System Analysis of the Sizes of the Fragment of Images of Aerial Photography of Agricultural Lands for the Search of Anomalies in these by Machine Learning Methods

Authors

  • V. B. Mokin Vinnytsia National Technical University
  • D. M. Hruzman Company «Nestlogic», Tel Aviv, Israel
  • S. O. Dovhopoliuk Vinnytsia National Technical University
  • A. O. Lototskyi Vinnytsia National Technical University

DOI:

https://doi.org/10.31649/1997-9266-2019-144-3-75-85

Keywords:

aerial photography, image analysis, autoencoder, deep training, machine learning, agricultural land, detection of anomalies, clusterization

Abstract

Big problems for agricultural lands (ACL) are plant diseases, pests, weeds and other anomalies. The rapid growth of such problem areas is of great harm if they are not found in time, localized and neutralized. With a large area and, often, inaccessibility to individual areas of the field, aerial photography from drones with its subsequent processing by artificial intelligence methods, machine learning, first of all — deep learning, is used to eliminate such problems. Each image is divided into small fragments and analyzed, but the result of the analysis essentially depends on the choice of the size of such fragments. The purpose of the study is to develop an integrated systems approach to analyzing and calculating the smallest fragment of aerial photography of an ACL, which is optimal for many criteria, to search for anomalies in them by the methods of machine deep learning. There has been carried out a review of known approaches to solving the problem of finding such anomalies and the information technologies have been proposed which should be used at the preprocessing, machine deep learning stages and the typical problems which should be eliminated during this, taking into account the specifics of the subject area. The main criteria that should be taken into account to solve the problem are highlighted: the duration of the calculations, the accuracy (minimum error) of the model training, the proximity of the average area of clusters to the given one, subject to a number of restrictions. An expression of the integral criterion for taking into account these criteria and approaches to the choice of their weights are proposed. An algorithm has been developed for applying the proposed approaches and techniques for applying the known methods of machine depth learning and clustering. A real example of the application of this algorithm is given and its efficiency is demonstrated for cases where the most significant (with weighing 0,5) criterion is the duration of the calculations and when the proximity of the average area of clusters to the given one. The proposed set of approaches and techniques for systematic analysis of the size of a fragment of an aerial photography image of the ACL will improve the accuracy and speed of searching for anomalies in them by machine deep learning methods and, in general, will allow for more efficient and timely detection of various plant diseases, weeds, pests, and the like.

Author Biographies

V. B. Mokin, Vinnytsia National Technical University

Dr. Sc. (Eng.), Professor, Head of the Chair of Systems Analysis, Computer Monitoring and Engineering Graphics

D. M. Hruzman, Company «Nestlogic», Tel Aviv, Israel

Director of the Company

S. O. Dovhopoliuk, Vinnytsia National Technical University

Post-Graduate Student of the Chair of Systems Analysis, Computer Monitoring and Engineering Graphics

A. O. Lototskyi, Vinnytsia National Technical University

Student of the Department of Computer Systems and Automation

Downloads

Abstract views: 461

Published

2019-06-26

How to Cite

[1]
V. B. Mokin, D. M. Hruzman, S. O. Dovhopoliuk, and A. O. Lototskyi, “System Analysis of the Sizes of the Fragment of Images of Aerial Photography of Agricultural Lands for the Search of Anomalies in these by Machine Learning Methods”, Вісник ВПІ, no. 3, pp. 75–85, Jun. 2019.

Issue

Section

Information technologies and computer sciences

Metrics

Downloads

Download data is not yet available.

Most read articles by the same author(s)

<< < 1 2 3 4 5 6 7 > >>