The Relative Importance of Depth Cues and Semantic Edges for Indoor Mobility Using Simulated Prosthetic Vision in Immersive Virtual Reality

Alex Rasla, M. Beyeler
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引用次数: 5

Abstract

Visual neuroprostheses (bionic eyes) have the potential to treat degenerative eye diseases that often result in low vision or complete blindness. These devices rely on an external camera to capture the visual scene, which is then translated frame-by-frame into an electrical stimulation pattern that is sent to the implant in the eye. To highlight more meaningful information in the scene, recent studies have tested the effectiveness of deep-learning based computer vision techniques, such as depth estimation to highlight nearby obstacles (DepthOnly mode) and semantic edge detection to outline important objects in the scene (EdgesOnly mode). However, nobody has yet attempted to combine the two, either by presenting them together (EdgesAndDepth) or by giving the user the ability to flexibly switch between them (EdgesOrDepth). Here, we used a neurobiologically inspired model of simulated prosthetic vision (SPV) in an immersive virtual reality (VR) environment to test the relative importance of semantic edges and relative depth cues to support the ability to avoid obstacles and identify objects. We found that participants were significantly better at avoiding obstacles using depth-based cues as opposed to relying on edge information alone, and that roughly half the participants preferred the flexibility to switch between modes (EdgesOrDepth). This study highlights the relative importance of depth cues for SPV mobility and is an important first step towards a visual neuroprosthesis that uses computer vision to improve a user’s scene understanding.
深度线索和语义边缘对沉浸式虚拟现实中使用模拟假肢视觉的室内移动的相对重要性
视觉神经假体(仿生眼)具有治疗经常导致低视力或完全失明的退行性眼病的潜力。这些设备依靠一个外部摄像头来捕捉视觉场景,然后逐帧转换成电刺激模式,发送到眼睛中的植入物。为了在场景中突出更多有意义的信息,最近的研究已经测试了基于深度学习的计算机视觉技术的有效性,例如深度估计以突出附近的障碍物(DepthOnly模式)和语义边缘检测以概述场景中的重要物体(EdgesOnly模式)。然而,还没有人试图将两者结合起来,无论是通过将它们一起呈现(EdgesAndDepth)还是通过让用户能够灵活地在它们之间切换(EdgesOrDepth)。在这里,我们在沉浸式虚拟现实(VR)环境中使用神经生物学启发的模拟假肢视觉(SPV)模型来测试语义边缘和相对深度线索对支持避开障碍物和识别物体的能力的相对重要性。我们发现,与仅依赖边缘信息相比,参与者在使用基于深度的线索避开障碍物方面明显更好,并且大约一半的参与者更喜欢在模式之间切换的灵活性(EdgesOrDepth)。这项研究强调了深度线索对SPV移动性的相对重要性,是朝着使用计算机视觉来提高用户对场景理解的视觉神经假体迈出的重要的第一步。
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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