Person re-identification is a fundamental task in many computer vision and image understanding systems. Due to appearance variations from different camera views, person re-identification still poses an important challenge. In the literature, KISSME has already been introduced as an effective distance metric learning method using pairwise constraints to improve the re-identification performance. Computationally, it only requires two inverse covariance matrix estimations. However, the linear transformation induced by KISSME is not powerful enough for more complex problems. We show that KISSME can be kernelized, resulting in a nonlinear transformation, which is suitable for many real-world applications. Moreover, the proposed kernel method can...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...
Metric learning aims to construct an embedding where two extracted features corresponding to the sam...
Abstract. Re-identification of individuals across camera networks with limited or no overlapping fie...
Person re-identification is a fundamental task in many computer vision and image understanding syste...
Person re-identification is a fundamental task in many computer vision and image understanding syste...
Abstract—This paper deals with person re-identification in a multi-camera scenario with non-overlapp...
This paper deals with person re-identification in a multi-camera scenario with non-overlapping field...
<p>Person re-identification problem is targeting to match people in the views of non-overlapped came...
Person re-identification in a non-overlapping multi-camera scenario is an open and interesting chall...
Person re-identification is to match persons appearing across non-overlapping cameras. The matching ...
This paper presents a novel person re-identification framework based on data fusion. The pipeline of...
Metric learning is an important issue in person re-identification, and Mahalanobis-distance based me...
Person re-identification is becoming a hot research topic due to its value in both machine learning ...
Person re-identification, aiming to identify the same pedestrian images across disjoint camera views...
Person re-identification is an open and challenging problem in computer vision. A surge of effort ha...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...
Metric learning aims to construct an embedding where two extracted features corresponding to the sam...
Abstract. Re-identification of individuals across camera networks with limited or no overlapping fie...
Person re-identification is a fundamental task in many computer vision and image understanding syste...
Person re-identification is a fundamental task in many computer vision and image understanding syste...
Abstract—This paper deals with person re-identification in a multi-camera scenario with non-overlapp...
This paper deals with person re-identification in a multi-camera scenario with non-overlapping field...
<p>Person re-identification problem is targeting to match people in the views of non-overlapped came...
Person re-identification in a non-overlapping multi-camera scenario is an open and interesting chall...
Person re-identification is to match persons appearing across non-overlapping cameras. The matching ...
This paper presents a novel person re-identification framework based on data fusion. The pipeline of...
Metric learning is an important issue in person re-identification, and Mahalanobis-distance based me...
Person re-identification is becoming a hot research topic due to its value in both machine learning ...
Person re-identification, aiming to identify the same pedestrian images across disjoint camera views...
Person re-identification is an open and challenging problem in computer vision. A surge of effort ha...
© 2017 IEEE. Despite the promising progress made in recent years, person re-identification remains a...
Metric learning aims to construct an embedding where two extracted features corresponding to the sam...
Abstract. Re-identification of individuals across camera networks with limited or no overlapping fie...