This work paves the way to realize a processing-in-pixel (PIP) accelerator based on a multilevel HfOx resistive random access memory (RRAM) as a flexible, energy-efficient, and high-performance solution for real-time and smart image processing at edge devices. The proposed design intrinsically implements and supports a coarse-grained convolution operation in low-bit-width neural networks (NNs) leveraging a novel compute-pixel with nonvolatile weight storage at the sensor side. Our evaluations show that such a design can remarkably reduce the power consumption of data conversion and transmission to an off-chip processor maintaining accuracy compared with the recent in-sensor computing designs. Our proposed design, namely an integrated multilevel RRAM (HfOx)-based processing-in-pixel accelerator (MR-PIPA), achieves a frame rate of 1000 and efficiency of 1.89 TOp/s/W, while it substantially reduces data conversion and transmission energy by 84% compared to a baseline at the cost of minor accuracy degradation.
CITATION STYLE
Abedin, M., Roohi, A., Liehr, M., Cady, N., & Angizi, S. (2022). MR-PIPA: An Integrated Multilevel RRAM (HfOx)-Based Processing-In-Pixel Accelerator. IEEE Journal on Exploratory Solid-State Computational Devices and Circuits, 8(2), 59–67. https://doi.org/10.1109/JXCDC.2022.3210509
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