Title of article :
A Generalized Lloyd-Type Algorithm for Adaptive Transform Coder Design
Author/Authors :
C. Archer and T. K. Leen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
In this paper, we establish a probabilistic framework
for adaptive transform coding that leads to a generalized Lloyd
type algorithm for transform coder design. Transform coders are
often constructed by concatenating an ad hoc choice of transform
with suboptimal bit allocation and quantizer design. Instead, we
start from a probabilistic latent variable model in the form of a
mixture of constrained Gaussian mixtures. From this model, we
derive an transform coder design algorithm, which integrates optimization
of all transform coder parameters. An essential part
this algorithm is our introduction of a new transform basis—the
coding optimal transform—which, unlike commonly used transforms,
minimizes compression distortion.
Adaptive transform coders can be effective for compressing
databases of related imagery since the high overhead associated
with these coders can be amortized over the entire database. For
this work, we performed compression experiments on a database
of synthetic aperture radar images. Our results show that adaptive
coders improve compressed signal-to-noise ratio (SNR) by
approximately 0.5 dB compared with global coders. Coders that
incorporated the coding optimal transform had the best SNRs
on the images used to develop the coder. However, coders that
incorporated the discrete cosine transform generalized better to
new images.
Keywords :
Compression , entropy-constrained quantization , Expectation-maximization , generalized Lloyd algorithms. , Adaptive transform coding , Gaussian mixtures
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING