ReViVD: Exploration and Filtering of Trajectories in an Immersive Environment using 3D Shapes

02/21/2022
by   François Homps, et al.
4

We present ReViVD, a tool for exploring and filtering large trajectory-based datasets using virtual reality. ReViVD's novelty lies in using simple 3D shapes – such as cuboids, spheres and cylinders – as queries for users to select and filter groups of trajectories. Building on this simple paradigm, more complex queries can be created by combining previously made selection groups through a system of user-created Boolean operations. We demonstrate the use of ReViVD in different application domains, from GPS position tracking to simulated data (e.g., turbulent particle flows and traffic simulation). Our results show the ease of use and expressiveness of the 3D geometric shapes in a broad range of exploratory tasks. ReViVD was found to be particularly useful for progressively refining selections to isolate outlying behaviors. It also acts as a powerful communication tool for conveying the structure of normally abstract datasets to an audience.

READ FULL TEXT

page 1

page 3

page 6

page 7

page 8

research
07/02/2019

RadVR: A 6DOF Virtual Reality Daylighting Analysis Tool

This work introduces RadVR, a virtual reality daylighiting analysis tool...
research
11/23/2020

ASIAVR: Asian Studies Virtual Reality Game a Learning Tool

The study aims to develop an application that will serve as an alternati...
research
12/07/2017

Using SVDD in SimpleMKL for 3D-Shapes Filtering

This paper proposes the adaptation of Support Vector Data Description (S...
research
03/09/2017

Position Tracking for Virtual Reality Using Commodity WiFi

Today, experiencing virtual reality (VR) is a cumbersome experience whic...
research
03/14/2023

A Virtual-Reality Driven Approach for Generating Humanoid Multi-Contact Trajectories

We present a virtual reality (VR) framework designed to intuitively gene...
research
05/24/2023

A Virtual Reality Tool for Representing, Visualizing and Updating Deep Learning Models

Deep learning is ubiquitous, but its lack of transparency limits its imp...

Please sign up or login with your details

Forgot password? Click here to reset