Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network

Herbicide use is rising globally to enhance food production, causing harm to environment and the ecosystem. Precision agriculture suggests variable-rate herbicide application based on weed densities to mitigate adverse effects of herbicides. Accurate weed density estimation using advanced computer v...

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Bibliographic Details
Main Authors: Muhammad Hamza Asad, Abdul Bais
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2020-12-01
Series:Information Processing in Agriculture
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2214317319302355
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spelling doaj-419e41e6f8044a5faecc729368f41fd92021-04-02T16:36:33ZengKeAi Communications Co., Ltd.Information Processing in Agriculture2214-31732020-12-0174535545Weed detection in canola fields using maximum likelihood classification and deep convolutional neural networkMuhammad Hamza Asad0Abdul Bais1Electronic Systems Engineering, Faculty of Engineering and Applied Science, University of Regina, Saskatchewan, CanadaCorresponding author.; Electronic Systems Engineering, Faculty of Engineering and Applied Science, University of Regina, Saskatchewan, CanadaHerbicide use is rising globally to enhance food production, causing harm to environment and the ecosystem. Precision agriculture suggests variable-rate herbicide application based on weed densities to mitigate adverse effects of herbicides. Accurate weed density estimation using advanced computer vision techniques like deep learning requires large labelled agriculture data. Labelling large agriculture data at pixel level is a time-consuming and tedious job. In this paper, a methodology is developed to accelerate manual labelling of pixels using a two-step procedure. In the first step, the background and foreground are segmented using maximum likelihood classification, and in the second step, the weed pixels are manually labelled. Such labelled data is used to train semantic segmentation models, which classify crop and background pixels as one class, and all other vegetation as the second class. This paper evaluates the proposed methodology on high-resolution colour images of canola fields and makes performance comparison of deep learning meta-architectures like SegNet and UNET and encoder blocks like VGG16 and ResNet-50. ResNet-50 based SegNet model has shown the best results with mean intersection over union value of 0.8288 and frequency weighted intersection over union value of 0.9869.http://www.sciencedirect.com/science/article/pii/S2214317319302355Weed detectionSemantic segmentationVariable rate herbicideMaximum likelihood classification
collection DOAJ
language English
format Article
sources DOAJ
author Muhammad Hamza Asad
Abdul Bais
spellingShingle Muhammad Hamza Asad
Abdul Bais
Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
Information Processing in Agriculture
Weed detection
Semantic segmentation
Variable rate herbicide
Maximum likelihood classification
author_facet Muhammad Hamza Asad
Abdul Bais
author_sort Muhammad Hamza Asad
title Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
title_short Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
title_full Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
title_fullStr Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
title_full_unstemmed Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
title_sort weed detection in canola fields using maximum likelihood classification and deep convolutional neural network
publisher KeAi Communications Co., Ltd.
series Information Processing in Agriculture
issn 2214-3173
publishDate 2020-12-01
description Herbicide use is rising globally to enhance food production, causing harm to environment and the ecosystem. Precision agriculture suggests variable-rate herbicide application based on weed densities to mitigate adverse effects of herbicides. Accurate weed density estimation using advanced computer vision techniques like deep learning requires large labelled agriculture data. Labelling large agriculture data at pixel level is a time-consuming and tedious job. In this paper, a methodology is developed to accelerate manual labelling of pixels using a two-step procedure. In the first step, the background and foreground are segmented using maximum likelihood classification, and in the second step, the weed pixels are manually labelled. Such labelled data is used to train semantic segmentation models, which classify crop and background pixels as one class, and all other vegetation as the second class. This paper evaluates the proposed methodology on high-resolution colour images of canola fields and makes performance comparison of deep learning meta-architectures like SegNet and UNET and encoder blocks like VGG16 and ResNet-50. ResNet-50 based SegNet model has shown the best results with mean intersection over union value of 0.8288 and frequency weighted intersection over union value of 0.9869.
topic Weed detection
Semantic segmentation
Variable rate herbicide
Maximum likelihood classification
url http://www.sciencedirect.com/science/article/pii/S2214317319302355
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AT abdulbais weeddetectionincanolafieldsusingmaximumlikelihoodclassificationanddeepconvolutionalneuralnetwork
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