Improvement of CNN-Based Model for Object Classification in Aero Photographs
Van Trong Nguyen, Pashchenko Fedor Fedorovich, Bui Truong An, Duc Tiep Le
15m
A review of methods for solving computer vision problems by classes proved
the advantages of the neural network method over all those proposed earlier.
The principle of operation of neurons in an artificial network makes it possible to
identify its activity, which is determined by its parameters for classifying objects
in aerial photographs. The article presented a well-founded mathematical model
and the main technologies of the convolutional neural network model based on
the dropout technique, which is widely used in preventing network retraining.
This model helps to increase the invariance to the scale of the input images. At
the output of the convolutional layers of the network, several layers of the neural
network are additionally installed that perform the work of the classifier.