Child-Pedestrian Traffic Safety at Crosswalks—Literature Review
Abstract
:1. Introduction
- analyses of traffic accidents involving children and young people in different roles (as pedestrians, cyclists or car passengers);
- analyses of traffic-related injuries;
- analyses of children’s and young people’s traffic behavior (depending on their age, gender and other sociodemographic characteristics, and use of mobile phones and other distractors);
- analyses of the role of infrastructural solutions in children road traffic safety;
- analyses of the efficiency of traffic education in assuring safe traffic behavior in the young population and other demographics.
2. Parameters Influencing Children’s Traffic Safety at Crosswalks—Literature Review
2.1. Sociodemographic Parameters Influencing Child-Pedestrian Traffic Safety
2.1.1. The Influence of Child-Pedestrian Age on Their Traffic Safety
2.1.2. The Influence of Child-Pedestrian Gender on Their Traffic Safety
2.1.3. The Influence of the Way of Moving on Child-Pedestrian Traffic Safety
2.2. Infrastructural and Traffic Parameters Influencing Children’s Pedestrian Safety at Crosswalks
2.3. Distractors
3. Pedestrian Behavior-Prediction Models—Literature Review
3.1. Overview of Existing Models for Pedestrian and Child-Pedestrian Behavior at Crosswalks
3.2. Models for Child-Pedestrian Reaction Time and Speed at the Signalized Intersection
4. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Source | Objective | Method | Target Group/Sample | Parameters Analyzed |
---|---|---|---|---|
Ampofo-Boateng & Thomson, 1991 [29] | children’s perception of safety and danger | laboratory table-top simulation | children (5–11 years)/64, 48, 48 and 24 children | age, gender |
Whitebread & Neilson, 2000 [24] | development of pedestrian skills | laboratory tasks and video presentations | children (4–5, 7–11 years)/60 children and 10 adults | age |
Hill et al., 2000 [17] | children’s concepts of danger | two experiments | children (4–10 years)/120 children and 30 adults | age, gender |
Schwebel & Bounds, 2003 [37] | children’s estimation of physical ability | laboratory experiment | children (6 and 8 years)/64 children | supervision |
Tabibi & Pfeffer, 2003 [18] | identification of safe and dangerous road-crossing sites | computer presentations | children/95 children | age, gender |
Tabibi & Pfeffer 2007 [25] | children’s pedestrian behaviors | laboratory testing | children (6–11 years)/88 children and 29 adults | age |
Barton and Schwabel, 2007. [16] | children’s pedestrian behavior | pretend road method, real road crossing | children/85 children and 26 adults | age, gender, parental supervision |
Oxley et al., 2007 [27] | road-crossing judgements | simulated road-crossing task, performance assessments and a survey | children (6–10 years)/71 children | age, gender |
Rosenbloom et al., 2008 [38] | children’s crossing behavior | unobtrusive observations | children (7–11 years)/269 children | supervision |
Tapiro et al., 2014 [19] | children’s pedestrian behaviors | laboratory testing using the eye tracker | children (7–13 years)/21 adults and 33 children | age |
Meir et al., 2013 [21] | child pedestrians’ hazard perception | virtual environment simulation laboratory | children (7–13 years)/22 adults and 25 children | age |
Meir et al., 2015 [20] | child pedestrians’ hazard perception | virtual environment simulation laboratory | children (7–13 years)/20 adults and 27 children | age |
Fu & Zou, 2016 [31] | children’s crossing behavior | video recording at | children all ages/1154 children and 1096 children | gender |
Schwebel et al., 2018 [30] | child pedestrian street-crossing behaviors | videotaping 3 crosswalks | children (1–6 grades)/216 children | age, gender, supervision |
Tapiro et al., 2018 [26] | pedestrian crossing behavior | laboratory testing | children (7–13 years)/38 children and 14 adults | age |
Wang et al., 2018a [28] | children’s pedestrian behavior | videotaping crosswalk and sidewalk | children (6–14 years)/469 children | age, gender |
Wang et al., 2018b [32] | children’s pedestrian behavior | videotaping crosswalk and sidewalk | children (6–14 years)/491 children | age, gender |
Wang et al., 2019 [33] | behavior of adolescents | road user behavior questionnaire | children all ages/4794 adolescents | age, gender |
Meir et al., 2020. [23] | children-pedestrians’ hazard perception | two experimental measurements | children (7–13 years) and adults/in 1st. 20 adults + 30 children; in 2nd 21 adults + 25 children | age |
Simeunović et al., 2021 [34] | speed of school age children | experimental measurements | pedestrians (7–20 years)/643 children and adolescents | age, and gender |
