Affiliation:
1. Volgograd State Agricultural University
2. Volgograd State Technical University
Abstract
Objective. Monitoring and determining the state of crops in agricultural production requires the use and improvement of neural network methods of artificial intelligence.The aim of the study is to create a mathematical model of the learning process of the DeepLabV3 neural network for intelligent analysis and segmentation of agricultural fields.Method. Based on the newly formed RGB database of images of agricultural fields, marked up into four classes, a neural network of the DeepLabV3 architecture was developed and trained. Approximations of the learning curve by the modified Johnson function are obtained by the methods of least squares and least modules.Result. A statistical assessment of the quality of training and approximation of neural networks to the DeepLabV3 architecture in combination with ResNet 50 was carried out. The constructed DNN family based on DeepLabV3 with ResNet50 showed the efficiency of recognition and sufficient speed in determining the state of crops.Conclusions. Approximation of the neural network learning diagram to the DeepLabV3 architecture, using a modified Johnson function, allows us to estimate the value of the “saturation” of the simulated dependence and predict the maximum value of the neural network metric without taking into account its possible retraining.
Publisher
FSB Educational Establishment of Higher Education Daghestan State Technical University
Subject
Polymers and Plastics,General Environmental Science
Reference29 articles.
1. Saiz-Rubio V. From Smart Farming towards Agriculture 5.0: A Review on Crop Data Management. https://www.mdpi.com/2073-4395/10/2/207/htm.
2. A Review on Deep Learning Techniques Applied to Semantic Segmentation / Garcia-Garcia Alberto, OrtsEscolano Sergio, Oprea Sergiu, Villena-Martinez Victor, Garcia-Rodriguez Jose. https://doi.org/10.48550/arXiv.1704.06857.
3. Badrinarayanan V., Kendall A., Cipolla R. SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation. http://docs.cntd.ru/document/902361843.
4. Bin Xu et al., “Remote sensing monitoring on dynamic status of grassland productivity and animal loading balance in Northern China,” IGARSS 2004. 2004 IEEE International Geoscience and Remote Sensing Symposium, Anchorage, AK, USA, 2004, pp. 2306-2309 vol.4, doi: 10.1109/IGARSS.2004.1369747.
5. Pelletier, C.; Valero, S.; Inglada, J.; Champion, N.; Dedieu, G. Assessing the robustness of Random Forests to map land cover with high resolution satellite image time series over large areas. Remote Sens. Environ. 2016;187:156–168.