The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
Intra-Refresh and Data-Partitioning for Video Streaming over IEEE 802.11e
Abstract
Intra-refresh macroblocks and data partitioning are two error-resilience tools aimed at video streaming over wireless networks. Intra-refresh macroblocks avoids the repetitive delays associated with periodic intra-coded frames, while also arresting temporal error propagation. Data-partitioning divides a compressed data stream according to the data importance, allowing packet prioritization schemes to be designed. This chapter reviews these and other error-resilience tools from the H.264 codec. As an illustration of the use of these tools, the chapter demonstrates a wireless access scheme that selectively drops packets that carry intra-refresh macroblocks. This counter-intuitive scheme actually results in better video quality than if packets containing transform coefficients were to be selectively dropped. Dropping only occurs when in the presence of wireless network congestion, as at other times the intra-coded macroblocks protect the video against random bit errors. Any packet dropping takes place under IEEE 802.11e, which is a quality-of-service addition to the IEEE 802.11 standard for wireless LANs. The chapter shows that, by this scheme, when congestion occurs, it is possible to gain up to 2 dB in video quality over assigning a stream to a single IEEE 802.11e access category. The scheme is shown to be consistently advantageous in indoor and outdoor wireless scenarios over other ways of assigning the partitioned data packets to different access categories. The chapter also contains a review of other research ideas using intra-refresh macroblocks and data-partitioning, as well as a look at the research outlook, now that the High Efficiency Video Codec (HEVC) has been released.
Related Content
Taoufik Benyetho, Larbi El Abdellaoui, Abdelali Tajmouati, Abdelwahed Tribak, Mohamed Latrach.
© 2017.
33 pages.
|
Naveen Jaglan, Samir Dev Gupta, Binod Kumar Kanaujia, Shweta Srivastava.
© 2017.
51 pages.
|
Anirban Karmakar.
© 2017.
30 pages.
|
Hassan Elmajid, Jaouad Terhzaz, Hassan Ammor.
© 2017.
31 pages.
|
Salvatore Caorsi, Claudio Lenzi.
© 2017.
23 pages.
|
Abdessamed Chinig, Ahmed Errkik, Abdelali Tajmouati, Hamid Bennis, Jamal Zbitou, Mohamed Latrach.
© 2017.
35 pages.
|
Fouad Aytouna, Mohamed Aghoutane, Naima Amar Touhami, Mohamed Latrach.
© 2017.
39 pages.
|
|
|