MeTACAST: Target- and Context-aware Spatial Selection in VR
Lixiang Zhao, Tobias Isenberg, Fuqi Xie, Hai-Ning Liang, Lingyun Yu

TL;DR
MeTACAST introduces three innovative spatial selection techniques for VR data visualization that are target- and context-aware, enabling precise, flexible, and occlusion-robust data selection across various complex scenarios.
Contribution
The paper presents three novel, adjustable spatial selection methods tailored for VR environments, improving data exploration by handling diverse features and complex shapes.
Findings
Effective in diverse scenarios
Facilitates precise data selection
Outperforms baseline in user tasks
Abstract
We propose three novel spatial data selection techniques for particle data in VR visualization environments. They are designed to be target- and context-aware and be suitable for a wide range of data features and complex scenarios. Each technique is designed to be adjusted to particular selection intents: the selection of consecutive dense regions, the selection of filament-like structures, and the selection of clusters -- with all of them facilitating post-selection threshold adjustment. These techniques allow users to precisely select those regions of space for further exploration -- with simple and approximate 3D pointing, brushing, or drawing input -- using flexible point- or path-based input and without being limited by 3D occlusions, non-homogeneous feature density, or complex data shapes. These new techniques are evaluated in a controlled experiment and compared with the Baseline…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · 3D Shape Modeling and Analysis · Remote Sensing and LiDAR Applications
