Local-to-Global Panorama Inpainting for Locale-Aware Indoor Lighting Prediction

IF 4.7 1区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING IEEE Transactions on Visualization and Computer Graphics Pub Date : 2023-03-18 DOI:10.48550/arXiv.2303.10344
Jia-Xuan Bai, Zhen He, Shangxue Yang, Jie Guo, Zhenyu Chen, Y. Zhang, Yanwen Guo
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Abstract

Predicting panoramic indoor lighting from a single perspective image is a fundamental but highly ill-posed problem in computer vision and graphics. To achieve locale-aware and robust prediction, this problem can be decomposed into three sub-tasks: depth-based image warping, panorama inpainting and high-dynamic-range (HDR) reconstruction, among which the success of panorama inpainting plays a key role. Recent methods mostly rely on convolutional neural networks (CNNs) to fill the missing contents in the warped panorama. However, they usually achieve suboptimal performance since the missing contents occupy a very large portion in the panoramic space while CNNs are plagued by limited receptive fields. The spatially-varying distortion in the spherical signals further increases the difficulty for conventional CNNs. To address these issues, we propose a local-to-global strategy for large-scale panorama inpainting. In our method, a depth-guided local inpainting is first applied on the warped panorama to fill small but dense holes. Then, a transformer-based network, dubbed PanoTransformer, is designed to hallucinate reasonable global structures in the large holes. To avoid distortion, we further employ cubemap projection in our design of PanoTransformer. The high-quality panorama recovered at any locale helps us to capture spatially-varying indoor illumination with physically-plausible global structures and fine details.
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局部到全局全景图像绘制用于区域感知室内照明预测
从单视角图像预测室内全景照明是计算机视觉和图形学中一个基本但高度不适定的问题。为了实现区域感知和鲁棒预测,该问题可以分解为三个子任务:基于深度的图像扭曲、全景修复和高动态范围(HDR)重建,其中全景修复的成功起着关键作用。最近的方法主要依靠卷积神经网络(CNNs)来填补扭曲全景中缺失的内容。然而,它们通常实现次优性能,因为缺失的内容在全景空间中占据了很大一部分,而细胞神经网络受到有限感受野的困扰。球形信号中的空间变化失真进一步增加了传统细胞神经网络的难度。为了解决这些问题,我们提出了一种从局部到全局的大规模全景修复策略。在我们的方法中,首先在扭曲的全景图上应用深度引导的局部修复来填充小但密集的洞。然后,设计了一个基于变压器的网络,称为PanoTransformer,以在大洞中产生合理的全局结构。为了避免失真,我们在PanoTransformer的设计中进一步采用了立方体映射投影。在任何地点恢复的高质量全景都有助于我们捕捉空间变化的室内照明,具有物理上合理的全局结构和精细的细节。
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来源期刊
IEEE Transactions on Visualization and Computer Graphics
IEEE Transactions on Visualization and Computer Graphics 工程技术-计算机:软件工程
CiteScore
10.40
自引率
19.20%
发文量
946
审稿时长
4.5 months
期刊介绍: TVCG is a scholarly, archival journal published monthly. Its Editorial Board strives to publish papers that present important research results and state-of-the-art seminal papers in computer graphics, visualization, and virtual reality. Specific topics include, but are not limited to: rendering technologies; geometric modeling and processing; shape analysis; graphics hardware; animation and simulation; perception, interaction and user interfaces; haptics; computational photography; high-dynamic range imaging and display; user studies and evaluation; biomedical visualization; volume visualization and graphics; visual analytics for machine learning; topology-based visualization; visual programming and software visualization; visualization in data science; virtual reality, augmented reality and mixed reality; advanced display technology, (e.g., 3D, immersive and multi-modal displays); applications of computer graphics and visualization.
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