Abstract: "A central problem in stereo matching by computing correlation or sum of squared differences (SSD) lies in selecting an appropriate window size. If the window is too small and does not cover enough intensity variation, it gives a poor disparity estimate, because the signal (intensity variation) to noise ratio is low. If, on the other hand, the window is too large and covers a region in which the depth of scene points varies, then the disparity within the window is not constant. As a result, the position of maximum correlation or minimum SSD may not represent a correct estimate of disparity. For this reason, an appropriate window size must be selected locally. There has been, however, little research directed toward the adaptive se...
We present a new, eÆcient stereo algorithm addressing robust disparity estimation in the presence of...
Adaptive support weights and over-parameterized disparity estimation truly improve the accuracy of s...
Binocular stereo vision processes estimate 3D surfaces using a pair of images taken from different p...
peer reviewedThe correspondence problem is one of main topics in stereo vision that, despites being...
Local stereo-matching methods such as sum of squared differences (SSD), while effective in approxima...
Local stereo matching methods are still used widely because they are fast and simple. But the accura...
The aim of stereo matching is to find a corresponding point for each pixel in a reference image of a...
Abstract. One of the central problems in stereo matching (and other image registration tasks) is the...
One of the central problems in stereo matching (and other image registration tasks) is the selection...
The intensity-based stereo matching produces a dense disparity map by using pixel intensities in the...
We propose a new local algorithm for dense stereo matching of gray images. This algorithm is a hybri...
In this paper, we propose an adaptive stereo matching algorithm to encompassing stereo matching prob...
We present a new, efficient stereo algorithm addressing robust disparity estimation in the presence ...
Stereo matching is essential and fundamental in computer vision tasks. In this paper, a novel stereo...
In this paper we present a new method for matching stereo\ud image pairs. This technique is based on...
We present a new, eÆcient stereo algorithm addressing robust disparity estimation in the presence of...
Adaptive support weights and over-parameterized disparity estimation truly improve the accuracy of s...
Binocular stereo vision processes estimate 3D surfaces using a pair of images taken from different p...
peer reviewedThe correspondence problem is one of main topics in stereo vision that, despites being...
Local stereo-matching methods such as sum of squared differences (SSD), while effective in approxima...
Local stereo matching methods are still used widely because they are fast and simple. But the accura...
The aim of stereo matching is to find a corresponding point for each pixel in a reference image of a...
Abstract. One of the central problems in stereo matching (and other image registration tasks) is the...
One of the central problems in stereo matching (and other image registration tasks) is the selection...
The intensity-based stereo matching produces a dense disparity map by using pixel intensities in the...
We propose a new local algorithm for dense stereo matching of gray images. This algorithm is a hybri...
In this paper, we propose an adaptive stereo matching algorithm to encompassing stereo matching prob...
We present a new, efficient stereo algorithm addressing robust disparity estimation in the presence ...
Stereo matching is essential and fundamental in computer vision tasks. In this paper, a novel stereo...
In this paper we present a new method for matching stereo\ud image pairs. This technique is based on...
We present a new, eÆcient stereo algorithm addressing robust disparity estimation in the presence of...
Adaptive support weights and over-parameterized disparity estimation truly improve the accuracy of s...
Binocular stereo vision processes estimate 3D surfaces using a pair of images taken from different p...