Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems

Neural networks have become more and more popular in the last years. They are used for different classification tasks. There are a lot of different models can be generated which will have similar functionality but different accuracy and execution time. Herewith model evaluation is one of the main pa...

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Main Authors: Alexey Kashevnik, Ammar Ali
Format: Article
Language:English
Published: FRUCT 2021-01-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://www.fruct.org/publications/fruct28/files/Kas.pdf
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author Alexey Kashevnik
Ammar Ali
author_facet Alexey Kashevnik
Ammar Ali
author_sort Alexey Kashevnik
collection DOAJ
description Neural networks have become more and more popular in the last years. They are used for different classification tasks. There are a lot of different models can be generated which will have similar functionality but different accuracy and execution time. Herewith model evaluation is one of the main parts of the model development process to find the best model that meets the requirements for a particular project or task. Neural network evaluation main methods represented by the hold-out approach that is aimed at dividing the data-set to training, validation, and testing as well as cross-validation. More further, special platforms that are provided by different companies (like Google, Microsoft, Neptune, etc.) aimed to facilitate the model evaluation for inferencing in different environments. In the paper, we proposed a new platform designed to evaluate the neural network models developed for the driver behavior analysis in the car cabin. The proposed platform allows to identify several cases and show the accuracy for each of the cases in the considered area. We propose the classification of such cases that allows us to compare the different models accurately.
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spelling doaj.art-094e1150676d41d1bd01dfe8646ff06f2022-12-21T19:01:01ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372021-01-0128115115710.23919/FRUCT50888.2021.9347576Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring SystemsAlexey Kashevnik0Ammar Ali1SPIIRAS, RussiaITMO University, RussiaNeural networks have become more and more popular in the last years. They are used for different classification tasks. There are a lot of different models can be generated which will have similar functionality but different accuracy and execution time. Herewith model evaluation is one of the main parts of the model development process to find the best model that meets the requirements for a particular project or task. Neural network evaluation main methods represented by the hold-out approach that is aimed at dividing the data-set to training, validation, and testing as well as cross-validation. More further, special platforms that are provided by different companies (like Google, Microsoft, Neptune, etc.) aimed to facilitate the model evaluation for inferencing in different environments. In the paper, we proposed a new platform designed to evaluate the neural network models developed for the driver behavior analysis in the car cabin. The proposed platform allows to identify several cases and show the accuracy for each of the cases in the considered area. We propose the classification of such cases that allows us to compare the different models accurately.https://www.fruct.org/publications/fruct28/files/Kas.pdfobject detectiondriver monitoringneural networkscomputer visiondata processingtestingevaluationmetrics
spellingShingle Alexey Kashevnik
Ammar Ali
Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
Proceedings of the XXth Conference of Open Innovations Association FRUCT
object detection
driver monitoring
neural networks
computer vision
data processing
testing
evaluation
metrics
title Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
title_full Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
title_fullStr Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
title_full_unstemmed Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
title_short Comparison Platform Design for Neural Network Models Evaluation in Driver Monitoring Systems
title_sort comparison platform design for neural network models evaluation in driver monitoring systems
topic object detection
driver monitoring
neural networks
computer vision
data processing
testing
evaluation
metrics
url https://www.fruct.org/publications/fruct28/files/Kas.pdf
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AT ammarali comparisonplatformdesignforneuralnetworkmodelsevaluationindrivermonitoringsystems