Retinomorphic hardware for in-sensor computing

Guangdi Feng, Xiaoxu Zhang, Bobo Tian, Chungang Duan

Research output: Contribution to journalReview articlepeer-review

62 Scopus citations

Abstract

Rapid developments in the Internet of Things and Artificial Intelligence trigger higher requirements for image perception and learning of external environments through visual systems. However, limited by von Neumann's bottleneck, the physical separation of sense, memory, and processing units in a conventional personal computer-based vision system tend to consume a significant amount of energy, time latency, and additional hardware costs. By integrating computational tasks of multiple functionalities into the sensors themselves, the emerging bio-inspired neuromorphic visual systems provide an opportunity to overcome these limitations. With high speed, ultralow power and strong adaptability, it is highly desirable to develop a neuromorphic vision system that is based on highly precise in-sensor computing devices, namely retinomorphic devices. We here present a timely review of retinomorphic devices for visual in-sensor computing. We begin with several types of physical mechanisms of photoelectric sensors that can be constructed for artificial vision. The potential applications of retinomorphic hardware are, thereafter, thoroughly summarized. We also highlight the possible strategies to existing challenges and give a brief perspective of retinomorphic architecture for in-sensor computing. (Figure presented.).

Original languageEnglish
Article numbere12473
JournalInfoMat
Volume5
Issue number9
DOIs
StatePublished - Sep 2023

Keywords

  • ferroelectric
  • in-sensor computing
  • photogating
  • retinomorphic device

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