Memristive System Design for Variable Pixel G-Neighbor Denoising Filter
Kamilla Aliakhmet, Diana Sadykova, Joshin Mathew, Alex Pappachen James

TL;DR
This paper introduces a memristive circuit for a variable pixel G-Neighbor denoising filter that adaptively reduces blurring artifacts in images, demonstrating near real-time processing and improved image quality metrics.
Contribution
The paper presents a novel memristive circuit design for an adaptive G-Neighbor filter, enabling edge-aware denoising with neuromorphic and parallel processing capabilities.
Findings
Significant reduction in MSE (~65%)
Increase in PSNR (~18%)
Increase in SSIM (~12%)
Abstract
Image blurring artifact is the main challenge to any spatial, denoising filters. This artifact is contributed by the heterogeneous intensities within the given neighborhood or window of fixed size. Selection of most similar intensities (G-Neighbors) helps to adapt the window shape which is of edge-aware nature and subsequently reduce this blurring artifact. The paper presents a memristive circuit design to implement this variable pixel G-Neighbor filter. The memristive circuits exhibits parallel processing capabilities (near real-time) and neuromorphic architectures. The proposed design is demonstrated as simulations of both algorithm (MATLAB) and circuit (SPICE). Circuit design is evaluated for various parameters such as processing time, fabrication area used, and power consumption. Denoising performance is demonstrated using image quality metrics such as peak signal-to-noise ratio…
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