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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 361370 of 517 papers

TitleStatusHype
Multi-Spectral Visual Odometry without Explicit Stereo Matching0
OmniMVS: End-to-End Learning for Omnidirectional Stereo MatchingCode0
Stereo Event Lifetime and Disparity Estimation for Dynamic Vision Sensors0
End-to-End Learning of Multi-scale Convolutional Neural Network for Stereo Matching0
Appearance and Shape from Water Reflection0
TW-SMNet: Deep Multitask Learning of Tele-Wide Stereo Matching0
Local Detection of Stereo Occlusion Boundaries0
SDC - Stacked Dilated Convolution: A Unified Descriptor Network for Dense Matching Tasks0
DrivingStereo: A Large-Scale Dataset for Stereo Matching in Autonomous Driving Scenarios0
Multi-Level Context Ultra-Aggregation for Stereo Matching0
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