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Open AccessJournal ArticleDOI

Visual Exploration of Big Spatio-Temporal Urban Data: A Study of New York City Taxi Trips

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TLDR
A new model is proposed that allows users to visually query taxi trips and is able to express a wide range of spatio-temporal queries, and it is flexible in that not only can queries be composed but also different aggregations and visual representations can be applied, allowing users to explore and compare results.
Abstract
As increasing volumes of urban data are captured and become available, new opportunities arise for data-driven analysis that can lead to improvements in the lives of citizens through evidence-based decision making and policies. In this paper, we focus on a particularly important urban data set: taxi trips. Taxis are valuable sensors and information associated with taxi trips can provide unprecedented insight into many different aspects of city life, from economic activity and human behavior to mobility patterns. But analyzing these data presents many challenges. The data are complex, containing geographical and temporal components in addition to multiple variables associated with each trip. Consequently, it is hard to specify exploratory queries and to perform comparative analyses (e.g., compare different regions over time). This problem is compounded due to the size of the data-there are on average 500,000 taxi trips each day in NYC. We propose a new model that allows users to visually query taxi trips. Besides standard analytics queries, the model supports origin-destination queries that enable the study of mobility across the city. We show that this model is able to express a wide range of spatio-temporal queries, and it is also flexible in that not only can queries be composed but also different aggregations and visual representations can be applied, allowing users to explore and compare results. We have built a scalable system that implements this model which supports interactive response times; makes use of an adaptive level-of-detail rendering strategy to generate clutter-free visualization for large results; and shows hidden details to the users in a summary through the use of overlay heat maps. We present a series of case studies motivated by traffic engineers and economists that show how our model and system enable domain experts to perform tasks that were previously unattainable for them.

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Proceedings ArticleDOI

Visual interface for exploring caution spots from vehicle recorder big data

TL;DR: Results show the usefulness of the novel visual exploration environment provided, which provides a flexible filtering interface for driving operations using various combinations of attribute values such as velocity and acceleration, and a 3D visual environment for spatio-temporal exploration of caution spots.
Book ChapterDOI

Big Data Mining or Turning Data Mining into Predictive Analytics from Large-Scale 3Vs Data: The Future Challenge for Knowledge Discovery

TL;DR: This paper provides a brief discussion on most relevant open problems and future directions on the fundamental issue of mining Big Data.
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Use of Taxi-Trip Data in Analysis of Demand Patterns for Detection and Explanation of Anomalies

TL;DR: The objective of this research was the formulation of a methodology that could identify anomalies on traffic networks and correlate them with special events by using Internet data, and it was possible to detect fluctuations in demand and to analyze and correlation them with disruptive event scenarios such as extreme weather conditions, public holidays, religious festivities, and parades.
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SpoVis: Decision Support System for Site Selection of Sports Facilities in Digital Twinning Cities

TL;DR: Sport facility Visual analysis system (SpoVis), an interactive visual analysis system for planning sports facilities as well as site selection, and a set of visual analysis components designed to facilitate users to evaluate the status and information of existing sports facilities.
Journal ArticleDOI

BVis: urban traffic visual analysis based on bus sparse trajectories

TL;DR: A visual analysis system to analyze the urban traffic applying the large-scale real sparse buses dataset and an enhanced node importance evaluation algorithm is presented, which combines the dynamic properties of the bus station, such as traffic volume of station and station parking time.
References
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Book

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Journal ArticleDOI

Polaris: a system for query, analysis, and visualization of multidimensional relational databases

TL;DR: Polaris is presented, an interface for exploring large multidimensional databases that extends the well-known pivot table interface that includes an interfaces for constructing visual specifications of table-based graphical displays and the ability to generate a precise set of relational queries from the visual specifications.
Journal ArticleDOI

It's About Time: A Conceptual Framework for the Representation of Temporal Dynamics in Geographic Information Systems

TL;DR: In this article, a Triad representational approach that unifies temporal-as well as locational-and object-related aspects and that incorporates concepts from perceptual psychology, artifical intelligence, and other fields is presented.
Proceedings ArticleDOI

Dynamic queries for information exploration: an implementation and evaluation

TL;DR: A new concept for direct manipulation of databases, called dynamic queries, that allows users to formulate queries with graphical widgets, such as sliders, is designed, implemented and evaluated.
Journal ArticleDOI

Exploratory spatio-temporal visualization: an analytical review

TL;DR: A structured inventory of existing exploratory techniques related to the types of data and tasks they are appropriate for is considered, which is potentially helpful for data analysts—users of geovisualization tools.
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