the National Phase application in Australia.

It is a divisional of AU2019372063A1 which has a priority of November 2018.
 
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Esq.111

Fascinatingly Intuitive.
Hi FMF,

AU2021904165 is a provisional application filed in December 2021. It will not be published for 18 months and only if a PCT or an Australian complete application is filed within 12 months.


AU2021254524 is the Au National Phase application for:
WO2020092691A1 AN IMPROVED SPIKING NEURAL NETWORK

This describes the basic Akida NPU:


View attachment 317


The International Search report only cites Category "A" documents. There are background documents which the Patent Examiner considers do not deprive the claimed invention of inventiveness:
View attachment 318

This should help expedite the grant of the National Phase application in Australia.
Good Afternoon
Diogenese,

Very Good to have you on deck.

Greatly look foward to your expertise shedding light on the very indepth nature of patents, workings, and competitors.

Many Many thanks in advance.

I think the BRN 'A' TEAM is all together again.

Hot diggity dam,

AKIDA BALISTA.


Regards,
Esq.

Regards,
Esq.
 
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It is a divisional of AU2019372063A1 which has a priority of November 2018.
I had not slept since we moved over worried that you had tripped in a field of daffodils and were lying their stupefied by the beauty of nature unable or unwilling to return to your black and white drawings that you love so much. As ESQ said having the full A Team back together without all the static and white noise is almost as beautiful as a field of daffodils. FF
 
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Terroni2105

Founding Member
15/2/22
Copied from another thread, relevant to be compiled in this thread for ease of future accessibility and learning
.


Question asked by @TheFunkMachine #2,478
Do BrainChip patents cover a wide spectrum in the digital SNN of neuromorphic chips while others could potentially go down the less beneficial route of analogue SNN to get around BrainChip patents?


Answered by @Diogenese #2,525
The scope of protection of a patent is determined by how the invention is defined in the patent claims. To avoid infringement, a competitor would need to design a digital neuron which does not fall within the definition of our invention as set out in the patent claims.

The earliest BrainChip patent US8250011 and its continuation US11238342 date from 21 September 2008 and protect a digital neuron.

US8250011B2 Autonomous learning dynamic artificial neural computing device and brain inspired system

US11238342B2 Method and a system for creating dynamic neural function libraries

https://brainchipinc.com/brainchip-...-learned-functions-intelligent-target-device/

Key features of Patent US 11,238,342
  • The patent claims protect the basic structure and function of a digital neuron consisting of multiple synapse circuits connected to a soma circuit in analogy to a biological neuron where a soma (i.e. neuron) cell receives its inputs via multiple synapses.
This patent is a continuation of previous BrainChip patents US 8,250,011 and US 10,410,117, protecting features previously disclosed but not previously claimed. The title of this patent has been inherited from US 10,410,117 but would be better represented by the title of US 8,250,011 “Autonomous Learning Dynamic Artificial Neural Computing Device and Brain Inspired System.”


The main claim of US8250011:

1. An information processing system intended for use in artificial intelligence and having a plurality of digital artificial neuron circuits connected in an array, the system comprising a plurality of digital dynamic synapse circuits, wherein each digital dynamic synapse circuit contains a binary register that stores a value representing neurotransmitter type and level, wherein the digital dynamic synapse circuits comprise a means of learning and responding to input signals, either by producing or compounding the value, thereby simulating behavior of a biological synapse; and a temporal integrator circuit that integrates and combines each individually simulated synapse neurotransmitter type and value over time, wherein time is dependent on the neurotransmitter type stored in each digital dynamic synapse circuit.


The main claim of US11238342:

1. A neural network apparatus, comprising:
a soma circuit;
a plurality of digital dynamic synapse circuits connected to the soma circuit, wherein each of the plurality of digital dynamic synapse circuits includes a respective binary register, and wherein each binary register is configured to store a strength value representing a neurotransmitter type and a level; and a post synaptic potential (PSP) circuit included within a respective digital dynamic synapse circuit, the PSP circuit producing a PSP value in each digital dynamic synapse circuit in response to receipt of an input pulse, the PSP value being a sum of the strength value and a then-current-decremented PSP value, and a temporal integrator circuit configured to integrate and combine each of the PSP values over time, producing a membrane potential value.

These claims are directed to protection of a digital neuron.

