Invention Grant
- Patent Title: Slice priority prediction system for H.264 video
- Patent Title (中): 用于H.264视频的切片优先级预测系统
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Application No.: US13611516Application Date: 2012-09-12
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Publication No.: US09210446B2Publication Date: 2015-12-08
- Inventor: Sunil Kumar , Barbara Bailey , Seethal Paluri
- Applicant: Sunil Kumar , Barbara Bailey , Seethal Paluri
- Applicant Address: US CA San Diego
- Assignee: SAN DIEGO STATE UNIVERSITY RESEARCH FOUNDATION
- Current Assignee: SAN DIEGO STATE UNIVERSITY RESEARCH FOUNDATION
- Current Assignee Address: US CA San Diego
- Agent Todd L. Juneau
- Main IPC: H04N19/89
- IPC: H04N19/89 ; H04N19/134

Abstract:
The invention relates to systems and methods for prioritizing video slices of H.264 video bitstream comprising: a memory storage and a processing unit coupled to the memory storage, wherein the processing unit operates to execute a low complexity scheme to predict the expected cumulative mean squared error (CMSE) contributed by the loss of a slice of H.264 video bitstream, wherein the processing unit operates to execute a series of actions comprising assigning each slice a predicted value according to the low complexity scheme; extracting video parameters during encoding process, said video parameters; and using a generalized linear model to model CMSE as a linear combination of the video parameters, wherein the video parameters are derived from analytical estimations by using a Generalized Linear Model (GLM) over a video database, encompassing videos of different characteristics such as high and low motion, camera panning, zooming and still videos, further comprising wherein the GLM is constructed in a training phase as follows: determining the distribution of the computed CMSE to be a Normal distribution with the Identity link function; sequentially adding covariates using the forward selection technique where by the best model is evaluated at each stage using the Akaike's Information Criterion (AIC); the training phase of the model generates regression coefficients; the final model is validated through the testing phase by predicting the CMSE for different video sequences, not in the training database; and by using the regression coefficients, the expected CMSE values are predicted for each slice.
Public/Granted literature
- US20140376645A1 Slice Priority Prediction System for H.264 Video Public/Granted day:2014-12-25
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