Company patents

DEEP RENDER LTD

DEEP RENDER LTD's patent strategy shows a surprising decline in patenting activity across its core areas after a strong 2024, with Pictorial / Video Communications, Image Processing, Machine Learning & AI, and Computer Vision all experiencing significant year-over-year drops in 2025 (e.g., -84.2% for Pictorial / Video Communications, -78.9% for Image Processing) and continued declines so far in 2026, suggesting a shift away from aggressive patenting in these previously dominant fields.

Patent Trend by Technology Area

Yearly patent publications since 2023

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Product-level themes inferred from filings since 2023, with category chips showing where each theme appears. Select a theme to filter the patents below.

46 US filings (since 2023) · 4 categories · 3 themes

Patents

Showing 11-20 of 52

Page 2 of 6
US 12026924 B1GRANTED
G06T9/00

Method and data processing system for lossy image or video encoding, transmission and decoding

Filed:2023-08-30Pub:2024-07-02
Applicant:DEEP RENDER LTD

A method of training one or more neural networks, the one or more neural networks being for use in lossy image or video encoding, transmission and decoding, the method comprising the steps of: receiving an input image at a first computer system; encoding the input image using a first neural network to produce a latent representation; decoding the latent representation using a second neural network to produce an output image, wherein the output image is an approximation of the input image; evaluating a function based on a difference between the output image and the input image; updating the parameters of the first neural network and the second neural network based on the evaluated function; and repeating the above steps using a first set of input images to produce a first trained neural network and a second trained neural network; wherein the difference between the output image and the input image is determined based on the output of a neural network acting as a discriminator; the parameters of the neural network acting as a discriminator are additionally updated based on the evaluated function; and the parameters of the neural network acting as a discriminator are updated at a first learning rate; wherein, after at least one of the updates of the parameters of the neural network acting as a discriminator, the first learning rate is updated; and the update to the first learning rate is based on an error of the output of the neural network acting as a discriminator.