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In-Memory-Computing Realization with a Photodiode/Memristor Based Vision Sensor

Nikolaos Vasileiadis, Vasileios Ntinas, Georgios Ch. Sirakoulis, Panagiotis Dimitrakis

2021Materials25 citationsDOIOpen Access PDF

Abstract

State-of-the-art IoT technologies request novel design solutions in edge computing, resulting in even more portable and energy-efficient hardware for in-the-field processing tasks. Vision sensors, processors, and hardware accelerators are among the most demanding IoT applications. Resistance switching (RS) two-terminal devices are suitable for resistive RAMs (RRAM), a promising technology to realize storage class memories. Furthermore, due to their memristive nature, RRAMs are appropriate candidates for in-memory computing architectures. Recently, we demonstrated a CMOS compatible silicon nitride (SiNx) MIS RS device with memristive properties. In this paper, a report on a new photodiode-based vision sensor architecture with in-memory computing capability, relying on memristive device, is disclosed. In this context, the resistance switching dynamics of our memristive device were measured and a data-fitted behavioral model was extracted. SPICE simulations were made highlighting the in-memory computing capabilities of the proposed photodiode-one memristor pixel vision sensor. Finally, an integration and manufacturing perspective was discussed.

Topics & Concepts

MemristorNeuromorphic engineeringResistive random-access memoryComputer sciencePhotodiodeContext (archaeology)CMOSImage sensorRealization (probability)Edge computingComputer architectureEmbedded systemElectronic engineeringInternet of ThingsElectrical engineeringMaterials scienceEngineeringArtificial intelligenceArtificial neural networkOptoelectronicsBiologyStatisticsVoltageMathematicsPaleontologyAdvanced Memory and Neural ComputingCCD and CMOS Imaging SensorsNeuroscience and Neural Engineering
In-Memory-Computing Realization with a Photodiode/Memristor Based Vision Sensor | Litcius