Litcius/Paper detail

Bio‐Inspired In‐Sensor Compression and Computing Based on Phototransistors

Rui Wang, Saisai Wang, Kun Liang, Yuhan Xin, Fanfan Li, Yaxiong Cao, Jiaxin Lv, Qi Liang, Yaqian Peng, Bowen Zhu, Xiaohua Ma, Hong Wang, Yue Hao

2022Small44 citationsDOI

Abstract

The biological nervous system possesses a powerful information processing capability, and only needs a partial signal stimulation to perceive the entire signal. Likewise, the hardware implementation of an information processing system with similar capabilities is of great significance, for reducing the dimensions of data from sensors and improving the processing efficiency. Here, it is reported that indium-gallium-zinc-oxide thin film phototransistors exhibit the optoelectronic switching and light-tunable synaptic characteristics for in-sensor compression and computing. Phototransistor arrays can compress the signal while sensing, to realize in-sensor compression. Additionally, a reservoir computing network can also be implemented via phototransistors for in-sensor computing. By integrating these two systems, a neuromorphic system for high-efficiency in-sensor compression and computing is demonstrated. The results reveal that even for cases where the signal is compressed by 50%, the recognition accuracy of reconstructed signal still reaches ≈96%. The work paves the way for efficient information processing of human-computer interactions and the Internet of Things.

Topics & Concepts

Neuromorphic engineeringComputer scienceSignal processingSIGNAL (programming language)Data compressionSignal compressionInformation processingDNA computingPhotodiodeComputer hardwareMaterials scienceEmbedded systemReal-time computingArtificial neural networkOptoelectronicsDigital signal processingArtificial intelligenceComputationProgramming languageBiologyAlgorithmNeuroscienceAdvanced Memory and Neural ComputingNeural Networks and Reservoir ComputingNeural dynamics and brain function