Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose

Exposing counterfeit perfume products is significant for protecting the legal profit of genuine perfume manufacturers and the health of perfume consumers. As a holistic solution to the problem of perfume identification (PI) using an electronic nose (EN), the methods based on convolutional neural net...

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Main Author: Mengli Cao
Format: Article
Language:English
Published: MDPI AG 2023-02-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/12/4/1041
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author Mengli Cao
author_facet Mengli Cao
author_sort Mengli Cao
collection DOAJ
description Exposing counterfeit perfume products is significant for protecting the legal profit of genuine perfume manufacturers and the health of perfume consumers. As a holistic solution to the problem of perfume identification (PI) using an electronic nose (EN), the methods based on convolutional neural network (CNN) simplifies the inconvenient selection of methods and parameter values, which has traditionally complicated existing combinatory methods. However, existing CNN methods that can be used for EN-based PI were designed on the premise that the CNN model can be trained with plenty of computational resources in divide-body ENs. Aiming at PI with an integrated handheld EN, a novel light-weight CNN method, namely LwCNN, is presented for being entirely conducted on a resource-constrained NVDIA Jetson nano module. LwCNN utilizes a sequenced stack of two feature flattening layers, two one-dimensional (1D) convolutional layers, a 1D max-pooling layer, a feature dropout layer, and a fully connected layer. Extensive real experiments were conducted on an integrated handheld EN to the performance of LwCNN with those of four existing benchmark methods. Experimental results show that LwCNN obtained an average identification accuracy of 98.35% with model training time of about 26 s.
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spelling doaj.art-1c6d793c31c245e8b40f766fea4f37f52023-11-16T20:14:03ZengMDPI AGElectronics2079-92922023-02-01124104110.3390/electronics12041041Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic NoseMengli Cao0Logistic Engineering College, Shanghai Maritime University, Shanghai 201306, ChinaExposing counterfeit perfume products is significant for protecting the legal profit of genuine perfume manufacturers and the health of perfume consumers. As a holistic solution to the problem of perfume identification (PI) using an electronic nose (EN), the methods based on convolutional neural network (CNN) simplifies the inconvenient selection of methods and parameter values, which has traditionally complicated existing combinatory methods. However, existing CNN methods that can be used for EN-based PI were designed on the premise that the CNN model can be trained with plenty of computational resources in divide-body ENs. Aiming at PI with an integrated handheld EN, a novel light-weight CNN method, namely LwCNN, is presented for being entirely conducted on a resource-constrained NVDIA Jetson nano module. LwCNN utilizes a sequenced stack of two feature flattening layers, two one-dimensional (1D) convolutional layers, a 1D max-pooling layer, a feature dropout layer, and a fully connected layer. Extensive real experiments were conducted on an integrated handheld EN to the performance of LwCNN with those of four existing benchmark methods. Experimental results show that LwCNN obtained an average identification accuracy of 98.35% with model training time of about 26 s.https://www.mdpi.com/2079-9292/12/4/1041electronic noseperfume identificationconvolutional neural network
spellingShingle Mengli Cao
Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
Electronics
electronic nose
perfume identification
convolutional neural network
title Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
title_full Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
title_fullStr Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
title_full_unstemmed Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
title_short Using a Light-Weight CNN for Perfume Identification with An Integrated Handheld Electronic Nose
title_sort using a light weight cnn for perfume identification with an integrated handheld electronic nose
topic electronic nose
perfume identification
convolutional neural network
url https://www.mdpi.com/2079-9292/12/4/1041
work_keys_str_mv AT menglicao usingalightweightcnnforperfumeidentificationwithanintegratedhandheldelectronicnose