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Active HORIZON European Commission

Brain-inspired Intelligence for Semantic Video Compression


Funder European Commission
Recipient Organization Idryma Technologias Kai Erevnas
Country Greece
Start Date Jan 01, 2025
End Date Dec 31, 2027
Duration 1,094 days
Number of Grantees 2
Roles Coordinator; Associated Partner
Data Source European Commission
Grant ID 101153722
Grant Description

The BrainCode project proposes novel compression techniques for extended reality (XR) data which are energy efficient while ensuring a reconstruction quality that satisfies the human visual semantic perception.

There are several challenges concerning the complexity and the power consumption of the latest video compression standards which have not yet taken into account by the signal processing community.We propose that these challenges can be addressed by machine learning based architectures in order to avoid the exhaustivecomparisons between sequential frames.

We aim at releasing a semantic video compression algorithm that uses Convolutional NeuralNetworks (CNNs) and drives the bit allocation with respect to the content of the visual scene. Another goal of BrainCode is to mimicthe visual system as an intelligent mechanism that processes the visual stimulus.

This can be claimed as it consumes low power, itdeals with high resolution dynamic signals and the dynamic way it transforms and encodes the visual stimulus is beyond the currentcompression standards.

During the last decades, a lot of effort has been made to understand how the visual system works, what is thestructure and role of each layer and individual cell that lies along the visual pathway, and how the huge visual information ispropagated and compacted through the nerve cells before it reaches the visual cortex.

There are very interesting mathematicalmodels which approximate the neural behaviour and they have been widely used for image processing applications includingcompression.

The BrainCode project searches the latest neuroscience models for the design of a groundbreaking XR video compressionarchitecture.

The efficiency of the above approaches is expected to improve several image processing applications like computervision, virtual reality, and video compression among other, where the real-time processing of the visual scene plays a substantial role.

All Grantees

Idryma Technologias Kai Erevnas; Facebook Technologies Llc

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