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 291300 of 517 papers

TitleStatusHype
Superpixel Cost Volume Excitation for Stereo Matching0
SurgPose: a Dataset for Articulated Robotic Surgical Tool Pose Estimation and Tracking0
Survey on Semantic Stereo Matching / Semantic Depth Estimation0
SyntStereo2Real: Edge-Aware GAN for Remote Sensing Image-to-Image Translation while Maintaining Stereo Constraint0
The Global Patch Collider0
The Sampling-Gaussian for stereo matching0
These Maps Are Made by Propagation: Adapting Deep Stereo Networks to Road Scenarios with Decisive Disparity Diffusion0
TiCoSS: Tightening the Coupling between Semantic Segmentation and Stereo Matching within A Joint Learning Framework0
Towards Adversarially Robust and Domain Generalizable Stereo Matching by Rethinking DNN Feature Backbones0
Tracking Live Fish from Low-Contrast and Low-Frame-Rate Stereo Videos0
Show:102550
← PrevPage 30 of 52Next →

No leaderboard results yet.