Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification

Farming systems form the backbone of the world food system. The food system, in turn, is a critical component in sustainable development, with direct linkages to the social, economic, and ecological systems. Weeds are one of the major factors responsible for the crop yield gap in the different regio...

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Main Authors: Tavseef Mairaj Shah, Durga Prasad Babu Nasika, Ralf Otterpohl
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Agriculture
Subjects:
Online Access:https://www.mdpi.com/2077-0472/11/3/222
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spelling doaj-aec2f6f024524b3b88bb2e9f8108af5f2021-04-02T20:48:45ZengMDPI AGAgriculture2077-04722021-03-011122222210.3390/agriculture11030222Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image IdentificationTavseef Mairaj Shah0Durga Prasad Babu Nasika1Ralf Otterpohl2Rural Revival and Restoration Egineering (RUVIVAL), Institute of Wastewater Management and Water Protection, Hamburg University of Technology, Eissendorfer Strasse 42, 21073 Hamburg, GermanyRural Revival and Restoration Egineering (RUVIVAL), Institute of Wastewater Management and Water Protection, Hamburg University of Technology, Eissendorfer Strasse 42, 21073 Hamburg, GermanyRural Revival and Restoration Egineering (RUVIVAL), Institute of Wastewater Management and Water Protection, Hamburg University of Technology, Eissendorfer Strasse 42, 21073 Hamburg, GermanyFarming systems form the backbone of the world food system. The food system, in turn, is a critical component in sustainable development, with direct linkages to the social, economic, and ecological systems. Weeds are one of the major factors responsible for the crop yield gap in the different regions of the world. In this work, a plant and weed identifier tool was conceptualized, developed, and trained based on artificial deep neural networks to be used for the purpose of weeding the inter-row space in crop fields. A high-level design of the weeding robot is conceptualized and proposed as a solution to the problem of weed infestation in farming systems. The implementation process includes data collection, data pre-processing, training and optimizing a neural network model. A selective pre-trained neural network model was considered for implementing the task of plant and weed identification. The faster R-CNN (Region based Convolution Neural Network) method achieved an overall mean Average Precision (mAP) of around 31% while considering the learning rate hyperparameter of 0.0002. In the plant and weed prediction tests, prediction values in the range of 88–98% were observed in comparison to the ground truth. While as on a completely unknown dataset of plants and weeds, predictions were observed in the range of 67–95% for plants, and 84% to 99% in the case of weeds. In addition to that, a simple yet unique stem estimation technique for the identified weeds based on bounding box localization of the object inside the image frame is proposed.https://www.mdpi.com/2077-0472/11/3/222deep learningartificial neural networksimage identificationagroecologyweedsyield gap
collection DOAJ
language English
format Article
sources DOAJ
author Tavseef Mairaj Shah
Durga Prasad Babu Nasika
Ralf Otterpohl
spellingShingle Tavseef Mairaj Shah
Durga Prasad Babu Nasika
Ralf Otterpohl
Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
Agriculture
deep learning
artificial neural networks
image identification
agroecology
weeds
yield gap
author_facet Tavseef Mairaj Shah
Durga Prasad Babu Nasika
Ralf Otterpohl
author_sort Tavseef Mairaj Shah
title Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
title_short Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
title_full Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
title_fullStr Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
title_full_unstemmed Plant and Weed Identifier Robot as an Agroecological Tool Using Artificial Neural Networks for Image Identification
title_sort plant and weed identifier robot as an agroecological tool using artificial neural networks for image identification
publisher MDPI AG
series Agriculture
issn 2077-0472
publishDate 2021-03-01
description Farming systems form the backbone of the world food system. The food system, in turn, is a critical component in sustainable development, with direct linkages to the social, economic, and ecological systems. Weeds are one of the major factors responsible for the crop yield gap in the different regions of the world. In this work, a plant and weed identifier tool was conceptualized, developed, and trained based on artificial deep neural networks to be used for the purpose of weeding the inter-row space in crop fields. A high-level design of the weeding robot is conceptualized and proposed as a solution to the problem of weed infestation in farming systems. The implementation process includes data collection, data pre-processing, training and optimizing a neural network model. A selective pre-trained neural network model was considered for implementing the task of plant and weed identification. The faster R-CNN (Region based Convolution Neural Network) method achieved an overall mean Average Precision (mAP) of around 31% while considering the learning rate hyperparameter of 0.0002. In the plant and weed prediction tests, prediction values in the range of 88–98% were observed in comparison to the ground truth. While as on a completely unknown dataset of plants and weeds, predictions were observed in the range of 67–95% for plants, and 84% to 99% in the case of weeds. In addition to that, a simple yet unique stem estimation technique for the identified weeds based on bounding box localization of the object inside the image frame is proposed.
topic deep learning
artificial neural networks
image identification
agroecology
weeds
yield gap
url https://www.mdpi.com/2077-0472/11/3/222
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