RayNet: Learning Volumetric 3D Reconstruction with Ray Potentials
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چکیده
In this paper, we consider the problem of reconstructing a dense 3D model using images captured from different views. Recent methods based on convolutional neural networks (CNN) allow learning the entire task from data. However, they do not incorporate the physics of image formation such as perspective geometry and occlusion. Instead, classical approaches based on Markov Random Fields (MRF) with ray-potentials explicitly model these physical processes, but they cannot cope with large surface appearance variations across different viewpoints. In this paper, we propose RayNet, which combines the strengths of both frameworks. RayNet integrates a CNN that learns view-invariant feature representations with an MRF that explicitly encodes the physics of perspective projection and occlusion. We train RayNet end-to-end using empirical risk minimization. We thoroughly evaluate our approach on challenging real-world datasets and demonstrate its benefits over a piece-wise trained baseline, hand-crafted models as well as other learning-based approaches.
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Supplementary Material for RayNet: Learning Volumetric 3D Reconstruction with Ray Potentials
In this supplementary document, we present our inference algorithm as well as additional qualitative results. We start by deriving the message expressions for the sum-product belief propagation algorithm used for approximate inference in our Markov Random Field. Subsequently, we show additional results from the aerial dataset from different viewpoints and we compare RayNet with commonly used di...
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تاریخ انتشار 2018