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Aperture Supervision for Monocular Depth Estimation

机译:用于单眼深度估计的光圈监控

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We present a novel method to train machine learning algorithms to estimate scene depths from a single image, by using the information provided by a camera's aperture as supervision. Prior works use a depth sensor's outputs or images of the same scene from alternate viewpoints as supervision, while our method instead uses images from the same viewpoint taken with a varying camera aperture. To enable learning algorithms to use aperture effects as supervision, we introduce two differentiable aperture rendering functions that use the input image and predicted depths to simulate the depth-of-field effects caused by real camera apertures. We train a monocular depth estimation network end-to-end to predict the scene depths that best explain these finite aperture images as defocus-blurred renderings of the input all-in-focus image.
机译:我们提出一种新颖的方法来训练机器学习算法,通过使用由相机光圈提供的信息作为监督,从单个图像估计场景深度。以前的工作使用深度传感器的输出或来自其他视点的同一场景的图像作为监视,而我们的方法改为使用通过变化的相机光圈拍摄的相同视点的图像。为了使学习算法能够使用光圈效果作为监督,我们引入了两个可区分的光圈渲染功能,这些功能使用输入图像和预测深度来模拟由真实相机光圈引起的景深效果。我们端到端训练一个单眼深度估计网络,以预测最能解释这些有限孔径图像的景深,作为输入全焦点图像的散焦模糊渲染。

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