An Improvement of Yield Production Rate for Crops by Predicting Disease Rate Using Intelligent Decision Systems

Autor: null Usha Rani M., null Saravana Selvam N., null Jegatha Deborah L.
Rok vydání: 2022
Předmět:
Zdroj: International Journal of Software Science and Computational Intelligence. 14:1-22
ISSN: 1942-9037
1942-9045
DOI: 10.4018/ijssci.291714
Popis: Agriculture is the country's mainstay. Plant diseases reduce production and thus product prices. Clearly, prices of edible and non-edible goods rose dramatically after the outbreak. We can save plants and correct pricing inconsistencies using automated disease detection. Using light detection and range (LIDAR) to identify plant diseases lets farmers handle dense volumes with minimal human intervention. To address the limitations of passive systems like climate, light variations, viewing angle, and canopy architecture, LIDAR sensors are used. The DSRC was used to receive an alert signal from the cloud server and convey it to farmers in real-time via cluster heads. For each concept, we evaluate its strengths and weaknesses, as well as the potential for future research. This research work aims to improve the way deep neural networks identify plant diseases. Google Net, Inceptionv3, Res Net 50, and Improved Vgg19 are evaluated before Biased CNN. Finally, our proposed Biased CNN (B-CNN) methodology boosted farmers' production by 93% per area.
Databáze: OpenAIRE