2023
DOI: 10.3389/frai.2023.1227950
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mPD-APP: a mobile-enabled plant diseases diagnosis application using convolutional neural network toward the attainment of a food secure world

Emmanuel Oluwatobi Asani,
Yomi Phineas Osadeyi,
Adekanmi A. Adegun
et al.

Abstract: The devastating effect of plant disease infestation on crop production poses a significant threat to the attainment of the United Nations' Sustainable Development Goal 2 (SDG2) of food security, especially in Sub-Saharan Africa. This has been further exacerbated by the lack of effective and accessible plant disease detection technologies. Farmers' inability to quickly and accurately diagnose plant diseases leads to crop destruction and reduced productivity. The diverse range of existing plant diseases further … Show more

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Cited by 4 publications
(3 citation statements)
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“…Pearson correlation coefficient between the digital IMF content and the IMF content measured by NIRS reached 0.74, proving the feasibility of using Pork IMF App to measure IMF content. Recently, a few methodologies based on mobile App have been successfully used to perform high‐throughput phenotyping in plants (Asani et al., 2023; Müller‐Linow et al., 2019; Röckel et al., 2022). Our research presents a case study of using a mobile device for animal phenotyping.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Pearson correlation coefficient between the digital IMF content and the IMF content measured by NIRS reached 0.74, proving the feasibility of using Pork IMF App to measure IMF content. Recently, a few methodologies based on mobile App have been successfully used to perform high‐throughput phenotyping in plants (Asani et al., 2023; Müller‐Linow et al., 2019; Röckel et al., 2022). Our research presents a case study of using a mobile device for animal phenotyping.…”
Section: Discussionmentioning
confidence: 99%
“…Mitoregulin encoded by MTLN is a conserved mitochondrial peptide that has been demonstrated to control fatty acid oxidation and regulate lipolysis in adipocytes. Accumulation of triglycerides and fat was observed in MTLN knockout mice (Averina et al, 2023;Friesen et al, 2020). NDUFAB1, a subunit of NADH dehydrogenase, is necessary for maintaining systemic glucose homeostasis.…”
Section: Discussionmentioning
confidence: 99%
“…Over the years plant disease detection in sub-Saharan Africa has been classically and traditionally carried out by on the spot assessment of visible plant parts due in large part to limited or non-existent access to user-friendly advanced technologies (Asani et al, 2023). Internet of things refers to collective network of connected devices and technology that facilitates communication between devices and the cloud as well as between devices themselves (Amazon, 2023).…”
Section: Internet Of Things (Iot) and Cell Phone Image-based Plant Di...mentioning
confidence: 99%