Enhancing Crowd Monitoring System Functionality through Data Fusion: Estimating Flow Rate from Wi-Fi Traces and Automated Counting System Data
Abstract
:1. Introduction
2. Overview of Sensor Systems for Crowd Monitoring Purposes
2.1. Techniques to Monitor Crowd Movement Behavior
2.2. Monitoring the Pedestrian Movement Behaviour Using Wi-Fi & Bluetooth Sensors
3. Introduction of the Data Format, Data Fusion Methods, and Goodness-of-Fit Metrics
3.1. Introduction Data Format
- the time interval between the current time and the start of the event on each day ,
- the total Wi-Fi count in the sensor network at the current time step ,
- the average total flow rate in the sensor network ,
- the average difference between consecutive total flow rate measurements ,
- the average multiplication factor (t).
3.2. Introduction Data Fusion Methods
3.2.1. Indirect (Multiple) Regression Models
- Model 1a.
- a linear model without a constant
- Model 1b.
- a linear model with constant
- Model 1c.
- a quadratic model with constant
- Model 1d.
- a logarithmic model with constant
3.2.2. Direct (Multiple) Regression Model
- Model 2a.
- a linear approximation without a constant
- Model 2b.
- a linear approximation with constant
- Model 2c.
- a quadratic approximation
- Model 2d.
- an exponential approximation with constant
3.2.3. Shallow Neural Network (NN)
3.2.4. Autoregressive Moving Average (ARMAX) Model
3.2.5. Recurrent Neural Network
3.3. Goodness-of-Fit Metrics
4. Introducing the TT Festival 2018
4.1. The TT Festival
4.2. Description of the Sensing Network
5. Presenting the Wi-Fi Count and Flow Rate Time Series
5.1. Time Series Wi-Fi Count and Flow Rate
5.2. Relation Between Wi-Fi Count and Flow Rate
6. Best Data Fusion Model and Discussion of the Modeling Results
7. Conclusions and Future Works
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Sensor Type | Variables | Monitored Crowd | Data Type | Privacy Concerns | ||||||
---|---|---|---|---|---|---|---|---|---|---|
AT | AN | V | K | Q | RC | D | ||||
Camera Systems | X | X | - | - | - | - | - | E | Point | Yes |
Automated Counting Systems (Computer Vision Algorithms) | - | - | X | X | X | - | - | E | Point | Yes |
Automated Counting Systems (Depth Sensor/Laser/IR) | - | - | X | X | X | - | - | E | Point | No |
Passive RFID Sensors | - | - | - | - | - | X | X | S | Point | No |
Active RFID Sensors | - | - | - | - | - | X | X | S | Point/area | No |
Wi-Fi / Bluetooth Sensors | - | - | - | - | - | X | X | S | Point | Yes |
GPS Tracker | - | - | X | - | - | X | X | S | Area | No |
GPS Smartphone Application | - | - | X | - | - | X | X | S | Area | Yes |
Social Media (text) | X | X | - | - | - | X | X | S | Area | No |
Social Media (image) | X | X | - | X | - | X | X | S | Area | No |
|
Reference | Ref. No. | Mode | Setting | DL | Monitored Variables | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Speed | Density | Flow Rate | TS | TT | Traj. | Route | OD | Presence | |||||
Chen et al. (2005) | [41] | P | Building | L | - | - | - | - | - | - | - | - | X |
Miyaki et al. (2007)b | [54] | P | Outdoor pedestrian space | L | - | - | - | - | - | X | - | - | - |
O’Neill et al. (2006) | [55] | P | City streets of Bath | L | - | - | X | X | - | - | - | - | X |
Miyaki et al. (2007)a | [47] | P | City streets and Uni. of Tokyo | L | - | - | - | - | - | X | - | - | - |
Millonig et al. (2008) | [56] | P | Mall | L | - | - | - | - | - | - | X | - | - |
Bullock et al. (2010) | [44] | P | Airport security | H | - | - | - | - | X | - | - | - | X |
Vu et al. (2010) | [57] | P | University Campus | L | - | - | - | - | - | - | - | - | X |
Stange et al. (2011) | [42] | P | Racing event | H | - | - | - | - | - | - | X | - | X |
Utsch et al. (2012) | [58] | P | Soccer stadium Nimes, France | H | - | - | - | X | - | - | X | - | - |
Musa et al. (2012) | [22] | P | City streets of Chicago | L | - | - | - | - | - | - | X | - | - |
