Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing

To design a pedestrian crossing area reasonably can be a demanding task for traffic planners. There are several challenges, including determining the appropriate dimensions, and ensuring that pedestrians are exposed to the least risks. Pedestrian safety is especially obscure to analyze, given that m...

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Main Author: Zheng, Jiaqi
Other Authors: Lundin, Leif, Perustieteiden korkeakoulu, Takala, Tapio, Aalto-yliopisto, Aalto University
Format: Master Thesis
Language:English
Published: 2019
Subjects:
Online Access:https://aaltodoc.aalto.fi/handle/123456789/40790
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spelling ftaaltouniv:oai:aaltodoc.aalto.fi:123456789/40790 2023-05-15T15:47:06+02:00 Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing Zheng, Jiaqi Lundin, Leif Perustieteiden korkeakoulu Takala, Tapio Aalto-yliopisto Aalto University 2019-10-21 application/pdf https://aaltodoc.aalto.fi/handle/123456789/40790 en eng https://aaltodoc.aalto.fi/handle/123456789/40790 URN:NBN:fi:aalto-201910275794 street-crossing behavior spatio-temporal trajectory visualization space utilization visual analytics G2 Pro gradu, diplomityö Master's thesis Diplomityö 2019 ftaaltouniv 2022-12-15T19:19:22Z To design a pedestrian crossing area reasonably can be a demanding task for traffic planners. There are several challenges, including determining the appropriate dimensions, and ensuring that pedestrians are exposed to the least risks. Pedestrian safety is especially obscure to analyze, given that many people in Stockholm cross the street illegally by running against the red light. To cope with these challenges, computational approaches of trajectory data visual analytics can be used to support the analytical reasoning process. However, it remains an unexplored field regarding how to visualize and communicate the street-crossing spatio-temporal data effectively. Moreover, the rendering also needs to deal with a growing data size for a more massive number of people. This thesis proposes a web-based interactive visual analytics tool for pedestrians' street-crossing behavior under various flow rates. The visualization methodology is also presented, which is then evaluated to have achieved satisfying communication and rendering effectiveness for maximal 180 agents over 100 seconds. In terms of the visualization scenario, pedestrians either wait for the red light or cross the street illegally; all people can choose to stop by a buffer island before they finish crossing. The visualization enables the analysis under multiple flow rates for 1) pedestrian movement, 2) space utilization, 3) crossing frequency in time-series, and 4) illegal frequency. Additionally, to acquire the initial trajectory data, Optimal Reciprocal Collision Avoidance (ORCA) algorithm is engaged in the crowd simulation. Then different visualization techniques are utilized to comply with user demands, including map animation, data aggregation, and time-series graph. Master Thesis Buffer Island Orca Aalto University Publication Archive (Aaltodoc) Buffer Island ENVELOPE(-67.345,-67.345,-69.157,-69.157)
institution Open Polar
collection Aalto University Publication Archive (Aaltodoc)
op_collection_id ftaaltouniv
language English
topic street-crossing behavior
spatio-temporal trajectory
visualization
space utilization
visual analytics
spellingShingle street-crossing behavior
spatio-temporal trajectory
visualization
space utilization
visual analytics
Zheng, Jiaqi
Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
topic_facet street-crossing behavior
spatio-temporal trajectory
visualization
space utilization
visual analytics
description To design a pedestrian crossing area reasonably can be a demanding task for traffic planners. There are several challenges, including determining the appropriate dimensions, and ensuring that pedestrians are exposed to the least risks. Pedestrian safety is especially obscure to analyze, given that many people in Stockholm cross the street illegally by running against the red light. To cope with these challenges, computational approaches of trajectory data visual analytics can be used to support the analytical reasoning process. However, it remains an unexplored field regarding how to visualize and communicate the street-crossing spatio-temporal data effectively. Moreover, the rendering also needs to deal with a growing data size for a more massive number of people. This thesis proposes a web-based interactive visual analytics tool for pedestrians' street-crossing behavior under various flow rates. The visualization methodology is also presented, which is then evaluated to have achieved satisfying communication and rendering effectiveness for maximal 180 agents over 100 seconds. In terms of the visualization scenario, pedestrians either wait for the red light or cross the street illegally; all people can choose to stop by a buffer island before they finish crossing. The visualization enables the analysis under multiple flow rates for 1) pedestrian movement, 2) space utilization, 3) crossing frequency in time-series, and 4) illegal frequency. Additionally, to acquire the initial trajectory data, Optimal Reciprocal Collision Avoidance (ORCA) algorithm is engaged in the crowd simulation. Then different visualization techniques are utilized to comply with user demands, including map animation, data aggregation, and time-series graph.
author2 Lundin, Leif
Perustieteiden korkeakoulu
Takala, Tapio
Aalto-yliopisto
Aalto University
format Master Thesis
author Zheng, Jiaqi
author_facet Zheng, Jiaqi
author_sort Zheng, Jiaqi
title Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
title_short Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
title_full Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
title_fullStr Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
title_full_unstemmed Interactive Visual Analytics for Agent-Based Simulation: Street-Crossing Behavior at Signalized Pedestrian Crossing
title_sort interactive visual analytics for agent-based simulation: street-crossing behavior at signalized pedestrian crossing
publishDate 2019
url https://aaltodoc.aalto.fi/handle/123456789/40790
long_lat ENVELOPE(-67.345,-67.345,-69.157,-69.157)
geographic Buffer Island
geographic_facet Buffer Island
genre Buffer Island
Orca
genre_facet Buffer Island
Orca
op_relation https://aaltodoc.aalto.fi/handle/123456789/40790
URN:NBN:fi:aalto-201910275794
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