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Depth Estimation Network for Dual Defocused Images with Different Depth-of-Field

机译:具有不同景深的双散焦图像的深度估计网络

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In this work, we propose an algorithm to estimate the depth map of a scene using defocused images. In particular, the depth map is estimated using two defocused images with different depth-of-field for the same scene. Similar to the approach of the general depth from defocus (DFD), the proposed algorithm obtains the depth information from the blurredness of the object. Moreover, our proposed algorithm dramatically improves the accuracy by using both the shallow and deep depth-of-field images, simultaneously. Especially, we propose a novel depth estimation network for dual defocused images using convolutional neural network (CNN). We evaluate our proposed network on the NYU-v2 dataset and show superior performance compared to the existing techniques.
机译:在这项工作中,我们提出了一种使用散焦图像估计场景深度图的算法。特别地,对于同一场景,使用具有不同景深的两个散焦图像来估计深度图。与一般的离焦深度(DFD)方法类似,该算法从物体的模糊度获得深度信息。此外,我们提出的算法通过同时使用浅景深图像和深景深图像,极大地提高了精度。特别是,我们使用卷积神经网络(CNN)为双散焦图像提出了一种新颖的深度估计网络。我们在NYU-v2数据集上评估了我们提出的网络,并显示了与现有技术相比更高的性能。

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