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Rolling Shutter OFDM Scheme for Optical Camera Communication Considering Mobility Environment Based on Deep Learning

Huy Nguyen, Van-Linh Nguyen, Duc Hoang Tran, Yeong Min Jang

2022Applied Sciences16 citationsDOIOpen Access PDF

Abstract

This paper presents a rolling shutter orthogonal frequency-division multiplexing (RS-OFDM) optical camera communication higher rate longer range proposed in IEEE 802.15.7a Task Group (TG7a) using an image sensor as a receiver. OFDM is a digital multi-carrier modulation scheme deployed for broadband wireless communication to resolve the inter-symbol interference (ISI) effect caused by the multipath channel. In optical wireless communication systems, OFDM was applied widely for indoor applications: internet of things, e-health, vehicular, and localization systems. The mobility scenario is a big problem for OWC systems, which reduces the system performance due to the optical channel variation in the processing time. In addition to that, signal detection should be considered in the mobility environment to improve the signal-to-noise ratio of OWC systems. In this paper, we proposed the convolution neural network (CNN) for LED detection in the RS-OFDM system, considering the mobility effect. In addition to that, the deep neural network was applied to detect the start of OFDM frame instead of conventional technology (Van De Beek algorithm). By applying our approach, the RS-OFDM system can achieve long communication (18 m distance) with a low error rate in the 2 m/s velocity environment.

Topics & Concepts

Orthogonal frequency-division multiplexingComputer scienceOptical wirelessElectronic engineeringOptical wireless communicationsMultipath propagationReal-time computingRolling shutterChannel (broadcasting)WirelessComputer networkTelecommunicationsEngineeringShutterMechanical engineeringOptical Wireless Communication TechnologiesAdvanced Photonic Communication SystemsSemiconductor Lasers and Optical Devices
Rolling Shutter OFDM Scheme for Optical Camera Communication Considering Mobility Environment Based on Deep Learning | Litcius