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Monocular Depth Estimation

Monocular Depth Estimation is the task of estimating the depth value (distance relative to the camera) of each pixel given a single (monocular) RGB image. This challenging task is a key prerequisite for determining scene understanding for applications such as 3D scene reconstruction, autonomous driving, and AR. State-of-the-art methods usually fall into one of two categories: designing a complex network that is powerful enough to directly regress the depth map, or splitting the input into bins or windows to reduce computational complexity. The most popular benchmarks are the KITTI and NYUv2 datasets. Models are typically evaluated using RMSE or absolute relative error.

Source: Defocus Deblurring Using Dual-Pixel Data

Papers

Showing 291300 of 876 papers

TitleStatusHype
Feature-metric Loss for Self-supervised Learning of Depth and EgomotionCode1
Implicit Integration of Superpixel Segmentation into Fully Convolutional NetworksCode1
Improving Deep Regression with Ordinal EntropyCode1
Improving 360 Monocular Depth Estimation via Non-local Dense Prediction Transformer and Joint Supervised and Self-supervised LearningCode1
Fine-grained Semantics-aware Representation Enhancement for Self-supervised Monocular Depth EstimationCode1
RM-Depth: Unsupervised Learning of Recurrent Monocular Depth in Dynamic ScenesCode1
InSpaceType: Reconsider Space Type in Indoor Monocular Depth EstimationCode1
InSpaceType: Dataset and Benchmark for Reconsidering Cross-Space Type Performance in Indoor Monocular DepthCode1
RePoseD: Efficient Relative Pose Estimation With Known Depth InformationCode1
Single Image Depth Estimation Trained via Depth from Defocus CuesCode1
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