VA-DepthNet: A Variational Approach to Single Image Depth Prediction

ICLR 2023(2023)

引用 19|浏览52
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摘要
We introduce VA-DepthNet, a simple, effective, and accurate deep neural network approach for a single image depth prediction (SIDP) problem. The proposed approach advocate using classical first-order variational constraints for this problem. While state-of-the-art deep neural network methods for SIDP learn the scene depth from images in a supervised setting, they often overlook the invaluable invariances and priors in the rigid scene space, such as the regularity of the scene. The paper's main contribution is to reveal the benefit of classical and well-founded variational constraints in the neural network design for the SIDP task. It is shown that imposing first-order variational constraints in the scene space together with popular encoder-decoder-based network architecture design provides excellent results for the supervised SIDP task. The imposed first-order variational constraint makes the network aware of the depth gradient in the scene space, i.e., regularity. The paper demonstrates the usefulness of the proposed approach via extensive evaluation and ablation analysis over several benchmark datasets, such as KITTI, NYU Depth V2, and SUN RGB-D. The VA-DepthNet at test time shows considerable improvements in depth prediction accuracy compared to the prior art and is accurate also at high-frequency regions in the scene space. At the time of submission, our method---labeled as VA-DepthNet, when tested on the KITTI official depth-prediction evaluation set, indexed second on the leader board, and our accuracy is top performing among the published method.
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关键词
Single Image Depth Estimation,Variational Approach.
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