Other features, such as Machine Learning are protected by other patents.

( US11151441B2 System and method for spontaneous machine learning and feature extraction, 8 Feb 2017) (This may be used for "Hey Mercedes!")

1. A digital system for spontaneous machine learning and feature extraction, the system comprising:

digital hardware circuitry that includes a hierarchical arrangement of a first artificial neural network and a second artificial neural network, wherein the first artificial neural network spontaneously learns to recognize any repeating patterns in an input stream and the second artificial neural network is trained to interpret and label the repeating patterns recognized by the first artificial neural network,

wherein the first artificial neural network includes
- a plurality of digital neuron circuits,
- a plurality of digital synapse circuits, and
- an address event representation (AER) bus,

the first artificial neural network being connected to the input stream via the AER bus, the input stream comprising temporally and spatially distributed spikes encoded on the AER bus;

wherein the first artificial neural network transmits spikes to the second artificial neural network, the spikes representing the recognized repeating patterns learned from the input stream; and

wherein the plurality of digital neuron circuits are interconnected using the plurality of digital synapse circuits, and wherein

interconnectivity and strength of the plurality of digital synapse circuits are configurable through digital registers that are externally accessed.
 
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Diogenese

Top 20
Thanks
15/2/22
Copied from another thread, relevant to be compiled in this thread for ease of future accessibility and learning
.


Question asked by @TheFunkMachine #2,478
Do BrainChip patents cover a wide spectrum in the digital SNN of neuromorphic chips while others could potentially go down the less beneficial route of analogue SNN to get around BrainChip patents?


Answered by @Diogenese #2,525
The scope of protection of a patent is determined by how the invention is defined in the patent claims. To avoid infringement, a competitor would need to design a digital neuron which does not fall within the definition of our invention as set out in the patent claims.

The earliest BrainChip patent US8250011 and its continuation US11238342 date from 21 September 2008 and protect a digital neuron.

US8250011B2 Autonomous learning dynamic artificial neural computing device and brain inspired system

US11238342B2 Method and a system for creating dynamic neural function libraries

https://brainchipinc.com/brainchip-...-learned-functions-intelligent-target-device/

Key features of Patent US 11,238,342
  • The patent claims protect the basic structure and function of a digital neuron consisting of multiple synapse circuits connected to a soma circuit in analogy to a biological neuron where a soma (i.e. neuron) cell receives its inputs via multiple synapses.
This patent is a continuation of previous BrainChip patents US 8,250,011 and US 10,410,117, protecting features previously disclosed but not previously claimed. The title of this patent has been inherited from US 10,410,117 but would be better represented by the title of US 8,250,011 “Autonomous Learning Dynamic Artificial Neural Computing Device and Brain Inspired System.”


The main claim of US8250011:

1. An information processing system intended for use in artificial intelligence and having a plurality of digital artificial neuron circuits connected in an array, the system comprising a plurality of digital dynamic synapse circuits, wherein each digital dynamic synapse circuit contains a binary register that stores a value representing neurotransmitter type and level, wherein the digital dynamic synapse circuits comprise a means of learning and responding to input signals, either by producing or compounding the value, thereby simulating behavior of a biological synapse; and a temporal integrator circuit that integrates and combines each individually simulated synapse neurotransmitter type and value over time, wherein time is dependent on the neurotransmitter type stored in each digital dynamic synapse circuit.


The main claim of US11238342:

1. A neural network apparatus, comprising:
a soma circuit;
a plurality of digital dynamic synapse circuits connected to the soma circuit, wherein each of the plurality of digital dynamic synapse circuits includes a respective binary register, and wherein each binary register is configured to store a strength value representing a neurotransmitter type and a level; and a post synaptic potential (PSP) circuit included within a respective digital dynamic synapse circuit, the PSP circuit producing a PSP value in each digital dynamic synapse circuit in response to receipt of an input pulse, the PSP value being a sum of the strength value and a then-current-decremented PSP value, and a temporal integrator circuit configured to integrate and combine each of the PSP values over time, producing a membrane potential value.

These claims are directed to protection of a digital neuron.

Other features, such as Machine Learning are protected by other patents.

( US11151441B2 System and method for spontaneous machine learning and feature extraction, 8 Feb 2017) (This may be used for "Hey Mercedes!")

