Lossless Image/Video Embedded Compression for Memory Bandwidth Saving of AI Applications

Author(s):  
Yu-Hsing Chiu ◽  
Szu-Hsuan Lai ◽  
Yu-Hsuan Lee
Author(s):  
Yu-Hsuan Lee ◽  
Cheng-Hung Kuei ◽  
Yue-Zhan Kao ◽  
Shih-Song Fan Jiang

The demand for visual quality has been advanced by high display resolutions and frame rates. Nevertheless, these two issues have caused tremendous memory bandwidth in a video coding system. In this study, an efficient lossless embedded compression (EC) algorithm is proposed to save memory bandwidth, while keeping visual quality. The proposed lossless EC algorithm incorporates three core techniques: tree partition, half-pixel prediction and group-based binary coding. Tree partition classifies a [Formula: see text] block into Trunk, Branch and Leaf. With tree partition, half-pixel prediction produces individual residues for Trunk, Branch and Leaf. Group-based binary coding converts theses residues to efficient codewords. The lossless compression ratio (CR) of the proposed EC is as high as 2.24 on average, saving memory bandwidth by 55.4%. This EC algorithm is implemented using CMOS 0.18[Formula: see text][Formula: see text]m technology. The maximum throughput can reach 6.4[Formula: see text]Gpixels/s, which can accommodate [Formula: see text]@60fps. The experiment results demonstrate that this study presents better hardware efficiency of 337[Formula: see text]Gpixels/J and 83.5[Formula: see text]Kpixels/s/gate.


Author(s):  
Parul Sohal ◽  
Rohan Tabish ◽  
Ulrich Drepper ◽  
Renato Mancuso
Keyword(s):  

Sign in / Sign up

Export Citation Format

Share Document