首页|Using EfficientNet and transfer learning for image-based diagnosis of nutrient deficiencies

Using EfficientNet and transfer learning for image-based diagnosis of nutrient deficiencies

扫码查看
? 2022 Elsevier B.V.Early diagnosis of nutrient deficiencies can play a major role in avoiding significant agricultural losses and increasing the final yield while preserving the environment through efficient fertilizer usage. In this work, we study how well nutrient deficiency symptoms can be recognized in RGB images by using deep neural networks and transfer learning. Two different datasets, presenting real-world conditions, were used for this purpose. The first one was the Deep Nutrient Deficiency for Sugar Beet (DND-SB) dataset, which contains 5648 images of sugar beets presenting nitrogen (N), phosphorous (P), and potassium (K) deficiencies, the omission of liming (Ca) and full fertilization. The second one, collected on the field for this research and currently publicly available, was a dataset combining different orange tree images with iron (Fe), potasssium (K), magnesium (Mg), and manganese (Mn) deficiencies. Image classification via fine-tuning with EfficientNetB4, whose original weights came from a noisy student training on ImageNet, obtained the best performances on both datasets with 98.65% and 98.52% Top-1 accuracies. Additionally, the Grad-CAM++ analysis showed that the models were performing an accurate analysis of the most relevant part inside the images. Finally, the use of agricultural transfer learning did not report improvement in the performances.

Deep learningEfficientNetNutrient deficiencyPrecision agricultureTransfer learning

Espejo-Garcia B.、Malounas I.、Mylonas N.、Kasimati A.、Fountas S.

展开 >

Agricultural University of Athens

2022

Computers and Electronics in Agriculture

Computers and Electronics in Agriculture

EISCI
ISSN:0168-1699
年,卷(期):2022.196
  • 4
  • 45