Comparing Artificial Intelligence Classification Models to Improve an Image Comparison System with User Inputs

Author:

Jardim SandraORCID,Valente JorgeORCID,Almeida ArturORCID,Mora CarlosORCID

Abstract

AbstractData science techniques have increased in popularity over the last decades due to its numerous applications when handling complex data, but also due to its high precision. In particular, Machine (ML) and Deep Learning (DL) systems have been explored in many unique applications, owing to their high precision, flexible customization, and strong adaptability. Our research focuses on a previously described image detection system and analyses the application of a user feedback system to improve the accuracy of the comparison formula. Due to the non-traditional requirements of our system, we intended to assess the performance of multiple AI techniques and find the most suitable model to analyze our data and implement possible improvements. The study focuses on a set of test data, using the test results collected for one particular image cluster. We researched some of the previous solutions on similar topics and compared multiple ML methods to find the most suitable model for our results. Artificial Neural networks and binary decision trees were among the better performing models tested. Reinforcement and Deep Learning methods could be the focus of future studies, once more varied data are collected, with bigger comparison weight diversity.

Funder

European Regional Development Fund

Instituto Politécnico de Tomar

Publisher

Springer Science and Business Media LLC

Subject

Computer Science Applications,Computer Networks and Communications,Computer Graphics and Computer-Aided Design,Computational Theory and Mathematics,Artificial Intelligence,General Computer Science

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