1. A digital system for spontaneous machine learning and feature extraction, the system comprising:

digital hardware circuitry that includes a hierarchical arrangement of a first artificial neural network and a second artificial neural network, wherein the first artificial neural network spontaneously learns to recognize any repeating patterns in an input stream and the second artificial neural network is trained to interpret and label the repeating patterns recognized by the first artificial neural network,

wherein the first artificial neural network includes
- a plurality of digital neuron circuits,
- a plurality of digital synapse circuits, and
- an address event representation (AER) bus,

the first artificial neural network being connected to the input stream via the AER bus, the input stream comprising temporally and spatially distributed spikes encoded on the AER bus;

wherein the first artificial neural network transmits spikes to the second artificial neural network, the spikes representing the recognized repeating patterns learned from the input stream; and

wherein the plurality of digital neuron circuits are interconnected using the plurality of digital synapse circuits, and wherein

interconnectivity and strength of the plurality of digital synapse circuits are configurable through digital registers that are externally accessed.
Thanks Terroni,

I had overlooked this thread.
 
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Thanks

Thanks Terroni,

I had overlooked this thread.
Too busy watching Cinderella on Netflix. LOL FF
 
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Diogenese

Top 20
So going back in 2019 this was put out:


BrainChip’s intellectual portfolio consists of 11 patents issued or in process, including a foundational patent in the area of Spiking Neural Networks (SNN) that has been cited by leading companies such as IBM, Qualcomm, Samsung, and Hewlett Packard.

I am trying to get my head around all this since royalties will eventually be Brainchips main source of income.

Patent Royalties https://www.obrienpatents.com/pay-royalties-patents-cited-patent-application/

Patent Citation https://www.mondaq.com/india/patent/803184/patent-citation-analysis-and-its-significance

Family to Family Citations https://knowledge.lexisnexisip.com/patentsight/what-is-family-to-family-citation

Currently trying to join the dots on Qualcomm and Spiking Neural Network Patent US 2020/0143229 A1

this is a deep rabbit hole.
It is not clear yet which citations are mean Brainchip gets paid royalties and which citations are a reference to develop a patent...
I am learning as I go.
I am sure Diogenese will help us.

Hi Neuromorphia,

When it comes to patent licences, again we must call on Ella:
"tain't what you do - it's the way that you do it"

A patent does not infringe another patent. It is the product which may or may not infringe.
Patent specifications usually include description of the inventions, drawings, and claims defining the features of the invention. Whether or not a patent is infringed is determined by whether a product falls within the scope of the claims of the "infringed" patent.

Granting of a patent is not an absolute guarantee of non-infringement of an earlier patent. For example, the second patent may add a new inventive feature to the earlier patent but still require the use of the earlier invention.

As you have intimated, the fact that an earlier patent is cited against a later patent application does not necessarily indicate infringement. The earlier patent may have been cited as background prior art, related but not infringed, or the claims of the later patent may have subsequently been amended to ensure the claims do not include the earlier invention.

The BrainChip foundational patent is:
US8250011B2 Autonomous learning dynamic artificial neural computing device and brain inspired system

This claims an information processing system including an array of digital synapses capable of learning and also capable of accumulating input signals to trigger the synapse over a time period.

Thus analog synapses (ReRAM/MemRistors) do not infringe this patent.

However, digital NNs with on-chip learning would be well worth a second look.

And then there are our later patents.
 
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Neuromorphia

fact collector
Deep diving into patents
jump falling GIF


It is possible to trace the development of Akida through the BrainChip patents, listed here

US8250011B2 Autonomous learning dynamic artificial neural computing device and brain inspired system • 2012-08-21 •

US11151441B2 System and Method for Spontaneous Machine Learning and Feature Extraction (A1) • 2021-10-19 •

US10157629B2 LOW POWER NEUROMORPHIC VOICE ACTIVATION SYSTEM AND METHOD (A1) • 2018-12-18 •

US11157798B2 Intelligent Autonomous Feature Extraction System Using Two Hardware Spiking Neutral Networks with Spike Timing Dependent Plasticity (A1) • 2021-10-26 •

US11157800B2 NEURAL PROCESSOR BASED ACCELERATOR SYSTEM AND METHOD (A1) • 2021-10-26 •

US2017236027A1 INTELLIGENT BIOMORPHIC SYSTEM FOR PATTERN RECOGNITION WITH AUTONOMOUS VISUAL FEATURE EXTRACTION
• 2017-08-17 •

