Onboard Rock Detection Algorithm Based on Spiking Neural Network

The detection of rocky obstacles onboard in the deep space environment is an important prerequisite to ensure the safe detection of the planetary rover.Due to the storage capacity and data processing capabilities of space-borne computing equipment,large-scale and complex calculations are not suitabl...

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Main Author: MA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili
Format: Article
Language:zho
Published: Editorial office of Computer Science 2023-01-01
Series:Jisuanji kexue
Subjects:
Online Access:https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2023-50-1-98.pdf
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author MA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili
author_facet MA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili
author_sort MA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili
collection DOAJ
description The detection of rocky obstacles onboard in the deep space environment is an important prerequisite to ensure the safe detection of the planetary rover.Due to the storage capacity and data processing capabilities of space-borne computing equipment,large-scale and complex calculations are not suitable for the remote and deep space environment.In addition,traditional rock detection algorithms have problems such as high complexity and excessive energy consumption.Therefore,this paper proposes the Spiking-Unet,which is a multi-class semantic segmentation algorithm and uses deep spiking neural network to achieve effective detection of rocks onboard.Firstly,because of class imbalance in the rock images,constructing the lovasz_CE loss function to train the Unet network model.Secondly,mapping the parameters obtaining from the Unet network model to the Spiking-Unet network based on the parameter scaling method.Thirdly,using the S-softmax function based on the pulse firing frequency to rea-lize the pixel-level classification of rock images.The proposed algorithm is tested on the public datasets Artificial Lunar Landscape.Experimental results show that the Spiking-Unet can reduce Flopsto about 1/1 000 of the original and reduce energy consuptionto about 1/600 of the original when the accuracy is similar with the Unet model with the same topology.
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spelling doaj.art-a3e4dd24cc3244babcea109df1b8b47e2023-04-18T02:33:09ZzhoEditorial office of Computer ScienceJisuanji kexue1002-137X2023-01-015019810410.11896/jsjkx.211100149Onboard Rock Detection Algorithm Based on Spiking Neural NetworkMA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili0School of Computer Science and Technology,Nanjing University of Aeronautics and Astronautics,Nanjing 211106,ChinaThe detection of rocky obstacles onboard in the deep space environment is an important prerequisite to ensure the safe detection of the planetary rover.Due to the storage capacity and data processing capabilities of space-borne computing equipment,large-scale and complex calculations are not suitable for the remote and deep space environment.In addition,traditional rock detection algorithms have problems such as high complexity and excessive energy consumption.Therefore,this paper proposes the Spiking-Unet,which is a multi-class semantic segmentation algorithm and uses deep spiking neural network to achieve effective detection of rocks onboard.Firstly,because of class imbalance in the rock images,constructing the lovasz_CE loss function to train the Unet network model.Secondly,mapping the parameters obtaining from the Unet network model to the Spiking-Unet network based on the parameter scaling method.Thirdly,using the S-softmax function based on the pulse firing frequency to rea-lize the pixel-level classification of rock images.The proposed algorithm is tested on the public datasets Artificial Lunar Landscape.Experimental results show that the Spiking-Unet can reduce Flopsto about 1/1 000 of the original and reduce energy consuptionto about 1/600 of the original when the accuracy is similar with the Unet model with the same topology.https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2023-50-1-98.pdfdeep space exploration|spiking neural network|rock detection|image segmentation|semantic segmentation
spellingShingle MA Weiqi, YUAN Jiabin, ZHA Keke, FAN Lili
Onboard Rock Detection Algorithm Based on Spiking Neural Network
Jisuanji kexue
deep space exploration|spiking neural network|rock detection|image segmentation|semantic segmentation
title Onboard Rock Detection Algorithm Based on Spiking Neural Network
title_full Onboard Rock Detection Algorithm Based on Spiking Neural Network
title_fullStr Onboard Rock Detection Algorithm Based on Spiking Neural Network
title_full_unstemmed Onboard Rock Detection Algorithm Based on Spiking Neural Network
title_short Onboard Rock Detection Algorithm Based on Spiking Neural Network
title_sort onboard rock detection algorithm based on spiking neural network
topic deep space exploration|spiking neural network|rock detection|image segmentation|semantic segmentation
url https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2023-50-1-98.pdf
work_keys_str_mv AT maweiqiyuanjiabinzhakekefanlili onboardrockdetectionalgorithmbasedonspikingneuralnetwork