Cieśla, 2021 [22] | infrastructure solutions | statistical data and survey method | children (0–18 years)/217 survey participants | age |
Deluka-Tibljaš et al., 2021 [14] | Children’s traffic behavior | videotaping 14 crosswalks | children up to 15 years/600 crossings | age, gender, parental supervision, group movement |
Source | Objective | Method | Target Group/ Country | Parameters Analyzed |
---|---|---|---|---|
Chandra and Bharti, 2013 [53] | crossing speed analyses | field observation | general population/India | road width, number of lanes |
Li P et al., 2013 [50] | crossing speed analyses | field observations by video recording | adults and children, China | traffic lanes |
Li et al., 2013 [50] | children’s crossing speed analyses | field observations by video recording | children (aged 5–10), adults/China | road width, number of lines, traffic volume |
Muley et al., 2018 [54] | crossing speed analyses | field observation | general population, Qatar | crosswalk length |
Fridman et al., 2019 [43] | child-pedestrian injuries | modified quasi-induced exposure approach | child pedestrians (aged up to 18)/Canada | control device presence, road type, road alignment, position at road network |
Bansal et al., 2019 [49] | pedestrian speed model | field observations by video recording | general population, India | traffic volumes, number of lanes, nature of land-use |
Meir, A., & Oron-Gilad, 2020 [23] | estimation of road crossing situations | laboratory testing (pair-comparison task, virtual reality) | adults and children (7–13), Israel | traffic regime, parked cars, type of intersection |
Tapiro et al., 2020 [52] | crossing behavior | virtual reality | children (9–13), Israel | road environment complexity |
Deluka-Tibljaš et al., 2021 [14] | children’s crossing speed | field observations by video recording | children (5–15), Croatia | crosswalk length, crosswalk width, pedestrian green time duration, traffic signal cycle length |
Maria Cielsa, 2021 [22] | urban transport infrastructure solutions | surveys | children (aged 0–18)/Poland | safety of infrastructural elements—crosswalks, road equipment |
Source | Objective | Method | Target Group/Sample | Parameters Analyzed |
---|---|---|---|---|
Dunbar et al., 2001 [61] | concentration (while playing a video game) and speed (while crossing the street) | field observations by video recording | children (aged 4 years 3 months-10 years) | presence/absence of parent distraction (seconds) speed (m/s) |
Nasar et al., 2008 [62] | mobile telephones distracted attention and pedestrian safety | field observations by video recording | 60 pedestrians (1st study) and 127 (2nd study) with different ages | percentage who walked with or without mobile phone or i-pod |
Stavrinos et al., 2009 [63] | influence of talking on a cell phone for pediatric pedestrian injury risk | field observations by video recording; statistical and prediction analysis | 10 to 11 years old | distraction (seconds) speed (m/s) |
Zhuang and Wu, 2011 [64] | pedestrians’ crossing behaviors and safety at unmarked roadway | field observations by video recording; | 254 pedestrians at unmarked roadway (different age) | trajectory of pedestrians by means of video cameras, potential distractors before and after crossing) |
Schwebel et al., 2012 [65] | influence of talking on the phone, texting and listening to music on pedestrian safety | field observations by video recording | 138 university students walked across an interactive, semi-immersive virtual pedestrian street. | demographic data, frequency of walking and frequency of media use. |
Ortiz et al., 2017 [66] | distraction and road user behavior | observational pilot study across intersections | 4871 road users (different ages) | type of distraction (e.g., mobile phone), gender, age, location and conflict indicators. |
Tapiro et al., 2018 [26] | the effect of environmental distractions on child pedestrians’ crossing behavior | field observations by video recording | elementary school-aged children (52 units) | distractors—three types of audio distractions |
Osborne et al., 2020 [67] | the effectiveness of potential current and future countermeasures from the end-user perspective | interviews and a focus group | n/a | behavioral; legislation/regulation; infrastructure initiatives and technological advances |
Liu et al., 2021 [68] | the effect of distraction due to mobile phone use on pedestrian reaction time to the pedestrian signal. | a multilevel mixed-effects accelerated failure time (aft). survival model | n/a | demographic attributes, distraction characteristics and environment-related parameters. |
Source | Objective | Method | Target Group/Sample | Parameters Analyzed |
---|---|---|---|---|
