info:eu-repo/semantics/article
People counting using visible and infrared images
Fecha
2021-08Registro en:
Biagini, Martín; Filipic, Joaquín; Mas, Ignacio Agustin; Pose, Claudio Daniel; Giribet, Juan Ignacio; et al.; People counting using visible and infrared images; Elsevier Science; Neurocomputing; 450; 25; 8-2021; 25-32
0925-2312
CONICET Digital
CONICET
Autor
Biagini, Martín
Filipic, Joaquín
Mas, Ignacio Agustin
Pose, Claudio Daniel
Giribet, Juan Ignacio
Parisi, Daniel Ricardo
Resumen
We propose the use of convolutional neural networks (CNN) for counting and positioning people given aerial shots of visible and infrared images. Our data set is entirely made of semi-artificial images created from real photographs taken from a drone using a dual FLIR camera. We compare the performance between the CNNs using 3 (RGB) and 4 (RGB + IR) channels, both under different lighting conditions. The 4-channel network responds better in all situations, particularly in cases of poor visible illumination that can be found in night scenarios. The proposed methodology could be applied to real situations when an extensive data bank of 4-channel images is available.