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Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+

Wheat, one of the most important food crops in the world, is usually harvested mechanically by combine harvesters. The impurity rate is one of the most important indicators of the quality of wheat obtained by mechanized harvesting. To realize the online detection of the impurity rate in the mechaniz...

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Autores principales: Chen, Man, Jin, Chengqian, Ni, Youliang, Xu, Jinshan, Yang, Tengxiang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9572260/
https://www.ncbi.nlm.nih.gov/pubmed/36236724
http://dx.doi.org/10.3390/s22197627
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author Chen, Man
Jin, Chengqian
Ni, Youliang
Xu, Jinshan
Yang, Tengxiang
author_facet Chen, Man
Jin, Chengqian
Ni, Youliang
Xu, Jinshan
Yang, Tengxiang
author_sort Chen, Man
collection PubMed
description Wheat, one of the most important food crops in the world, is usually harvested mechanically by combine harvesters. The impurity rate is one of the most important indicators of the quality of wheat obtained by mechanized harvesting. To realize the online detection of the impurity rate in the mechanized harvesting process of wheat, a vision system based on the DeepLabV3+ model of deep learning for identifying and segmenting wheat grains and impurities was designed in this study. The DeepLabV3+ model construction considered the four backbones of MobileNetV2, Xception-65, ResNet-50, and ResNet-101 for training. The optimal DeepLabV3+ model was determined through the accuracy rate, comprehensive evaluation index, and average intersection ratio. On this basis, an online detection method of measuring the wheat impurity rate in mechanized harvesting based on image information was constructed. The model realized the online detection of the wheat impurity rate. The test results showed that ResNet-50 had the best recognition and segmentation performance; the accuracy rate of grain identification was 86.86%; the comprehensive evaluation index was 83.63%; the intersection ratio was 0.7186; the accuracy rate of impurity identification was 89.91%; the comprehensive evaluation index was 87.18%; the intersection ratio was 0.7717; and the average intersection ratio was 0.7457. In terms of speed, ResNet-50 had a fast segmentation speed of 256 ms per image. Therefore, in this study, ResNet-50 was selected as the backbone network for DeepLabV3+ to carry out the identification and segmentation of mechanically harvested wheat grains and impurity components. Based on the manual inspection results, the maximum absolute error of the device impurity rate detection in the bench test was 0.2%, and the largest relative error was 17.34%; the maximum absolute error of the device impurity rate detection in the field test was 0.06%; and the largest relative error was 13.78%. This study provides a real-time method for impurity rate measurement in wheat mechanized harvesting.
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spelling pubmed-95722602022-10-17 Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+ Chen, Man Jin, Chengqian Ni, Youliang Xu, Jinshan Yang, Tengxiang Sensors (Basel) Article Wheat, one of the most important food crops in the world, is usually harvested mechanically by combine harvesters. The impurity rate is one of the most important indicators of the quality of wheat obtained by mechanized harvesting. To realize the online detection of the impurity rate in the mechanized harvesting process of wheat, a vision system based on the DeepLabV3+ model of deep learning for identifying and segmenting wheat grains and impurities was designed in this study. The DeepLabV3+ model construction considered the four backbones of MobileNetV2, Xception-65, ResNet-50, and ResNet-101 for training. The optimal DeepLabV3+ model was determined through the accuracy rate, comprehensive evaluation index, and average intersection ratio. On this basis, an online detection method of measuring the wheat impurity rate in mechanized harvesting based on image information was constructed. The model realized the online detection of the wheat impurity rate. The test results showed that ResNet-50 had the best recognition and segmentation performance; the accuracy rate of grain identification was 86.86%; the comprehensive evaluation index was 83.63%; the intersection ratio was 0.7186; the accuracy rate of impurity identification was 89.91%; the comprehensive evaluation index was 87.18%; the intersection ratio was 0.7717; and the average intersection ratio was 0.7457. In terms of speed, ResNet-50 had a fast segmentation speed of 256 ms per image. Therefore, in this study, ResNet-50 was selected as the backbone network for DeepLabV3+ to carry out the identification and segmentation of mechanically harvested wheat grains and impurity components. Based on the manual inspection results, the maximum absolute error of the device impurity rate detection in the bench test was 0.2%, and the largest relative error was 17.34%; the maximum absolute error of the device impurity rate detection in the field test was 0.06%; and the largest relative error was 13.78%. This study provides a real-time method for impurity rate measurement in wheat mechanized harvesting. MDPI 2022-10-08 /pmc/articles/PMC9572260/ /pubmed/36236724 http://dx.doi.org/10.3390/s22197627 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chen, Man
Jin, Chengqian
Ni, Youliang
Xu, Jinshan
Yang, Tengxiang
Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title_full Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title_fullStr Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title_full_unstemmed Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title_short Online Detection System for Wheat Machine Harvesting Impurity Rate Based on DeepLabV3+
title_sort online detection system for wheat machine harvesting impurity rate based on deeplabv3+
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9572260/
https://www.ncbi.nlm.nih.gov/pubmed/36236724
http://dx.doi.org/10.3390/s22197627
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