Chang, C.-Y. et al., 2011 [83] | regression model | field research/ signalized crosswalks | general population/5235 | gender, temperature, weather, number of lanes, signal type, group of pedestrians, and pedestrian phase length |
Pinna, F.; Murrau, R., 2017 [82] | multiple regression model | field research/ sidewalks | general population subdivided into user types: isolated, single and groups/4800 | age group, gender, and urban context |
Pinna, F.; Murrau, R., 2018 [81] | statistical analysis and polynomial model | a survey and field research/ sidewalk | general population/2794 | age class and mean walking speed |
Russo B.J. et al., 2018 [85] | ordinary least squares regression model | field research/ signalized crosswalks | general population/ 3038 | crossing length, “walk” time, “flashing don’t walk” time, cycle length, pedestrian push button equipped, distractions (talking or texting on mobile phone, headphones, other), cross with or against traffic, gender, age, group size (1,2,3–4, 5 or more), opposing pedestrians (0,1, 2 or more), waiting time (0 s, 1 s or more) |
Bansal, A. et al., 2019 [49] | stepwise regression model | field research/ signalized crosswalks | general population/994 | crosswalk width, crosswalk length, width of the pedestrian island, classification of road, average traffic flow, average pedestrian delay, availability of separate bicycle paths |
Zafri, N.M. et al., 2019 [86] | multiple linear regression model | field research/different types of crosswalks 560 samples | general population/560 | intersection control type, gender, age, crossing type, crossing group size, baggage handling, mobile usage, compliance behavior with control direction, crossing location, vehicle flow |
Ištoka Otković, I. et al., 2021 [13] | neural network model | field research /signalized crosswalks | child pedestrians/300 + 180 | age group, gender, disabilities, movement in a group, supervision by adults, talking or texting on mobile phone, number of children and total number of pedestrians on crosswalk, length and width of crosswalk, green time for pedestrians, traffic signal cycle, running |
Ištoka Otković, I. et al., 2021 [13] | multiple linear regression model | field research/ signalized crosswalks | child pedestrians/300 + 180 | age group, gender, disabilities, movement in a group, supervision by adults, talking or texting on mobile phone, number of children and total number of pedestrians on crosswalk, length and width of crosswalk, green time for pedestrians, traffic signal cycle, running |
Source | Model | Model Reliability | Validation of Model |
---|---|---|---|
Chang, C.-Y. et al., 2011 [83] | regression model | R2 = 0.179 | n/a |
Pinna, F.; Murrau, R., 2017 [82] | multiple regression model | isolated R2 = 0.79; RMSPE = 0.0607 Single R2 = 0.76; RMSPE = 0.0698 Groups R2 = 0.93; RM + SPE = 0.0375 | isolated = 0.81; RMSPEv = 0.0652 Single = 0.88; RMSPEv = 0.0414 Groups = 0.98; RMSPEv = 0.0586 |
Pinna, F.; Murrau, R., 2018 [81] | statistical analysis and polynomial model | Rc2 = 0.8711 ME = 0.0253 MPE = 0.0259 RMSE = 0.0314 RMSPE= 0.0320 | = 0.9694 ME = 0.0256 MPE = 0.0288 RMSE = 0.0288 RMSPE = 0.0321 |
Russo B. J. et al., 2018 [85] | ordinary least squares regression model | R2 = 0.132 | n/a |
Bansal, A. et al., 2019 [49] | stepwise regression model | R2 = 0.701 | n/a |
Zafri, N.M. et al., 2019 [86] | multiple linear regression model | R2 = 0.391 | n/a |
Ištoka Otković, I. et al., 2021 [13] | neural network model | R2 = 0.803 MAE = 0.098 RMSE = 0.132 | First validation R2 = 0.819 MAE = 0.129 RMSE = 0.143 Second validation R2 = 0.676 MAE = 0.085 RMSE = 0.101 |
Ištoka Otković, I. et al., 2021 [13] | multiple linear regression model | R2 = 0.7056 MAE = 0.127 RMSE = 0.161 | First validation R2 = 0.497 MAE = 0.159 RMSE = 0.217 Second validation R2 = 0.560 MAE = 0.313 RMSE = 0.343 |
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Deluka-Tibljaš, A.; Šurdonja, S.; Ištoka Otković, I.; Campisi, T. Child-Pedestrian Traffic Safety at Crosswalks—Literature Review. Sustainability 2022, 14, 1142. https://doi.org/10.3390/su14031142
Deluka-Tibljaš A, Šurdonja S, Ištoka Otković I, Campisi T. Child-Pedestrian Traffic Safety at Crosswalks—Literature Review. Sustainability. 2022; 14(3):1142. https://doi.org/10.3390/su14031142
Chicago/Turabian StyleDeluka-Tibljaš, Aleksandra, Sanja Šurdonja, Irena Ištoka Otković, and Tiziana Campisi. 2022. "Child-Pedestrian Traffic Safety at Crosswalks—Literature Review" Sustainability 14, no. 3: 1142. https://doi.org/10.3390/su14031142
APA StyleDeluka-Tibljaš, A., Šurdonja, S., Ištoka Otković, I., & Campisi, T. (2022). Child-Pedestrian Traffic Safety at Crosswalks—Literature Review. Sustainability, 14(3), 1142. https://doi.org/10.3390/su14031142