Cross-domain matching is a challenging problem with several applications like face recognition across pose and resolution, heterogeneous face recognition, etc. Coupled dictionary learning has emerged as a powerful technique for addressing such problems. A novel approach based on aligning two orthogonal dictionaries constructed independently from the two domains is proposed in this work. Once the dictionaries are constructed, the correspondence between the dictionary atoms of the two domains are computed using bipartite graph matching in a common space. A Mahalanobis metric is then derived from sparse coefficient vectors of the aligned dictionaries of the two domains such that the coefficients from data of same class move closer and that of ...
Abstract — Dictionary learning algorithms have been success-fully used for both reconstructive and d...
Cross-domain image synthesis and recognition are typi-cally considered as two distinct tasks in the ...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Cross-domain matching is a challenging problem with several applications like face recognition acros...
Cross domain and cross-modal matching has many applications in the field of computer vision and patt...
Abstract. Real world applicability of many computer vision solutions is constrained by the mismatch ...
Coupled dictionary learning (CDL) has recently emerged as a powerful technique with wide variety of ...
Recently, near-infrared (NIR) images are increasingly being captured for recognizing faces in low-li...
Recently, dictionary learning has become an active topic. However, the majority of dictionary learni...
Abstract Re-identification refers to the problem of recognizing a person at a dif-ferent location af...
Matching with hidden information which is available only during training and not during testing has ...
We propose a joint representation and classification framework that achieves the dual goal of findin...
This paper presents a new multisupervised coupled metric learning (MS-CML) method for low-resolution...
Unsupervised domain adaptation has been proved to be a promising approach to solve the problem of da...
Unsupervised joint alignment of images has been demonstrated to improve performance on recognition t...
Abstract — Dictionary learning algorithms have been success-fully used for both reconstructive and d...
Cross-domain image synthesis and recognition are typi-cally considered as two distinct tasks in the ...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Cross-domain matching is a challenging problem with several applications like face recognition acros...
Cross domain and cross-modal matching has many applications in the field of computer vision and patt...
Abstract. Real world applicability of many computer vision solutions is constrained by the mismatch ...
Coupled dictionary learning (CDL) has recently emerged as a powerful technique with wide variety of ...
Recently, near-infrared (NIR) images are increasingly being captured for recognizing faces in low-li...
Recently, dictionary learning has become an active topic. However, the majority of dictionary learni...
Abstract Re-identification refers to the problem of recognizing a person at a dif-ferent location af...
Matching with hidden information which is available only during training and not during testing has ...
We propose a joint representation and classification framework that achieves the dual goal of findin...
This paper presents a new multisupervised coupled metric learning (MS-CML) method for low-resolution...
Unsupervised domain adaptation has been proved to be a promising approach to solve the problem of da...
Unsupervised joint alignment of images has been demonstrated to improve performance on recognition t...
Abstract — Dictionary learning algorithms have been success-fully used for both reconstructive and d...
Cross-domain image synthesis and recognition are typi-cally considered as two distinct tasks in the ...
Cross-modal recognition and matching with privileged information are important challenging problems ...