Low-energy Pipelined Hardware Design for Approximate Medium Filter

Author:

Mahmoud Mervat M. A.1ORCID,Elashkar Nahla E.1ORCID,Draz Heba H.2ORCID

Affiliation:

1. Microelectronics Department, Electronics Research Institute, Egypt and Adjunct Assistant Professor at the Department of Electrical Engineering, The British University in Egypt, Cairo, Egypt

2. Microelectronics Department, Electronics Research Institute, Cairo, Egypt

Abstract

Image and video processing algorithms are currently crucial for many applications. Hardware implementation of these algorithms provides higher speed for large computation applications. Removing noise is often a typical pre-processing step to enhance the results of later analysis and processing. Median filter is a typical nonlinear filter that is very commonly used for impulse noise elimination in digital image processing. This article suggests a low-energy median filter hardware design for battery-based hardware applications. An approximate solution with high accuracy is investigated to speed up the filtering operation, reduce the area, and consume less power/energy. Pipelining and parallelism are used to optimize the speed and power of this technique. Non-pipelined, two different pipelined structures, and two parallel architectures versions are designed. The design versions are implemented first with a Virtex-5 LX110T FPGA and then using the UMC 130nm standard cell ASIC technology. The selection and the even-odd sorting-based median filters are also implemented for an equitable comparison with the standard median filtering techniques. The suggested non-pipelined median filter design enhances the throughput 35% more than the highest investigated state of the art. The pipelining enhances the throughput to more than twice its value. Additionally, the parallel architecture decreases the area and the consumed power by around 40%. The simulation results reveal that one of the suggested designs significantly decreases the area, with the same speed as the fastest design in the literature, without noticeably degrading the accuracy, and a significant decrease in energy consumption by about 60%.

Publisher

Association for Computing Machinery (ACM)

Subject

Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications

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