|
Showing 1 - 12 of
12 matches in All Departments
This book discusses efficient prediction techniques for the current
state-of-the-art High Efficiency Video Coding (HEVC) standard,
focusing on the compression of a wide range of video signals, such
as 3D video, Light Fields and natural images. The authors begin
with a review of the state-of-the-art predictive coding methods and
compression technologies for both 2D and 3D multimedia contents,
which provides a good starting point for new researchers in the
field of image and video compression. New prediction techniques
that go beyond the standardized compression technologies are then
presented and discussed. In the context of 3D video, the authors
describe a new predictive algorithm for the compression of depth
maps, which combines intra-directional prediction, with flexible
block partitioning and linear residue fitting. New approaches are
described for the compression of Light Field and still images,
which enforce sparsity constraints on linear models. The Locally
Linear Embedding-based prediction method is investigated for
compression of Light Field images based on the HEVC technology. A
new linear prediction method using sparse constraints is also
described, enabling improved coding performance of the HEVC
standard, particularly for images with complex textures based on
repeated structures. Finally, the authors present a new,
generalized intra-prediction framework for the HEVC standard, which
unifies the directional prediction methods used in the current
video compression standards, with linear prediction methods using
sparse constraints. Experimental results for the compression of
natural images are provided, demonstrating the advantage of the
unified prediction framework over the traditional directional
prediction modes used in HEVC standard.
This book discusses efficient prediction techniques for the current
state-of-the-art High Efficiency Video Coding (HEVC) standard,
focusing on the compression of a wide range of video signals, such
as 3D video, Light Fields and natural images. The authors begin
with a review of the state-of-the-art predictive coding methods and
compression technologies for both 2D and 3D multimedia contents,
which provides a good starting point for new researchers in the
field of image and video compression. New prediction techniques
that go beyond the standardized compression technologies are then
presented and discussed. In the context of 3D video, the authors
describe a new predictive algorithm for the compression of depth
maps, which combines intra-directional prediction, with flexible
block partitioning and linear residue fitting. New approaches are
described for the compression of Light Field and still images,
which enforce sparsity constraints on linear models. The Locally
Linear Embedding-based prediction method is investigated for
compression of Light Field images based on the HEVC technology. A
new linear prediction method using sparse constraints is also
described, enabling improved coding performance of the HEVC
standard, particularly for images with complex textures based on
repeated structures. Finally, the authors present a new,
generalized intra-prediction framework for the HEVC standard, which
unifies the directional prediction methods used in the current
video compression standards, with linear prediction methods using
sparse constraints. Experimental results for the compression of
natural images are provided, demonstrating the advantage of the
unified prediction framework over the traditional directional
prediction modes used in HEVC standard.
|
You may like...
Hoe Ek Dit Onthou
Francois Van Coke, Annie Klopper
Paperback
R300
R219
Discovery Miles 2 190
Loot
Nadine Gordimer
Paperback
(2)
R383
R310
Discovery Miles 3 100
|