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Article Dans Une Revue IEEE Transactions on Communications Année : 2020

Optimal Reference Selection for Random Access in Predictive Coding Schemes

Résumé

Data acquired over long periods of time like High Definition (HD) videos or records from a sensor over long time intervals, have to be efficiently compressed, to reduce their size. The compression has also to allow efficient access to random parts of the data upon request from the users. Efficient compression is usually achieved with prediction between data points at successive time instants. However, this creates dependencies between the compressed representations, which is contrary to the idea of random access. Prediction methods rely in particular on reference data points, used to predict other data points, and the placement of these references balances compression efficiency and random access. Existing solutions to position the references use ad hoc methods. In this paper, we study this joint problem of compression efficiency and random access. We introduce the storage cost as a measure of the compression efficiency and the transmission cost for the random access ability. We show that the reference placement problem that trades off storage with transmission cost is an integer linear programming problem, that can be solved by standard optimizer. Moreover, we show that the classical periodic placement of the references is optimal, when the encoding costs of each data point are equal and when requests of successive data points are made. In this particular case, a closed form expression of the optimal period is derived. Finally, the optimal proposed placement strategy is compared with an ad hoc method, where the references correspond to sources where the prediction does not help reducing significantly the encoding cost. The optimal proposed algorithm shows a bit saving of-20% with respect to the ad hoc method. Index Terms Mai Quyen Pham was with the team-project SIROCCO at INRIA/IRISA,). Aline Roumy and Thomas Maugey are with the team-project SIROCCO at INRIA/IRISA,
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Dates et versions

hal-02925113 , version 1 (28-08-2020)

Identifiants

Citer

Mai Quyen Pham, Aline Roumy, Thomas Maugey, Elsa Dupraz, Michel Kieffer. Optimal Reference Selection for Random Access in Predictive Coding Schemes. IEEE Transactions on Communications, 2020, 68 (9), pp.5819-5833. ⟨10.1109/TCOMM.2020.3002937⟩. ⟨hal-02925113⟩
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