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  5. Classification of nutrient deficiency in oil palms from leaf images using convolutional neural network
 
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Classification of nutrient deficiency in oil palms from leaf images using convolutional neural network

Journal
IAES International Journal of Artificial Intelligence
ISSN
20894872
Date Issued
2022-12-01
Author(s)
Razali M.I.H.
Hairuddin M.A.
Jahidin A.H.
Mohd Hanafi Mat Som
Universiti Malaysia Perlis
Ali M.S.A.M.
DOI
10.11591/ijai.v11.i4.pp1314-1322
Handle (URI)
https://hdl.handle.net/20.500.14170/6657
Abstract
Oil palm is a perennial plant that thrives well in tropical climate. Apart from humid environment, the plant also requires a wide variety of nutrients. Any deficiencies will directly affect its growth and palm oil production. These can often be detected from the change of leaf colour and texture. Deviations from the standard dark green colour indicates lack of certain nutrients. Therefore, this study proposes convolutional neural network (CNN) to classify nutrient deficiency in oil palms using leaf images. A total of 180 leaf images are acquired using standardized protocol. The samples are evenly distributed into healthy, nitrogen-deficient, and potassium-deficient groups. Residual network (ResNet)-50, visual geometry group-16 (VGG-16), Densely connected network (DenseNet)-201, and AlexNet are trained and tested using the randomized samples. Each attained classification accuracies of 96.7%, 100%, 98.3%, and 100% respectively. Despite yielding similar performance, AlexNet is the more computational efficient architecture with less convolutional layers compared to VGG-16.
Subjects
  • Convolutional neural ...

  • Leaf images

  • Nitrogen deficiency

  • Oil palm

  • Potassium deficiency

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