US2015379397A1 SECURE VOICE SIGNATURE COMMUNICATIONS SYSTEM • 2015-12-31 •

US10410117B2 (A1) METHOD AND A SYSTEM FOR CREATING DYNAMIC NEURAL FUNCTION LIBRARIES • 2019-09-10 •

US2020143229A1 SPIKING NEURAL NETWORK • 2020-05-07 •

US11227210B2 (A1) EVENT-BASED CLASSIFICATION OF FEATURES IN A RECONFIGURABLE AND TEMPORALLY CODED CONVOLUTIONAL SPIKING NEURAL NETWORK • 2022-01-18 •

http://pericles.ipaustralia.gov.au/ols/auspat/quickSearch.do
1 2021254524 AN IMPROVED SPIKING NEURAL NETWORK Brainchip Inc Van der Made, Peter; Mankar, Anil 2021-10-18 FILED

2 2020315983 Event-based classification of features in a reconfigurable and temporally coded convolutional spiking neural network BrainChip, Inc. VAN DER MADE, Peter AJ; MANKAR, Anil S.; CARLSON, Kristofor D.; CHENG, Marco 2020-07-24 FILED

3 2019372063 An improved spiking neural network BrainChip, Inc. VAN DER MADE, Peter AJ; MANKAR, Anil Shamrao 2019-1


Neural processor based accelerator system and method
US US20170024644A1 Peter AJ van der Made Brainchip Inc.

Priority 2015-07-24 • Filed 2016-07-24 • Published 2017-01-26

A configurable spiking neural network based accelerator system is provided. The accelerator system may be executed on an expansion card which may be a printed circuit board. The system includes one or more application specific integrated circuits comprising at least one spiking neural processing …


Low power neuromorphic voice activation system and method
US US20170229117A1 Peter AJ van der Made Brainchip Inc.

Priority 2016-02-05 • Filed 2017-02-06 • Published 2017-08-10

The present invention provides a system and method for controlling a device by recognizing voice commands through a spiking neural network. The system comprises a spiking neural adaptive processor receiving an input stream that is being forwarded from a microphone, a decimation filter and then an …


Autonomous Learning Dynamic Artificial Neural Computing Device and Brain …
Secure Voice Communications System
US US20190188600A1 Peter AJ van der Made Brainchip, Inc.

Priority 2014-06-28 • Filed 2019-02-22 • Published 2019-06-20

Disclosed herein are system and method embodiments for establishing secure communication with a remote artificial intelligent device. An embodiment operates by capturing an auditory signal from an auditory source. The embodiment coverts the auditory signal into a plurality of pulses having a …


Method and A System for Creating Dynamic Neural Function Libraries
US US20190012597A1 Peter AJ van der Made Brainchip, Inc.

Priority 2008-09-21 • Filed 2018-08-28 • Published 2019-01-10

A method for creating a dynamic neural function library that relates to Artificial Intelligence systems and devices is provided. Within a dynamic neural network (artificial intelligent device), a plurality of control values are autonomously generated during a learning process and thus stored in …

Intelligent Autonomous Feature Extraction System Using Two Hardware Spiking …
US US20170236051A1 Peter AJ van der Made Brainchip, Inc.

Priority 2016-02-12 • Filed 2017-02-13 • Published 2017-08-17

Embodiments of the present invention provide an artificial neural network system for feature pattern extraction and output labeling. The system comprises a first spiking neural network and a second spiking neural network. The first spiking neural network is configured to autonomously learn complex …


Intelligent biomorphic system for pattern recognition with autonomous visual …
US US20170236027A1 Peter AJ van der Made Brainchip Inc.

Priority 2016-02-16 • Filed 2017-02-16 • Published 2017-08-17

Embodiments of the present invention provide a hierarchical arrangement of one or more artificial neural networks for recognizing visual feature pattern extraction and output labeling. The system comprises a first spiking neural network and a second spiking neural network. The first spiking neural …


System and Method for Spontaneous Machine Learning and Feature Extraction
US US20180225562A1 Peter AJ van der Made Brainchip Inc.