Malinovskiy et al. (2012) | [45] | P | Unknown | L | - | - | - | - | X | - | - | - | - |
Versichele et al. (2012) | [50] | P | Music event Ghent, Belgium | H | - | - | X | - | - | - | - | X | X |
Abedi et al. (2013) | [59] | P, B | Grassy field | L | - | - | - | - | X | - | - | - | X |
Bonne et al. (2013) | [38] | P | Mass event Pukkelpop, Belgium | H+L | - | - | - | - | - | - | X | - | - |
Kostakos et al. (2013) | [49] | P | City streets of Oulu, Finland | L | - | - | X | - | - | - | - | - | X |
Nawaz et al. (2013) | [60] | C | Parking lot | L | - | - | - | - | - | - | - | - | X |
Xu et al. (2013) | [48] | P | City streets of Sydney | L | - | - | X | - | - | X | - | - | X |
Danalet et al. (2014) | [5] | P | Campus | L | - | - | - | - | - | - | - | X | - |
Fukuzaki et al. (2014) | [40] | P | Active Lab, building | L | - | - | - | - | - | - | X | - | X |
Schauer et al. (2014) | [43] | P | Security gates airport | H | - | - | X | - | - | - | - | - | X |
Fukuzaki et al. (2015) | [61] | P | Shopping mall | L | - | - | - | - | - | - | - | - | X |
Farooq et al. (2015) | [46] | P | Festival, Montreal, Canada | H | - | - | - | - | X | - | - | X | X |
Ma et al. (2015) | [52] | P | University building | L | - | - | X | X | - | - | - | - | X |
Hoogendoorn et al. (2016) | [23] | P | Nautical event | H | - | - | - | - | X | - | - | - | - |
Daamen et al. (2016) | [1] | P | Nautical event | H | X | X | X | - | X | - | - | - | - |
Poucin et al. (2016) | [35] | P | Campus Concordia Uni. Montreal | L | - | - | - | - | - | - | X | - | X |
Alessandrini et al. (2017) | [62] | P | Joint Research Centre (JRC) Ispra | L | - | - | X | X | - | X | - | - | X |
Guo et al. (2017) | [63] | P | Building | P | X | - | - | - | - | - | - | - | X |
Bellini et al. (2017) | [34] | P | City streets San Francisco | L | - | - | X | - | - | - | - | - | X |
Fang et al. (2017) | [36] | P | University campus Dartmouth | L | - | - | - | - | - | - | X | - | - |
Duives et al. (2018) | [28] | P | Music Event | H | - | X | - | - | - | - | - | - | - |
Potortì et al. (2018) | [39] | P | Building | L | - | - | - | - | - | X | - | - | - |
Wi-Fi Counts Only | ||||||||
Model No. | Model Description | RMSE | ||||||
1a | Indirect—linear without constant | 0.1740 | 14.20 | |||||
1b | Indirect—linear with constant | 0.3590 | 12.51 | |||||
1c | Indirect—quadratic | 0.3590 | 12.51 | |||||
1d | Indirect—logarithmic | 0.3195 | 12.89 | |||||
2a | Direct—linear without constant | 0.3337 | 12.76 | |||||
2b | Direct—linear with constant | 0.3398 | 12.70 | |||||
2c | Direct—quadratic | 0.3590 | 12.51 | |||||
2d | Direct—exponential | 0.3591 | 12.51 | |||||
3 | ARMA (4,0,5) | 0.1808 | 14.29 | |||||
4 | NN—2 nodes | 0.3619 | 12.44 | |||||
5 | RNN—6 nodes | 0.3582 | 12.478 | |||||
Wi-Fi counts + contextual variables | ||||||||
Model No. | Model Description | RMSE | ||||||
6 | Direct—linear with constant | x | x | x | x | x | 0.3849 | 12.24 |
7 | ARMAX (3,0,3) | - | x | - | - | x | 0.1167 | 15.54 |
8 | NN—3 nodes | - | - | x | - | - | 0.4306 | 11.77 |
9 | RNN—1 node | - | - | - | - | 0.3626 | 12.47 |
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Duives, D.C.; van Oijen, T.; Hoogendoorn, S.P. Enhancing Crowd Monitoring System Functionality through Data Fusion: Estimating Flow Rate from Wi-Fi Traces and Automated Counting System Data. Sensors 2020, 20, 6032. https://doi.org/10.3390/s20216032
Duives DC, van Oijen T, Hoogendoorn SP. Enhancing Crowd Monitoring System Functionality through Data Fusion: Estimating Flow Rate from Wi-Fi Traces and Automated Counting System Data. Sensors. 2020; 20(21):6032. https://doi.org/10.3390/s20216032
Chicago/Turabian StyleDuives, Dorine C., Tim van Oijen, and Serge P. Hoogendoorn. 2020. "Enhancing Crowd Monitoring System Functionality through Data Fusion: Estimating Flow Rate from Wi-Fi Traces and Automated Counting System Data" Sensors 20, no. 21: 6032. https://doi.org/10.3390/s20216032