white paper

BLUEDOT: Accelerating NN-based DeepField-PQO design using Catapult HLS

Picture of BLUEDOT’s AI-based DeepField-PQO IP

Recently, the proportion of video in mobile traffic has been increasing exponentially. This video traffic growth trend is due to the development of Internet/video technology and changes in video consumption patterns.

Video service platform companies must bear a lot of costs to encode with better picture quality and smaller capacity. To solve this problem, BLUEDOT developed DeepField-PQO, an AI-based CODEC preprocessing filter. With the existing development method and as AI-based algorithms become more complex, design and verification take a lot of time, limiting the development period. To solve this, we introduced HLS to FPGA and developed it, and we introduced Catapult HLS to target ASIC.

With the introduction of Catapult HLS, we were able to flexibly respond to spec changes to improve performance, and shorten the overall development period through easier collaboration, verification, and code reuse.

Share

Related resources

Catapult High-Level Synthesis & Verification
Learning Center Library

Catapult High-Level Synthesis & Verification

The Catapult High-Level Synthesis (HLS) library contains a set of modules to introduce Engineers to HLS and High-Level Verification.

Machine Learning at the Edge: Using HLS to Optimize Power and Performance
White Paper

Machine Learning at the Edge: Using HLS to Optimize Power and Performance

Moving machine learning to the edge has critical requirements on power and performance. Using off-the-shelf solutions is not practical.

STMicroelectronics quickly brings automotive image signal processing to market with High-Level Synthesis
White Paper

STMicroelectronics quickly brings automotive image signal processing to market with High-Level Synthesis

STMicroelectronics crafted a unique High-Level Synthesis flow, enabled by templates, to design and verify an image signal processing (ISP) device, fostering getting it to market as fast as possible.