4.6 Article

Image Compression Based on a Partially Rotated Discrete Cosine Transform With a Principal Orientation

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 101773-101786

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3097720

Keywords

Transforms; Discrete cosine transforms; Sparse matrices; Image coding; Dictionaries; Compaction; Gaussian processes; Directional discrete cosine transform; discrete cosine transform; image transformation; image compression; sparse coding transform

Funding

  1. Institute of Information and Communications Technology Planning and Evaluation (IITP) grant through the Korea government (MSIT) [2021-0-00022]
  2. AI Model Optimization and Lightweight Technology Development for Edge Computing Environment

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Image transforms are essential for compression. This study presents a framework based on two-dimensional discrete cosine transform (DCT) to enhance data compaction abilities efficiently by utilizing DCT properties and approximating its direction. The proposed framework outperforms other methods in terms of computational speed without sacrificing performance.
Image transforms are necessary for image and video compression. Analytic transforms are powerful in compacting natural signals for wider exploitation. Various methods have been introduced to represent such data as a small number of bases, and several of these methods use machine learning, usually based on sparse coding, to outperform analytic transforms. They show sufficient data compaction abilities. However, these methods focus only on data compaction and reconstruction performance, without considering computational issues during implementation. We introduce a new framework for a more efficient transform based on a two-dimensional discrete cosine transform (DCT) and its characteristics. We aimed to improve the data compaction ability of transforms to levels better or similar to that of the DCT and other data-driven transforms, with fast and efficient implementation. We focused on the properties of the DCT, including horizontal and vertical directional information, and approximated its direction using the transform. Our framework was designed by rotating some of the DCT bases to fit this direction. As expected, our framework achieves a transform design with minimized computation for efficient implementation. It does not require an iterative algorithm or brute-force methods to find the best transform matrix or other parameters, thereby making it much faster than other methods. Our framework is 10 times faster than the steerable DCT (SDCT) and twice as fast as the eight-level SDCT with minimum performance reduction. Experimental validation with various images indicates that the proposed method sufficiently approaches the performance of the other transforms despite faster implementation.

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