Title :
Fast H.264/AVC to HEVC transcoding based on machine learning
Author :
Peixoto, E. ; Macchiavello, B. ; de Queiroz, R.L. ; Hung, E.M.
Author_Institution :
Dept. de Eng. Eletr., Univ. de Brasilia, Brasilia, Brazil
Abstract :
Since the HEVC codec has become an ITU-T and ISO/IEC standard, efficient transcoding from previous standards, such as the H.264/AVC, to HEVC is highly needed. In this paper, we build on our previous work with the goal to develop a faster transcoder from H.264/AVC to HEVC. The transcoder is built around an established two-stage transcoding. In the first stage, called the training stage, full re-encoding is performed while the H.264/AVC and the HEVC information are gathered. This information is then used to build a CU classification model that is used in the second stage (called the transcoding stage). The solution is tested with well-known video sequences and evaluated in terms of rate-distortion and complexity. The proposed method is 3.4 times faster, on average, than the trivial transcoder, and 1.65 times faster than a previous transcoding solution.
Keywords :
IEC standards; ISO standards; learning (artificial intelligence); rate distortion theory; transcoding; video coding; CU classification model; HEVC codec; IEC standard; ISO standard; ITU-T standard; high efficiency video coding; machine learning; rate-distortion; transcoding solution; two-stage transcoding; video sequences; Rate-distortion; Standards; Streaming media; Training; Transcoding; Video coding;
Conference_Titel :
Telecommunications Symposium (ITS), 2014 International
Conference_Location :
Sao Paulo
DOI :
10.1109/ITS.2014.6947999