2024, Vol. 5, Issue 2, Part A
A novel XG boost algorithm-based method for disaster victim detection in debris worlds
Author(s): Desu Sharanya, Balijepalli Vaishnavi, Bande Sowmya Sri and Bingi Keshvathi
Abstract: It takes time and danger to conduct search and rescue operations, which includes finding victims in an uncontrolled falling building. Rescue efforts will be almost impossible beyond the first two days, when a victim's prospects of survival are highest. Quicker reaction and identification times mean that patients may be transferred to healthcare facilities more quickly. Robotic vehicles and expert-run Real Victim Diagnosis (HVD) systems powered by real Artificial Intelligence (AI) have the potential to significantly alleviate this issue. In order to potentially detect victims of building collapses, this research introduces a Deep Learning technique that is based on Transfer Learning. It uses techniques for categorization in machine learning. Head, hand, leg, midsection, and bodyless were the five categorization categories used to a deliberately created dataset of human victims.
At first, we removed....
A concise synopsis: Natural and man-made disasters alike may cause widespread devastation on Earth. Some examples of these are massive earthquakes, floods, aircraft accidents, tsunamis, volcanic eruptions, and building collapses. If we want to lessen or prevent the human and monetary toll that disasters take, disaster management is a must. lists the casualties suffered by people all over the world in the last several years as a result of building collapses brought on by earthquake and other natural catastrophes. Preparation, reaction, recovery, and prevention are the four phases of disaster management as outlined by the urgent relief cycle. Helping to identify victims and provide rapid rescue aid, this function is an important part of the disaster management cycle's preparation and reaction phases. Our number one objective is to design a snake-like robot that can locate vulnerable individuals and bring them to safety. Our prior work is expanded upon in this study.
DOI: 10.33545/27075923.2024.v5.i2a.74Pages: 15-19 | Views: 417 | Downloads: 184Download Full Article: Click Here
How to cite this article:
Desu Sharanya, Balijepalli Vaishnavi, Bande Sowmya Sri, Bingi Keshvathi.
A novel XG boost algorithm-based method for disaster victim detection in debris worlds. Int J Circuit Comput Networking 2024;5(2):15-19. DOI:
10.33545/27075923.2024.v5.i2a.74