CompenHR:高效的全补偿高分辨率投影仪

Yuxi Wang, H. Ling, Bingyao Huang
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引用次数: 0

摘要

全放映机补偿是放映机-摄像机系统的一项实际任务。它的目的是找到一个投影仪输入图像,命名为补偿图像,这样在投影时,它可以消除由于物理环境和硬件造成的几何和光度畸变。最先进的方法使用深度学习来解决这个问题,并在低分辨率设置中显示出有希望的性能。然而,由于训练时间长,内存成本高,直接将深度学习应用于高分辨率设置是不切实际的。针对这一问题,本文提出了一种实用的全补偿方案。首先,设计了一种基于注意力的网格细化网络,提高几何校正质量。其次,我们将一种新的采样方案集成到端到端补偿网络中以减轻计算量,并引入注意块以保留关键特征。最后,构建了高分辨率投影仪全补偿的基准数据集。实验表明,该方法在效率和质量上都有明显的优势。
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CompenHR: Efficient Full Compensation for High-resolution Projector
Full projector compensation is a practical task of projector-camera systems. It aims to find a projector input image, named compensation image, such that when projected it cancels the geometric and photometric distortions due to the physical environment and hardware. State-of-the-art methods use deep learning to address this problem and show promising performance for low-resolution setups. However, directly applying deep learning to high-resolution setups is impractical due to the long training time and high memory cost. To address this issue, this paper proposes a practical full compensation solution. Firstly, we design an attention-based grid refinement network to improve geometric correction quality. Secondly, we integrate a novel sampling scheme into an end-to-end compensation network to alleviate computation and introduce attention blocks to preserve key features. Finally, we construct a benchmark dataset for high-resolution projector full compensation. In experiments, our method demonstrates clear advantages in both efficiency and quality.
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