An Automated Framework for Optimal Selection of Approximate Computing Units for Low-Complexity Trigonometric Transforms on FPGAs Conference

Nanthakumar, P, Wijenayake, C, Edussooriya, CUS et al. (2026). An Automated Framework for Optimal Selection of Approximate Computing Units for Low-Complexity Trigonometric Transforms on FPGAs . Proceedings - IEEE International Symposium on Circuits and Systems, 180-184. 10.1109/ISCAS66217.2026.11562084

cited authors

  • Nanthakumar, P; Wijenayake, C; Edussooriya, CUS; Madanayake, A

abstract

  • The optimal selection of approximate computing units towards low-complexity FPGA-based hardware architectures for approximate discrete cosine transform (ADCT) and approximate discrete Fourier transform (ADFT) are explored. The proposed methodology employs an existing library of FPGA based approximate adders to select Pareto-optimal1 approximate adders for cascaded signal flow architectures found in ADCT and ADFT operations. Benefits are presented with examples from 8-point ADCT based image compression and 16-point ADFT based digital multi-beamforming applications. Examples demonstrate a nearly 25% LUT reduction in FPGA utilization compared to error-free computing, with a corresponding degradation of nearly 1 dB in terms of PSNR in image compression and 0.3 dB loss in SNR improvement in beamforming.

publication date

  • January 1, 2026

Digital Object Identifier (DOI)

start page

  • 180

end page

  • 184