INFRARED THERMOGRAPHY IMAGE BASED CLASSIFICATION OF SOIL DIRT AND FABRIC
Author:
DENİZ Mehmet1ORCID, SEÇKİN MineORCID, GENCER Çetin2ORCID, KOÇ Durmuş3ORCID
Affiliation:
1. USAK UNIVERSITY 2. FIRAT UNIVERSITY 3. Isparta Uygulamalı Bilimler Üniversitesi
Abstract
Soil is the substance most likely to meet nature and dirt people, vehicles, and clothing, especially in outdoor. Both source material and soil samples can be damaged during industrial and criminal investigations. Therefore, there is a need for detection, examination, and identification systems that can minimize contact with forensic evidence and provide accurate results with fewer samples. The study aims to determine the type of soil using a low-cost, easily accessible, and highly sensitive system that can be used easily without interference from the surface properties of the textile or destruction of the structure of the dirt. The working sites and areas of samples to be collected were determined according to the purpose of the study. In this context, samples of the most common soil types were taken from the lands in the Aegean Region of Turkey. Different types of substances were applied and dirtying on the collected samples. The newly formed samples were heated with a heating surface and allowed to cool. During this process, a thermal video was recorded, and feature extraction was performed. 165 samples were obtained from 55 tests. As a result, it is seen that the proposed method can detect samples with 97% accuracy.
Publisher
International Journal of 3D Printing Technologies and Digital Industry
Subject
Marketing,Economics and Econometrics,General Materials Science,General Chemical Engineering
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