Spectral decomposition subject to pairwise geometric constraints is one of the most successful image matching (correspondence establishment) methods which is widely used in image retrieval, recognition, registration, and stitching. When the number of candidate correspondences is large, the eigen-decomposition of the affinity matrix is time consuming and therefore is not suitable for real-time computer vision. To overcome the drawback, in this letter we propose to treat each candidate correspondence not only as a candidate but also as a voter. As a voter, it gives voting scores to other candidate correspondences. Based on the voting scores, the optimal correspondences are computed by simple addition and ranking operations. Experimental resul...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
For the problem of image registration, the top few reliable correspondences are often relatively eas...
Graph matching is a fundamental problem in Computer Vision and Machine Learning. We present two cont...
Due to limited computational resource, image matching on mobile phone places great demand on efficie...
In this paper we propose a novel solution to the multi-view matching problem that, given a set of no...
This paper challenges the difficult problem of automatic semantic correspondence between two given s...
A wide range of properties and assumptions determine the most appropriate spatial matching model for...
A fundamental problem faced by stereo vision algorithms is that of determining correspondences betwe...
A novel algorithm is presented that searches for matching local regions between two images. The sche...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
Image matching plays an important role in many fields, such as computer vision, remote sensing and m...
Abstract- Depth from stereo is one of the most active research areas in the computer vision field. T...
We present a new method for detecting point matches between two images without using any combinatori...
This paper deals with designing algorithms based on the ”stable marriages ” paradigm, for them to ta...
Block matching is a popular and powerful technique for stereo vision, visual tracking, object recogn...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
For the problem of image registration, the top few reliable correspondences are often relatively eas...
Graph matching is a fundamental problem in Computer Vision and Machine Learning. We present two cont...
Due to limited computational resource, image matching on mobile phone places great demand on efficie...
In this paper we propose a novel solution to the multi-view matching problem that, given a set of no...
This paper challenges the difficult problem of automatic semantic correspondence between two given s...
A wide range of properties and assumptions determine the most appropriate spatial matching model for...
A fundamental problem faced by stereo vision algorithms is that of determining correspondences betwe...
A novel algorithm is presented that searches for matching local regions between two images. The sche...
Abstract. Many computer vision applications require computing structure and feature correspondence a...
Image matching plays an important role in many fields, such as computer vision, remote sensing and m...
Abstract- Depth from stereo is one of the most active research areas in the computer vision field. T...
We present a new method for detecting point matches between two images without using any combinatori...
This paper deals with designing algorithms based on the ”stable marriages ” paradigm, for them to ta...
Block matching is a popular and powerful technique for stereo vision, visual tracking, object recogn...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
For the problem of image registration, the top few reliable correspondences are often relatively eas...
Graph matching is a fundamental problem in Computer Vision and Machine Learning. We present two cont...