SOTAVerified

Stereo Matching

Stereo Matching is one of the core technologies in computer vision, which recovers 3D structures of real world from 2D images. It has been widely used in areas such as autonomous driving, augmented reality and robotics navigation. Given a pair of rectified stereo images, the goal of Stereo Matching is to compute the disparity for each pixel in the reference image, where disparity is defined as the horizontal displacement between a pair of corresponding pixels in the left and right images.

Source: Adaptive Unimodal Cost Volume Filtering for Deep Stereo Matching

Papers

Showing 176200 of 517 papers

TitleStatusHype
Distilling Stereo Networks for Performant and Efficient Leaner NetworksCode0
Learning for Disparity Estimation through Feature ConstancyCode0
Learning Inverse Depth Regression for Multi-View Stereo with Correlation Cost VolumeCode0
Bayesian dense inverse searching algorithm for real-time stereo matching in minimally invasive surgeryCode0
Improved Stereo Matching with Constant Highway Networks and Reflective Confidence LearningCode0
Color Agnostic Cross-Spectral Disparity EstimationCode0
Icy Moon Surface Simulation and Stereo Depth Estimation for Sampling AutonomyCode0
Extending Monocular Visual Odometry to Stereo Camera Systems by Scale OptimizationCode0
Digging Into Normal Incorporated Stereo MatchingCode0
LeanStereo: A Leaner Backbone based Stereo NetworkCode0
Fast Feature Extraction with CNNs with Pooling LayersCode0
Guided Stereo MatchingCode0
Detect, Replace, Refine: Deep Structured Prediction For Pixel Wise LabelingCode0
Adaptive Unimodal Cost Volume Filtering for Deep Stereo MatchingCode0
Hierarchical Deep Stereo Matching on High-resolution ImagesCode0
ASV: Accelerated Stereo Vision SystemCode0
Hierarchical Discrete Distribution Decomposition for Match Density EstimationCode0
Learning Depth with Convolutional Spatial Propagation NetworkCode0
Depth Map Estimation and Colorization of Anaglyph Images Using Local Color Prior and Reverse Intensity Distribution0
Depth From Semi-Calibrated Stereo and Defocus0
A Survey on Deep Learning Techniques for Stereo-based Depth Estimation0
Depth from Monocular Images using a Semi-Parallel Deep Neural Network (SPDNN) Hybrid Architecture0
Adaptive Deconvolution-based stereo matching Net for Local Stereo Matching0
Depth Estimation Analysis of Orthogonally Divergent Fisheye Cameras with Distortion Removal0
A shallow feature extraction network with a large receptive field for stereo matching tasks0
Show:102550
← PrevPage 8 of 21Next →

No leaderboard results yet.