FocalSelect: Improving Occluded Objects Acquisition with Heuristic Selection and Disambiguation in Virtual Reality.

Duotun Wang, Linjie Qiu, Boyu Li, Qianxi Liu, Xiaoying Wei, Jianhao Chen, Zeyu Wang, Mingming Fan
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Abstract

In recent years, various head-worn virtual reality (VR) techniques have emerged to enhance object selection for occluded or distant targets. However, many approaches focus solely on ray-casting inputs, restricting their use with other input methods, such as bare hands. Additionally, some techniques speed up selection by changing the user's perspective or modifying the scene context, which may complicate interactions when users plan to resume or manipulate the scene afterward. To address these challenges, we present FocalSelect, a heuristic selection technique that builds 3D disambiguation through head-hand coordination and scoring-based functions. Our interaction design adheres to the principle that the intended selection range is a small sector of the headset's viewing frustum, allowing optimal targets to be identified within this scope. We also introduce a density-aware adjustable occlusion plane for effective depth culling of rendered objects. Two experiments are conducted to assess the adaptability of FocalSelect across different input modalities and its performance against five selection techniques. The results indicate that FocalSelect enhances selection experiences in occluded and remote scenarios while preserving the spatial context among objects. This preservation helps maintain users' understanding of the original scene and facilitates further manipulation. We also explore potential applications and enhancements to demonstrate more practical implementations of FocalSelect.

FocalSelect:利用虚拟现实中的启发式选择和消歧技术改进隐蔽物体的获取。
近年来,各种头戴式虚拟现实(VR)技术已经出现,以增强对遮挡或远处目标的目标选择。然而,许多方法只关注光线投射输入,限制了它们与其他输入方法(如徒手)的使用。此外,一些技术通过改变用户的视角或修改场景上下文来加速选择,这可能会使用户计划随后恢复或操作场景时的交互复杂化。为了解决这些挑战,我们提出了FocalSelect,这是一种启发式选择技术,通过手头协调和基于评分的功能构建3D消歧。我们的交互设计遵循的原则是,预期的选择范围是头戴式耳机视锥体的一小部分,允许在这个范围内确定最佳目标。我们还引入了一个密度感知的可调遮挡平面,用于对渲染对象进行有效的深度剔除。我们进行了两个实验来评估FocalSelect在不同输入模式下的适应性及其对五种选择技术的性能。结果表明,FocalSelect增强了遮挡和偏远场景下的选择体验,同时保留了物体之间的空间背景。这种保存有助于保持用户对原始场景的理解,并便于进一步操作。我们还探讨了潜在的应用程序和增强功能,以演示FocalSelect的更多实际实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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