Аннотации:
The use of deep learning algorithms for the classification of crop diseases is 
one of the promising areas in agricultural technology. This is due to the need 
for rapid and accurate detection of plant diseases, which allows timely 
measures to be taken to treat them and prevent their spread. One of them is 
to increase productivity and maintain land quality through the timely 
detection of diseases and pests in agriculture and their elimination. 
Traditional classification methods in machine learning and algorithms in 
deep learning were compared to note the high accuracy in detecting pests 
and crop diseases. The advantages and disadvantages of each model 
considered during training were taken into account, and the Inception V3 
algorithm was incorporated into the application. They can monitor the 
condition of crops on a daily basis with the help of new technologyapplications on gadgets. Aerial photographs used by research institutes and 
agricultural grain centers do not show the changes that occur in agricultural 
grains, that is, diseases and pests. Therefore, the method proposed in this 
paper determines the types of diseases and pests of cereals through a mobile 
application and suggests ways to deal with them.