Priority 2017-02-08 • Filed 2017-02-08 • Published 2018-08-09

Embodiments of the present invention provide an artificial neural network system for improved machine learning, feature pattern extraction and output labeling. The system comprises a first spiking neural network and a second spiking neural network. The first spiking neural network is configured to …


Method and System for creating Dynamic Neural Function Libraries
US US20130297537A1 Peter AJ. van der Made Peter AJ. van der Made

Priority 2012-05-02 • Filed 2012-05-02 • Published 2013-11-07

The current invention comprises a function library and relates to Artificial Intelligence systems and devices. Within a Dynamic Neural Network (the “Intelligent Target Device”) training model values are autonomously generated in during learning and stored in synaptic registers. One instance of an …


Spiking neural network
WO EP US CN JP KR AU US20200143229A1 Peter AJ van der Made Brainchip, Inc.

Priority 2018-11-01 • Filed 2019-10-31 • Published 2020-05-07

Disclosed herein are system, method, and computer program product embodiments for an improved spiking neural network (SNN) configured to learn and perform unsupervised extraction of features from an input stream. An embodiment operates by receiving a set of spike bits corresponding to a set …


Binary Logic Artificial Neuron Array with Dynamic Synapses and Precision-Timed …
AU2007905217A0 Peter Aj Van Der Made van der Made, Peter Adrian Mr

Filed 2007-11-27 • Published 2007-10-11


Event-based classification of features in a reconfigurable and temporally coded …
CA3144898A1 Peter Aj Van Der Made Peter Aj Van Der Made

Priority 2019-07-25 • Filed 2020-07-24 • Published 2021-01-28

Embodiments of the present invention provides a system and method of learning and classifying features to identify objects in images using a temporally coded deep spiking neural network, a classifying method by using a reconfigurable spiking neural network device or software comprising …


Event-based classification of features in a reconfigurable and temporally coded …
WO US CN AU WO2021016544A1 Peter Aj Van Der Made Brainchip, Inc.

Priority 2019-07-25 • Filed 2020-07-24 • Published 2021-01-28

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-52595

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-53395

An Improved Spiking Neural Network,” protects the learning function of BrainChip’s digital neuron circuit implemented on a neuromorphic integrated circuit.










https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-64987

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-132732

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-144508


https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-160946

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-161005

AU2022287647 AN IMPROVED SPIKING NEURAL NETWORK
https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-242685
*


https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-65030

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-68574

https://thestockexchange.com.au/threads/brn-discussion-2022.1/post-68607

50 new patents in the pipeline...

As @Deena pointed out at the beginning of this year 100 patent applications world wide were to be filed.

BrainChip patents on Espacenet:

TEMMS Temporal Event Based Neural Nets

EVENT-BASED EXTRACTION OF FEATURES IN A CONVOLUTIONAL SPIKING NEURAL NETWORK

https://www.chipestimate.com/log.php?from=/T2M/Akida-Scalable-Neural-Network-AI-Silicon-IP/datasheet/ip/46056&logerr=1 fullmoonriver

AU2022203607B1 Event-based extraction of features in a convolutional spiking neural network TECH

US2023206066A1 SPIKING NEURAL NETWORK Diogenese

https://www.businesswire.com/news/h...-Strength-and-its-Leadership-in-Edge-Learning

https://thestockexchange.com.au/threads/brn-discussion-ongoing.1/post-342156

patents waiting to be granted still...in Australia

https://announcements.asx.com.au/asxpdf/20230825/pdf/05t1tnkt78jq6w.pdf

https://brainchip.com/brainchip-awarded-latest-patent-for-event-based-pattern-detection/

WO2023250092A1 Method and system for processing event-based data in event-based spatiotemporal neural networks ***

shutup and take my money

I think the patents for TeNNs have increased the value of BRN's patent portfolio by an order of magnitude.
 
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Perhaps

Regular
This link gave me a nice journey through spiking neural network related US patents. All well known names there, Intel, IBM, Qualcomm, Samsung, Arm, Tata. Of course complete absence of Nvidia.
But the most important thing , there are Brainchip assigned patents or applications and some directly to PvdM (and sometimes additional names). So apart from the 8 known Brainchip US patents there are 6 more patent applications up to Peter and friends. Here's the list of Brainchip-free patent applications so far:


And here the ones assigned to Brainchip:


This needs a deeper look by technicians how this all works. Maybe this is Peter's safety belt.
 
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