沉浸式应用全景拼接内容的感知质量评估:一项前瞻性调查

Q1 Computer Science Virtual Reality Intelligent Hardware Pub Date : 2022-06-01 DOI:10.1016/j.vrih.2022.03.004
Hayat Ullah , Sitara Afzal , Imran Ullah Khan
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引用次数: 1

摘要

虚拟现实(VR)和增强现实(AR)领域的最新进展通过数字化与人类生活相关的每件事对现代技术产生了重大影响,并为下一代软件技术(软技术)打开了大门。VR和AR技术借助高质量的拼接全景内容和360°图像,提供令人惊叹的沉浸式内容,广泛应用于教育,游戏,娱乐和生产领域。VR和AR内容的沉浸式质量在很大程度上取决于全景或360°图像的感知质量,实际上轻微的视觉失真就会显著降低整体质量。因此,为了确保为VR和AR应用构建的全景内容的质量,已经提出了许多缝合图像质量评估(SIQA)方法,在VR和AR应用之前评估全景内容的质量。在本调查中,我们提供了SIQA文献的详细概述,并专注于迄今为止提出的客观SIQA方法。为了更好地理解,客观SIQA方法分为两类,即全参考SIQA方法和无参考SIQA方法。将每个类进一步分为传统方法和基于深度学习的方法,并检查它们在SIQA任务中的表现。此外,我们还列出了用于全景内容质量评估的公开可用的基准SIQA数据集和评估指标。最后,在现有SIQA方法的基础上,指出了该领域目前面临的挑战,并提出了SIQA领域未来需要进一步完善的研究方向。
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Perceptual quality assessment of panoramic stitched contents for immersive applications: a prospective survey

The recent advancements in the field of Virtual Reality (VR) and Augmented Reality (AR) have a substantial impact on modern day technology by digitizing each and everything related to human life and open the doors to the next generation Software Technology (Soft Tech). VR and AR technology provide astonishing immersive contents with the help of high quality stitched panoramic contents and 360° imagery that widely used in the education, gaming, entertainment, and production sector. The immersive quality of VR and AR contents are greatly dependent on the perceptual quality of panoramic or 360° images, in fact a minor visual distortion can significantly degrade the overall quality. Thus, to ensure the quality of constructed panoramic contents for VR and AR applications, numerous Stitched Image Quality Assessment (SIQA) methods have been proposed to assess the quality of panoramic contents before using in VR and AR. In this survey, we provide a detailed overview of the SIQA literature and exclusively focus on objective SIQA methods presented till date. For better understanding, the objective SIQA methods are classified into two classes namely Full-Reference SIQA and No-Reference SIQA approaches. Each class is further categorized into traditional and deep learning-based methods and examined their performance for SIQA task. Further, we shortlist the publicly available benchmark SIQA datasets and evaluation metrices used for quality assessment of panoramic contents. In last, we highlight the current challenges in this area based on the existing SIQA methods and suggest future research directions that need to be target for further improvement in SIQA domain.

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来源期刊
Virtual Reality  Intelligent Hardware
Virtual Reality Intelligent Hardware Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.40
自引率
0.00%
发文量
35
审稿时长
12 weeks
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