A Novel Deep Learning Model for Detection of Severity Level of the Disease in Citrus Fruits
- Journal
- Electronics
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Fields of papers citing A Novel Deep Learning Model for Detection of Severity Level of the Disease in Citrus Fruits
This network shows the impact of A Novel Deep Learning Model for Detection of Severity Level of the Disease in Citrus Fruits. Nodes represent research fields, and links connect fields that are likely to share authors. Colored nodes show fields that tend to cite the A Novel Deep Learning Model for Detection of Severity Level of the Disease in Citrus Fruits.
About A Novel Deep Learning Model for Detection of Severity Level of the Disease in Citrus Fruits
This paper, published in 2022, received 194 indexed citations . Written by Poonam Dhiman, Vinay Kukreja, Poongodi Manoharan, Amandeep Kaur, M. M. Kamruzzaman, Imed Ben Dhaou and Celestine Iwendi covering the research area of Plant Science and Cell Biology. It is primarily cited by scholars working on Plant Science (85 citations), Analytical Chemistry (32 citations) and Computer Networks and Communications (31 citations). Published in Electronics.
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This paper is also available at doi.org/10.3390/electronics11030495.