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Published in: Cluster Computing 4/2019

14-03-2018

Research on wheat leaf water content based on machine vision

Authors: Xiao-Ling Ding, Li-Xin Zhao, Tian-Tian Zhou, Yi-Bin Li, Xi-Mei Huang, Ya-Li Zhao

Published in: Cluster Computing | Special Issue 4/2019

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Abstract

This paper is based on Matlab software to predict the water content of wheat leaves. The object of study are 100 wheat leaves which collected in the field, the moisture content of the blade was measured by drying, preprocess the image with Matlab so as to denoise the image, segmentation of blade images by image two valued operation of Otsu method then, image features are extracted. By correlation analysis, the H feature and the area of the shape feature of the color feature which are related to the water content are extracted, Through correlation analysis, we extracted the five components of the color feature, which are related to the water content, the area of the shape feature, the average value of the texture features, consistency and entropy, and so on, and the H features are extracted, it can reduce the influence of single parameter on decision and improve the precision of comprehensive decision. Finally, the BP neural network was used to train 80 samples and meet the requirements, and then to predict the 20 new samples. The results show that the prediction accuracy can reach above 96%.

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Literature
1.
go back to reference Zhang Y.Q., Jiang J.:The effects of water stress on the physiological ecological processes of winter wheat leaves. Res. Arid Areas. 03–30 (2001) Zhang Y.Q., Jiang J.:The effects of water stress on the physiological ecological processes of winter wheat leaves. Res. Arid Areas. 03–30 (2001)
2.
go back to reference Zakaluk, R., Sri, Ranjan R.: Artificial neural network modelling of leaf water potential for potatoes using RGB digital images: a greenhouse study. Potato Res. 4, 72–75 (2007) Zakaluk, R., Sri, Ranjan R.: Artificial neural network modelling of leaf water potential for potatoes using RGB digital images: a greenhouse study. Potato Res. 4, 72–75 (2007)
3.
go back to reference Sun, R.D., Yu, H.Y., Yu, C.L.: Research on non-destructive detecting of cucumber leave water content based on image procession. J. Agric. Mech. Res. 7, 87–89 (2008) Sun, R.D., Yu, H.Y., Yu, C.L.: Research on non-destructive detecting of cucumber leave water content based on image procession. J. Agric. Mech. Res. 7, 87–89 (2008)
4.
go back to reference Nie, G.J., Zhang, Z.F., Xia, Y.M., et al.: Fingerprint image segmentation algorithm based on mathematical morphology and mean variance. J. Nanjing Voc. Inst. Ind. Technol. 11(4), 38–40 (2011) Nie, G.J., Zhang, Z.F., Xia, Y.M., et al.: Fingerprint image segmentation algorithm based on mathematical morphology and mean variance. J. Nanjing Voc. Inst. Ind. Technol. 11(4), 38–40 (2011)
5.
go back to reference Shao, K., Xing, M., Zhong, Y., et al.: The machine recognition for population feature of wheat images based on BP neural network. J. Integr. Agric. 1(8), 885–889 (2002) Shao, K., Xing, M., Zhong, Y., et al.: The machine recognition for population feature of wheat images based on BP neural network. J. Integr. Agric. 1(8), 885–889 (2002)
6.
go back to reference Ahmad, I.S., Reid, J.F.: Evaluation of color representations for maize images. J. Agric. Eng. Res. 63, 185–195 (1996)CrossRef Ahmad, I.S., Reid, J.F.: Evaluation of color representations for maize images. J. Agric. Eng. Res. 63, 185–195 (1996)CrossRef
7.
go back to reference Mao, H.P., Wu, X.M., Li, P.P.: Recognition of tomato nutrient deficiency using aritificial neural network based on computer vision. Trans. CSAE. 21(8), 106–109 (2005) Mao, H.P., Wu, X.M., Li, P.P.: Recognition of tomato nutrient deficiency using aritificial neural network based on computer vision. Trans. CSAE. 21(8), 106–109 (2005)
8.
go back to reference Li, B.G., Huang, F.: Measurement of plant leaf area. J. Shandong Univ. Technol. (Sci & Tech). 18(4), 94–96 (2004) Li, B.G., Huang, F.: Measurement of plant leaf area. J. Shandong Univ. Technol. (Sci & Tech). 18(4), 94–96 (2004)
9.
go back to reference Wang J.Q.: The theory of BP neural network and its application in agricultural mechanization. Shenyang Agric. Univ. 05-06 (2011) Wang J.Q.: The theory of BP neural network and its application in agricultural mechanization. Shenyang Agric. Univ. 05-06 (2011)
Metadata
Title
Research on wheat leaf water content based on machine vision
Authors
Xiao-Ling Ding
Li-Xin Zhao
Tian-Tian Zhou
Yi-Bin Li
Xi-Mei Huang
Ya-Li Zhao
Publication date
14-03-2018
Publisher
Springer US
Published in
Cluster Computing / Issue Special Issue 4/2019
Print ISSN: 1386-7857
Electronic ISSN: 1573-7543
DOI
https://doi.org/10.1007/s10586-018-2112-4

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