Title of article :
Hierarchical image coding via cerebellar model arithmetic computers
Author/Authors :
Youji Iiguni، نويسنده , , Y.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1996
Abstract :
A hierarchical coding system for progressive image
transmission that uses the generalization and learning capability
of CMAC (cerebellar model arithmetic computer or cerebellar
model articulation controller) is described. Each encoder and
decoder includes a set of CMAC’s having different widths of generalization
region. A CMAC with a wider generalization region
is used to learn a lower frequency component of the original
image. The training signals for each CMAC are progressively
transmitted to a decoder. Compression is achieved by decreasing
the number of training signals for CMAC with a wider generalization
region, and by making quantization intervals wider
for CMAC with a smaller generalization region. CMAC’s in the
decoder are trained on the training signals to be transmitted.
The output is recursively added to the other so that the quality
of image reconstruction is gradually improved. The proposed
method, unlike the conventional hierarchical coding methods,
uses no filtering technique in both decimation and interpolation
processes, and has the following advantages: i) It does not suffer
from problems of blocking effect; ii) the computation includes
no multiplication; iii) the coarsest reconstructed image is quickly
produced; iv) the total number of transmitted data is equal to
the number of the original image pixels; v) all the reconstructed
images are equal to the original image in size; vi) quantization
errors introduced at one level can he taken into account at the
next level, allowing lossless progressive image transmission.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING