基于深度神经网络的非白色表面投影图像校正

Zewei Wang, Jingjing Zhang, X. Du, Sihua Cao, Wenxuan Wei
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引用次数: 0

摘要

当投影到非白色表面时,由于复杂的亮度和色度信息,投影图像会发生失真或混色,使投影结果与人眼的视觉感知不同。投影图像校正的目的是消除这些影响,传统的解决方案通常是从收集的投影样本中估计参数,计算投影成像过程的逆模型,并尝试拟合校正函数。本文设计了一种基于深度神经网络的投影图像校正网络(PICN),用于隐式学习复杂校正函数。PICN由一个u型骨干网络、一个提取投影表面特征的卷积神经网络和一个优化校正结果的感知损失网络组成。这样的结构既可以提取投影图像的深层特征和表面干涉特征,又可以使校正后的投影图像更符合人的视觉感知。此外,我们搭建了固定全局光照环境下的投影-摄像机系统进行验证实验,通过计算校正前后投影图像的评价指标,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correction of images projected on non-white surfaces based on deep neural network
When projecting onto a non-white surface, the projected image is distorted or color mixing by complex luminance and chrominance information, which makes the projection result different from the visual perception of the human eye. The purpose of projection image correction is to remove these effects, and traditional solutions usually estimate parameters from the collected projection samples, compute an inverse model of the projection imaging process, and try to fit a correction function. In this paper, a deep neural network-based projection image correction network (PICN) is designed to implicitly learn complex correction functions. PICN consists of a U-shaped backbone network, a convolutional neural network that extracts projected surface features, and a perceptual loss network that optimizes the correction results. Such a structure can not only extract the deep features and surface interference features of the projected image, but also make the corrected projected image more in line with human visual perception. In addition, we built a projector-camera system under the condition of a fixed global illumination environment for verification experiment, and proved the effectiveness of the proposed method by calculating the evaluation metrics of projected images before and after correction.
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