Publication | Closed Access
An H.264/AVC to HEVC video transcoder based on mode mapping
24
Citations
10
References
2013
Year
Unknown Venue
EngineeringMachine LearningVideo Coding FormatVideo ProcessingVideo AdaptationMode MappingImage AnalysisImage CompressionPattern RecognitionVideo TransformerMachine Learning ModelMultimedia Signal ProcessingComputer EngineeringComputer ScienceDeep LearningComputer VisionHevc Cu PartitioningImage CodingHevc InformationVideo Transmission
The emerging video coding standard, HEVC, was developed to replace the current standard, H.264/AVC. However, in order to promote inter-operability with existing systems using the H.264/AVC, transcoding from H.264/AVC to the HEVC codec is highly needed. This paper presents a transcoding solution that uses machine learning techniques in order to map H.264/AVC macroblocks into HEVC coding units (CUs). Two alternatives to build the machine learning model are evaluated. The first uses a static training, where the model is built offline and used to transcode any video sequence. The other uses a dynamic training, with two well-defined stages: a training stage and a transcoding stage. In 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 model, which is used in the transcoding stage to classify the HEVC CU partitioning. Both solutions are tested with well-known video sequences and evaluated in terms of rate-distortion (RD) and complexity. The proposed method is on average 2.26 times faster than the trivial transcoder using fast motion estimation, while yielding a RD loss of only 3.6% in terms of bitrate.
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