Crowd detection and estimation for an Earthquake Early Warning System using deep learning
Abstract
Earthquakes, and their cascading threats to economic and social sustainability, are a common problem between China and Chile. In such emergencies, automatic image recognition systems have become critical tools for preventing and reducing civilian casualties. Human crowd detection and estimation are fundamental for automatic recognition under life-threatening natural disasters. However, detecting and estimating crowds in scenes is non-trivial due to occlusion, complex behaviors, posture changes, and camera angles, among other issues. This paper presents the first steps i n developing a n intelligent Earthquake Early Warning System (EEWS) between China and Chile. The EEWS exploits the ability of deep learning architectures to properly model different spatial scales of people and the varying degrees of crowd densities. We propose an autoencoder architecture for crowd detection and estimation because it creates compressed representations for the original crowd input images in its latent space. The proposed architecture considers two cascaded autoencoders. The first performs reconstructive masking of the input images, while the second generates Focal Inverse Distance Transform (FIDT) maps. Thus, the cascaded autoencoders improve the ability of the network to locate people and crowds, thereby generating high-quality crowd maps and more reliable count estimates.
Más información
Título según WOS: | Crowd detection and estimation for an Earthquake Early Warning System using deep learning |
Título según SCOPUS: | ID SCOPUS_ID:85136129218 Not found in local SCOPUS DB |
Título de la Revista: | Proceedings of SPIE - The International Society for Optical Engineering |
Volumen: | 12101 |
Fecha de publicación: | 2022 |
DOI: |
10.1117/12.2622392 |
Notas: | ISI, SCOPUS |