Restoration of Images Compressed by Hybrid Compression, based on Discrete Cosine Transform and Vector Quantization, over a Binary Symmetric Channel
Elawady, Iman
Ozcan, Caner
2025-08-18T13:12:52Z
2025-08-18T13:12:52Z
2024
1785-8860
hu_HU
http://hdl.handle.net/20.500.14044/32345
The H.264 digital video compression standard (encoded files are MP4 files, but
they can also be AVI or MKV) had a lot of attention and was successful for a long time due
to the many features and techniques used to compress a video. Technically, a video
represents a sequence of images, for the H.264 standard, the compression is based on
reducing the redundancy in the same frame (an image), which is known as “intra
prediction”. This prediction generates modes used to rebuild the image (decompression)
when we apply the same idea again but between the frames, we called it as inter prediction.
The inter prediction operation also generates other modes. In terms of compression or
transmission, predictions mean dependence on primary information, and it is estimated
based on primary data, rather than sending all information. In this paper, we employ these
prediction modes in the case of intra prediction to correct a single image compressed by
vector quantization. This type of compression makes the restoration process very difficult
as it produces block-shaped errors and no information about the original block is removed.
The results in experimental studies section show a high restoration and correction ratio
based on the PSNR as an evaluation parameter. For BER=0.01, we achieved a restoration
average of about 0.6 dB, which produces an image with approximately the same PSNR as
the original. The main contribution of our method, is that we open a new concept of non-
filtering image correction techniques and improve on this correction method, by
introducing new prediction modes, to correct the image.
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Restoration of Images Compressed by Hybrid Compression, based on Discrete Cosine Transform and Vector Quantization, over a Binary Symmetric Channel