Proceedings of the Korean Society of Broadcast Engineers Conference (한국방송∙미디어공학회:학술대회논문집)
- 2019.11a
- /
- Pages.180-181
- /
- 2019
A Deep Learning-Based Rate Control for HEVC Intra Coding
- Marzuki, Ismail (Kwangwoon University) ;
- Sim, Donggyu (Kwangwoon University)
- Published : 2019.11.29
Abstract
This paper proposes a rate control algorithm for intra coding frame in HEVC encoder using a deep learning approach. The proposed algorithm is designed for CTU level bit allocation in intra frame by considering visual features spatially and temporally. Our features are generated using visual geometry group (VGG-16) with deep convolutional layers, then it is used for bit allocation per each CTU within an intra frame. According to our experiments, the proposed algorithm can achieve -2.04% Luma component BD-rate gain with minimal bit accuracy loss against the HM-16.20 rate control model.
Keywords