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Generalized Assorted Camera Arrays: Robust Cross-Channel Registration and Applications

机译:通用分类相机阵列:强大的跨通道配准和应用

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摘要

One popular technique for multimodal imaging is generalized assorted pixels (GAP), where an assorted pixel array on the image sensor allows for multimodal capture. Unfortunately, GAP is limited in its applicability because of the need for multimodal filters that are amenable with semiconductor fabrication processes and results in a fixed multimodal imaging configuration. In this paper, we advocate for generalized assorted camera (GAC) arrays for multimodal imaging—i.e., a camera array with filters of different characteristics placed in front of each camera aperture. The GAC provides us with three distinct advantages over GAP: ease of implementation, flexible application-dependent imaging since filters are external and can be changed and depth information that can be used for enabling novel applications (e.g., postcapture refocusing). The primary challenge in GAC arrays is that since the different modalities are obtained from different viewpoints, there is a need for accurate and efficient cross-channel registration. Traditional approaches such as sum-of-squared differences, sum-of-absolute differences, and mutual information all result in multimodal registration errors. Here, we propose a robust cross-channel matching cost function, based on aligning normalized gradients, which allows us to compute cross-channel subpixel correspondences for scenes exhibiting nontrivial geometry. We highlight the promise of GAC arrays with our cross-channel normalized gradient cost for several applications such as low-light imaging, postcapture refocusing, skin perfusion imaging using color + near infrared, and hyperspectral imaging.
机译:用于多模式成像的一种流行技术是广义分类像素(GAP),其中图像传感器上的分类像素阵列允许进行多模式捕获。不幸的是,由于需要适用于半导体制造工艺并导致固定的多峰成像配置的多峰滤波器,GAP的适用性受到限制。在本文中,我们提倡针对多模式成像的广义分类相机(GAC)阵列-即,在每个相机光圈前面放置具有不同特性的滤镜的相机阵列。与GAP相比,GAC为我们提供了三个明显的优势:易于实现,灵活的与应用相关的成像(由于滤镜位于外部且可以更改)和深度信息(可用于实现新颖的应用)(例如,捕获后重新聚焦)。 GAC阵列的主要挑战在于,由于从不同的角度获得了不同的模态,因此需要准确而有效的跨通道配准。平方和差,绝对和差以及互信息之类的传统方法都会导致多模式配准错误。在这里,我们基于对齐的归一化梯度,提出了一个健壮的跨通道匹配代价函数,该函数允许我们为展现非平凡几何体的场景计算跨通道子像素对应关系。我们以跨通道归一化梯度成本为多种应用强调了GAC阵列的前景,这些应用包括低光成像,捕获后重新聚焦,使用彩色+近红外光的皮肤灌注成像以及高光谱成像。

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