Neural Network Technologies for Detection and Classification of Objects
S. M.
Borzov
1 *
E. S.
Nezhevenko
1 **
1Institute of Automation and Electrometry, Siberian Branch, Russian Academy of Sciences,Novosibirsk, 630090
Russia
Correspondence to:
*e-mail: borzov@iae.nsk.su
Correspondence to:
**e-mail: nejevenko@iae.nsk.su
January 27, 2023
Abstract—We present a review of the basic ideas used in solving the problems of detecting and classifying objects by their images using neural network technologies. The key publications on the most popular ways to improve classification accuracy are considered. It is shown that in the last decade, neural network methods for detecting objects have achieved significant success by using convolution technologies and applying deep learning with large databases. The main shortcomings, limitations and possible directions for the improvement of existing approaches are analyzed.
Keywords:
neural network technologiesimage processingobject detection and classificationconvolutional neural networksdeep learninghybrid techniques
DOI: 10.3103/S8756699023030032