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      Dataset of annotated food crops and weed images for robotic computer vision control

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          Abstract

          Weed management technologies that can identify weeds and distinguish them from crops are in need of artificial intelligence solutions based on a computer vision approach, to enable the development of precisely targeted and autonomous robotic weed management systems. A prerequisite of such systems is to create robust and reliable object detection that can unambiguously distinguish weed from food crops. One of the essential steps towards precision agriculture is using annotated images to train convolutional neural networks to distinguish weed from food crops, which can be later followed using mechanical weed removal or selected spraying of herbicides. In this data paper, we propose an open-access dataset with manually annotated images for weed detection. The dataset is composed of 1118 images in which 6 food crops and 8 weed species are identified, altogether 7853 annotations were made in total. Three RGB digital cameras were used for image capturing: Intel RealSense D435, Canon EOS 800D, and Sony W800. The images were taken on food crops and weeds grown in controlled environment and field conditions at different growth stages

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          Most cited references6

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          Machine Learning in Agriculture: A Review

          Machine learning has emerged with big data technologies and high-performance computing to create new opportunities for data intensive science in the multi-disciplinary agri-technologies domain. In this paper, we present a comprehensive review of research dedicated to applications of machine learning in agricultural production systems. The works analyzed were categorized in (a) crop management, including applications on yield prediction, disease detection, weed detection crop quality, and species recognition; (b) livestock management, including applications on animal welfare and livestock production; (c) water management; and (d) soil management. The filtering and classification of the presented articles demonstrate how agriculture will benefit from machine learning technologies. By applying machine learning to sensor data, farm management systems are evolving into real time artificial intelligence enabled programs that provide rich recommendations and insights for farmer decision support and action.
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            Deep learning for real-time fruit detection and orchard fruit load estimation: benchmarking of ‘MangoYOLO’

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              Convolutional Neural Networks for the Automatic Identification of Plant Diseases

              Deep learning techniques, and in particular Convolutional Neural Networks (CNNs), have led to significant progress in image processing. Since 2016, many applications for the automatic identification of crop diseases have been developed. These applications could serve as a basis for the development of expertise assistance or automatic screening tools. Such tools could contribute to more sustainable agricultural practices and greater food production security. To assess the potential of these networks for such applications, we survey 19 studies that relied on CNNs to automatically identify crop diseases. We describe their profiles, their main implementation aspects and their performance. Our survey allows us to identify the major issues and shortcomings of works in this research area. We also provide guidelines to improve the use of CNNs in operational contexts as well as some directions for future research.
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                Author and article information

                Contributors
                Journal
                Data Brief
                Data Brief
                Data in Brief
                Elsevier
                2352-3409
                11 June 2020
                August 2020
                11 June 2020
                : 31
                : 105833
                Affiliations
                [a ]Institute of Electronics and Computer Science, Dzērbenes str.14, Riga LV-1006, Latvia
                [b ]Institute for Plant Protection Research `Agrihorts’, Latvia University of Life Sciences and Technologies, P. Lejiņa str. 2, LV-3004 Jelgava, Latvia
                Author notes
                [* ]Corresponding author. sudars@ 123456edi.lv
                Article
                S2352-3409(20)30727-7 105833
                10.1016/j.dib.2020.105833
                7305380
                cd8a07f6-6ff6-43e5-b6ee-0d705d56a3f9
                © 2020 The Author(s)

                This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

                History
                : 1 April 2020
                : 3 June 2020
                : 3 June 2020
                Categories
                Agricultural and Biological Science

                computer vision,object detection,image annotation,precision agriculture,crop growth and development

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