RECOGNITION OF EMOTIONS BY FACIAL GEOMETRY USING A CAPSULE NEURAL NETWORK

Journal Title: International Journal of Civil Engineering and Technology - Year 2019, Vol 10, Issue 3

Abstract

The article is devoted to the problem of improving the efficiency of neural network means of emotion recognition by the geometry of the human face. It is shown that one of the most significant drawbacks of modern neural network means of emotion recognition, which are used in General-purpose information systems, is the lack of recognition accuracy under the influence of characteristic interference. It is proposed to improve the accuracy of recognition through the use of capsule neural network model, which has increased adaptability to the analysis of noisy images. As a result of the research, a neural network model of the CapsNet type was developed, designed to recognize basic emotions taking into account such interference as face rotation. It is shown experimentally that in the analysis of undistorted images CapsNet slightly exceeds the accuracy of the classical convolutional neural network type LaNet, which is approximately equal to its resource intensity. The accuracy of CapsNet recognition of undistorted images is somewhat inferior to modern types of convolution networks, which have a much higher resource consumption compared to it. When detecting emotions on rotated images, the accuracy of CapsNet is comparable with the accuracy of modern types of convolution networks and significantly exceeds the accuracy of LaNet. Prospects for further research in the field of neural network recognition of emotions on the geometry of the face can be associated with the improvement of architectural solutions of the capsule neural network in the direction of reducing the number of training iterations while ensuring acceptable recognition accuracy.

Authors and Affiliations

LIUDMYLA TEREIKOVSKA, IHOR TEREIKOVSKYI, SHYNAR MUSSIRALIYEVA, GULMARAL AKHMED, AIMAN BEKETOVA and AIZHAN SAMBETBAYEVA

Keywords

Related Articles

PECULIARITIES OF EXPERIMENTAL ANIMALS’ BEHAVIORAL REACTIONS UNDER THE CONDITIONS OF LONG-TERM ORAL ADMISSION OF INDUSTRIAL URANIUM ORE DUST TO THE BODY

The dynamics of animals’ higher nervous activity disturbances and bioaccumulation of uranium in tissues under the conditions of prolonged oral admission of industrial uranium ore dust (UOD) at doses of 25 and 50 maximu...

THE DAMASCENE ARCHITECTURE OF THE POST-OTTOMAN PERIOD AND THE INFLUENCE OF EUROPEAN CULTURE (BAROQUE STYLE) ON THE DAMASCENE TRADITIONAL HOUSE (POST-NINETEENTH CENTURY - THE BEGINNING OF THE TWENTIETH CENTURY)

In the subsequent period of the Ottoman Empire between both the nineteenth and twentieth century's, Syria undertook substantial changes, which led to the emergence and development of European forms in art and architect...

STUDY OF SELF-HEALING BIO-CONCRETE

In recent years, along with the continuous improvement of existing materials, contributing to a significant technical and economic effect due to a unique combination of properties, there have been trends in the creatio...

ASSESSMENT OF THE OPERATOR'S ABILITY TO PRODUCE QUALITY DRINKING WATER

Refill drinking water depot (DAMIU) is a business that aims to middle and lower class because of its affordable price. The laboratory analysis of refill drinking water quality showed that the total coliform had exceede...

THE EFFECT OF TOURISM SPACE ON REGIONAL DEVELOPMENT IN KAWASAN PANATAPAN DANAU TOBA SIMALUNGUN DISTRICT

This study aims to analyze the influence of open space tourism on regional development. This research was conducted in several Panatapan spots as open-air tourist spaces in Simalungun, North Sumatra, Indonesia with a t...

Download PDF file
  • EP ID EP46644
  • DOI -
  • Views 180
  • Downloads 0

How To Cite

LIUDMYLA TEREIKOVSKA, IHOR TEREIKOVSKYI, SHYNAR MUSSIRALIYEVA, GULMARAL AKHMED, AIMAN BEKETOVA and AIZHAN SAMBETBAYEVA (2019). RECOGNITION OF EMOTIONS BY FACIAL GEOMETRY USING A CAPSULE NEURAL NETWORK. International Journal of Civil Engineering and Technology, 10(3), -. https://europub.co.uk/articles/-A-46644