The outbreak of COVID-19 has resulted in many different policies being adopted across the world to reduce the spread of the virus. These policies include wearing surgical masks, hand hygiene practices, increased social distancing and full country-wide lockdown. Specifically, social distancing involves keeping a certain distance from others and avoiding gathering together in large groups. Automatic crowd density estimation is a technological solution that could help in guaranteeing social distancing by reducing the probability that two persons in a public area come in close proximity to each other while moving around. This paper proposes a novel low complexity RF sensing system for automatic people counting based on low cost UWB transceivers...
In this covid19 pandemic the number of people gathering at public places and festivals are restricte...
Conventional radar-based people counting systems are designed mainly for dense spatial distributions...
We investigate crowd counting for Wi-Fi sensing based on models trained with data from the two-dimen...
The outbreak of COVID-19 has resulted in many different policies being adopted across the world to r...
Wireless devices exist almost everywhere in our daily life. Wireless communications, which is an int...
Device-free RF sensing and monitoring of human/crowd behavior has gained great attraction and consen...
Counting people and things (targets) in a monitored area, also known as crowd-counting, enables seve...
Counting targets (people or things) within a monitored area is an important task in emerging wireles...
Counting targets (people or things) within a monitored area is an important task in emerging wireles...
The rising need of crowd monitoring in public spaces, especially for safety purposes, pushes the res...
MasterThis paper proposes two methods for estimating number and time of arrival information of peopl...
We explore the potential of passive radars based on Wi-Fi signals for crowd monitoring in mass gathe...
In this dissertation, we propose people counting algorithms based on impulse radio-ultra wideband (I...
Radio receivers, besides acting as wireless network nodes participating to the Internet of Things (I...
Abstract—Crowd counting, which count or accurately estimate the number of human beings within a regi...
In this covid19 pandemic the number of people gathering at public places and festivals are restricte...
Conventional radar-based people counting systems are designed mainly for dense spatial distributions...
We investigate crowd counting for Wi-Fi sensing based on models trained with data from the two-dimen...
The outbreak of COVID-19 has resulted in many different policies being adopted across the world to r...
Wireless devices exist almost everywhere in our daily life. Wireless communications, which is an int...
Device-free RF sensing and monitoring of human/crowd behavior has gained great attraction and consen...
Counting people and things (targets) in a monitored area, also known as crowd-counting, enables seve...
Counting targets (people or things) within a monitored area is an important task in emerging wireles...
Counting targets (people or things) within a monitored area is an important task in emerging wireles...
The rising need of crowd monitoring in public spaces, especially for safety purposes, pushes the res...
MasterThis paper proposes two methods for estimating number and time of arrival information of peopl...
We explore the potential of passive radars based on Wi-Fi signals for crowd monitoring in mass gathe...
In this dissertation, we propose people counting algorithms based on impulse radio-ultra wideband (I...
Radio receivers, besides acting as wireless network nodes participating to the Internet of Things (I...
Abstract—Crowd counting, which count or accurately estimate the number of human beings within a regi...
In this covid19 pandemic the number of people gathering at public places and festivals are restricte...
Conventional radar-based people counting systems are designed mainly for dense spatial distributions...
We investigate crowd counting for Wi-Fi sensing based on models trained with data from the two-dimen...