深度从像差图

M. Kashiwagi, Nao Mishima, Tatsuo Kozakaya, S. Hiura
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引用次数: 8

摘要

被动且方便的单张图像深度估计仍然是一个有待解决的问题。现有的离焦深度方法需要多个输入图像或特殊的硬件定制。目前的深单目深度估计也仅限于具有足够上下文信息的图像。在这项工作中,我们提出了一种基于物理深度线索的单镜头深度测量方法。当相机拍摄散焦图像时,它包含与图像传感器的距离和图像平面上的位置相应的各种类型的像差。我们将这些微小而复杂的复合像差称为像差图(A-Map),我们发现A-Map可以作为可靠的物理深度线索。此外,我们还提出了我们的深度网络——A-Map分析网络(AMA-Net),它可以通过A-Map有效地学习和估计深度。为了评估我们方法的有效性和鲁棒性,我们使用真实的户外场景和模拟图像进行了广泛的实验。定性结果表明,与目前最先进的基于深度上下文的方法相比,该方法的准确性和可用性。
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Deep Depth From Aberration Map
Passive and convenient depth estimation from single-shot image is still an open problem. Existing depth from defocus methods require multiple input images or special hardware customization. Recent deep monocular depth estimation is also limited to an image with sufficient contextual information. In this work, we propose a novel method which realizes a single-shot deep depth measurement based on physical depth cue using only an off-the-shelf camera and lens. When a defocused image is taken by a camera, it contains various types of aberrations corresponding to distances from the image sensor and positions in the image plane. We call these minute and complexly compound aberrations as Aberration Map (A-Map) and we found that A-Map can be utilized as reliable physical depth cue. Additionally, our deep network named A-Map Analysis Network (AMA-Net) is also proposed, which can effectively learn and estimate depth via A-Map. To evaluate validity and robustness of our approach, we have conducted extensive experiments using both real outdoor scenes and simulated images. The qualitative result shows the accuracy and availability of the method in comparison with a state-of-the-art deep context-based method.
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