Low Noise and Complexity Deep Learning Decoder for MIMO in image transmission for health System

Author:

MOHAMMED WALEED MAJEED1,UÇAN Osman Nuri1

Affiliation:

1. Altinbas University

Abstract

Abstract The signals detections in MIMOs system under different noise channels is major challenges for researchers in this time. Hence, in this paper the deep learning (DL) techniques was used to optimize the noise effects and decrease the complexity of MIMO decoders. The computation complexities are straight relate to the numbers of node visit throughout the trees searches and the SNR ration. By use neural networks technique, the Deep Learning Detectors (DLD) were suggested. The DLDs methods detect signal transmit in any noise channels, afterward off-lines training phases. The detections processing of DLDs has low complexities than the averages decoder complexities, whereas exhibit respectable performances. The even more interested is a computation complexities of DLDs is constant crossways SNRs, in difference to the decoder detector, which have an exponent complexities crossways the SNRs. These constants complexity can be a useful in case of implement the detectors in training due to it can allows for improved optimizations of resource. To calculate the performances of our suggested methods we use a low levels simulators that generate a properly accurately models of a MIMOs systems with any noise channels under deep learning techniques.

Publisher

Research Square Platform LLC

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