论文标题
偏光滤光片摄像机的深度示例性
Deep Demosaicing for Polarimetric Filter Array Cameras
论文作者
论文摘要
极化滤光片阵列(PFA)摄像机允许以简单且具有成本效益的方式分析光极化状态。此类过滤器阵列可以像颜色摄像机的拜耳图案一样工作,具有相似的优势和缺点。除其他外,考虑到PFA的局部变化和成像场景的特征,必须将原始图像刻板。非线性效应,例如相邻像素之间的串扰,很难明确模型,并提出了数据驱动的学习方法的潜在优势。但是,无法从传感器中删除PFA,因此很难获得训练的基础极化状态。在这项工作中,我们提出了一个基于CNN的新型模型,该模型将原始摄像头图像直接示例为每个像素stokes向量。我们的贡献是双重的。首先,我们提出了一个网络架构,该网络体系结构由一系列与不同过滤器的局部布置连贯地运行的摩擦卷积组成。其次,我们介绍了一种新方法,采用消费者LCD屏幕,有效地获取用于培训的现实世界数据。该过程被设计为通过监视伽马和外部照明条件不变。我们将我们的方法与算法和基于学习的演示技术进行了广泛的比较,尤其是在极化角度方面的误差始终如一。
Polarisation Filter Array (PFA) cameras allow the analysis of light polarisation state in a simple and cost-effective manner. Such filter arrays work as the Bayer pattern for colour cameras, sharing similar advantages and drawbacks. Among the others, the raw image must be demosaiced considering the local variations of the PFA and the characteristics of the imaged scene. Non-linear effects, like the cross-talk among neighbouring pixels, are difficult to explicitly model and suggest the potential advantage of a data-driven learning approach. However, the PFA cannot be removed from the sensor, making it difficult to acquire the ground-truth polarization state for training. In this work we propose a novel CNN-based model which directly demosaics the raw camera image to a per-pixel Stokes vector. Our contribution is twofold. First, we propose a network architecture composed by a sequence of Mosaiced Convolutions operating coherently with the local arrangement of the different filters. Second, we introduce a new method, employing a consumer LCD screen, to effectively acquire real-world data for training. The process is designed to be invariant by monitor gamma and external lighting conditions. We extensively compared our method against algorithmic and learning-based demosaicing techniques, obtaining a consistently lower error especially in terms of polarisation angle.