Abstract—Crowd counting, which count or accurately estimate the number of human beings within a region, is critical in many applications, such as guided tour and crowd control. A crowd counting solution should be scalable and be minimally intrusive (i.e., device-free) to users. Image-based solutions are device-free, but cannot work well in a dim or dark environment. Non-image based solutions usually require every human being carrying device, and are inaccurate and unreliable in practice. In this paper, we present FCC, a device-Free Crowd Counting approach based on Channel State Information (CSI). Our design is motivated by our observation that CSI is highly sensitive to environment variation, like a frog eye. We theoretically discuss the re...
The paper addresses the problem of passive crowd sensing in an indoor space by processing baseband r...
Counting people and things (targets) in a monitored area, also known as crowd-counting, enables seve...
The outbreak of COVID-19 has resulted in many different policies being adopted across the world to r...
Wi-Fi in smartphones are designed to periodically transmit probe-request-frame to determine when a k...
Wi-Fi in smartphones are designed to periodically transmit probe-request-frame to determine when a k...
This paper presents a crowd monitoring systembased on the passive detection of probe requests. The s...
Abstract: Crowd size estimation has become of even greater significance than before COVID-19 restric...
The rising need of crowd monitoring in public spaces, especially for safety purposes, pushes the res...
Crowd counting, i.e. count the number of people in a crowded visual space, is emerging as an essenti...
Subject counting systems are extensively used in ambient intelligence applications, such as smart ho...
We investigate crowd counting for Wi-Fi sensing based on models trained with data from the two-dimen...
Estimating the number of people in a given area, denoted as “people counting” process, plays a vital...
There is a number of ways to estimate the number of people in a particular area. From image processi...
The widespread use of pervasive sensing technolo- gies such as wireless sensors and street cameras a...
The paper addresses the problem of passive crowd sensing in an indoor space by processing baseband r...
Counting people and things (targets) in a monitored area, also known as crowd-counting, enables seve...
The outbreak of COVID-19 has resulted in many different policies being adopted across the world to r...
Wi-Fi in smartphones are designed to periodically transmit probe-request-frame to determine when a k...
Wi-Fi in smartphones are designed to periodically transmit probe-request-frame to determine when a k...
This paper presents a crowd monitoring systembased on the passive detection of probe requests. The s...
Abstract: Crowd size estimation has become of even greater significance than before COVID-19 restric...
The rising need of crowd monitoring in public spaces, especially for safety purposes, pushes the res...
Crowd counting, i.e. count the number of people in a crowded visual space, is emerging as an essenti...
Subject counting systems are extensively used in ambient intelligence applications, such as smart ho...
We investigate crowd counting for Wi-Fi sensing based on models trained with data from the two-dimen...
Estimating the number of people in a given area, denoted as “people counting” process, plays a vital...
There is a number of ways to estimate the number of people in a particular area. From image processi...
The widespread use of pervasive sensing technolo- gies such as wireless sensors and street cameras a...
The paper addresses the problem of passive crowd sensing in an indoor space by processing baseband r...
Counting people and things (targets) in a monitored area, also known as crowd-counting, enables seve...
The outbreak of COVID-19 has resulted in many different policies being adopted across the world to r...