双摄像头全聚焦神经辐射场

IF 18.6
Xianrui Luo;Zijin Wu;Juewen Peng;Huiqiang Sun;Zhiguo Cao;Guosheng Lin
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引用次数: 0

摘要

我们提出了第一个能够从输入合成全聚焦神经辐射场(NeRF)的框架,而无需手动重新聚焦。如果不重新对焦,相机将自动对焦在所有视图的固定物体上,目前的NeRF方法通常使用一个相机失败,因为一致的散焦模糊和缺乏清晰的参考。为了恢复全焦NeRF,我们引入了智能手机的双摄像头,其中超广角摄像头具有更宽的景深(DoF),主摄像头具有更高的分辨率。双摄像头保存了主摄像头的高保真细节,并使用超广角摄像头的深景深作为全焦恢复的参考。为此,我们首先实现空间扭曲和颜色匹配来对齐双相机,然后使用具有可学习散焦参数的散焦感知融合模块来预测散焦映射并融合对齐的相机对。我们还建立了一个多视图数据集,其中包括智能手机中主摄像头和超广角摄像头的图像对。在该数据集上进行的大量实验验证了我们的解决方案,称为DC-NeRF,可以产生高质量的全焦点新视图,并且在定量和定性上优于强基线。我们进一步展示了DC-NeRF具有可调模糊强度和焦平面的DoF应用,包括重聚焦和分裂屈光度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual-Camera All-in-Focus Neural Radiance Fields
We present the first framework capable of synthesizing the all-in-focus neural radiance field (NeRF) from inputs without manual refocusing. Without refocusing, the camera will automatically focus on the fixed object for all views, and current NeRF methods typically using one camera fail due to the consistent defocus blur and a lack of sharp reference. To restore the all-in-focus NeRF, we introduce the dual-camera from smartphones, where the ultra-wide camera has a wider depth-of-field (DoF) and the main camera possesses a higher resolution. The dual camera pair saves the high-fidelity details from the main camera and uses the ultra-wide camera’s deep DoF as reference for all-in-focus restoration. To this end, we first implement spatial warping and color matching to align the dual camera, followed by a defocus-aware fusion module with learnable defocus parameters to predict a defocus map and fuse the aligned camera pair. We also build a multi-view dataset that includes image pairs of the main and ultra-wide cameras in a smartphone. Extensive experiments on this dataset verify that our solution, termed DC-NeRF, can produce high-quality all-in-focus novel views and compares favorably against strong baselines quantitatively and qualitatively. We further show DoF applications of DC-NeRF with adjustable blur intensity and focal plane, including refocusing and split diopter.
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