Date of Publication
12-2022
Document Type
Bachelor's Thesis
Degree Name
Bachelor of Science in Electronics Engineering
Subject Categories
Electrical and Computer Engineering
College
Gokongwei College of Engineering
Department/Unit
Electronics And Communications Engg
Thesis Advisor
Jose Martin Z. Maningo
Defense Panel Chair
Leonard U. Ambata
Defense Panel Member
Melvin K. Cabatuan
Edwin Sybingco
Abstract/Summary
Human detection using deep learning is often done with colored images rather than thermal images. Lacking integration between existing studies regarding thermal datasets and deep learning networks for human detection can be bridged with a curated dataset and a modified network for the said purpose. With this, the research presents a new dataset and an accompanying network for human detection of elevated thermal images. The created dataset consists of 7101 thermal images of humans and takes into account different parameters such as height, light conditions, number of people, etc. The modified networks were created using either the layer removal method or the replacement of different parts of the network and their algorithms. The proponents trained and tested the created networks named TrimmedYOLO and YOLO-ReT-Mish on the created dataset and were able to achieve mean average precisions as high as 95.66% and 94.45% on Private-Private tests for TrimmedYOLO and Transformed Combined-Private tests for YOLO-ReT-Mish respectively while being more lightweight when compared to the original YOLOv4.
Abstract Format
html
Language
English
Keywords
Infrared imaging
Recommended Citation
Amoroso, M. C., Atienza, K. C., Ladera, R. T., & Menodiado, N. M. (2022). Human presence detection based on gathered thermal datasets through deep learning. Retrieved from https://animorepository.dlsu.edu.ph/etdb_ece/19
Upload Full Text
wf_yes
Embargo Period
12-9-2022