Recognition of Tomato Pests and Disease Physical Features using Digital Imaging Signature Characterization
Date
2019-10Author
Kirongo, Amos Chege
Omieno, Kelvin
Mutua, Stephen
Ogemah, Vitalis
Metadata
Show full item recordAbstract
Plant Stress detection is a vital farming activity for enhanced productivity of crops and food security. Convolution Neural Networks (CNN) focuses on the complex relationships on input and output layers of neural networks for prediction. This task further helps in detecting the behavior of crops in response to biotic and abiotic stressors in reducing food losses. The enhancement of crop productivity for food security depends on accurate stress detection. This paper proposes and investigates the application of deep neural network to the tomato pests and disease stress detection. The images captured over a period of six months are treated as historical dataset to train and detect the plant stresses. The network structure is implemented using Google’s machine learning Tensor-flow platform. A number of activation functions were tested to achieve a better accuracy. The Rectifier linear unit (ReLU) function was tested. The preliminary results show increased accuracy over other activation functions.
URI
https://doi.org/10.2139/SSRN.3457806https://www.researchgate.net/publication/335461421_Plant_Stress_Detection_Accuracy_Using_Deep_Convolution_Neural_Networks
http://r-library.mmust.ac.ke/123456789/1641
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