Conventional visual recognition systems usually train an image classifier in a bath mode with all training data provided in advance. However, in many practical applications, only a small amount of training samples are available in the beginning and many more would come sequentially during online recognition. Because the image data characteristics could change over time, it is important for the classifier to adapt to the new data incrementally. In this paper, we present an online metric learning method to address the online scene recognition problem via adaptive similarity measurement. Given a number of labeled data followed by a sequential input of unseen testing samples, the similarity metric is learned to maximize the margin of the distan...
In this paper, we propose a general model to address the overfitting problem in online similarity le...
Person re-identification is to match persons appearing across non-overlapping cameras. The matching ...
Deep metric learning aims to learn a deep embedding that can capture the semantic similarity of data...
Abstract — Conventional visual recognition systems usually train an image classifier in a bath mode ...
Image classification is a key problem in computer vision community. Most of the conventional visual ...
Visual object tracking can be considered as an online procedure to adaptively measure the foreground...
In this paper, we propose online metric learning tracking method that consider visual tracking as a ...
In this paper, we propose a visual tracker based on a metric-weighted linear representation of appea...
By considering visual tracking as a similarity matching problem, we propose a self-supervised tracki...
By considering visual tracking as a similarity matching problem, we propose a self-supervised tracki...
Recently, many machine learning problems rely on a valuable tool: metric learning. However, in many ...
Within the eld of image and video recognition, the traditional approach is a dataset split into xed ...
Most sparse linear representation-based trackers need to solve a computationally expensive `1-regula...
Learning similarity and distance measures has become increasingly important for the analysis, matchi...
Learning a measure of similarity between pairs of objects is a fundamental prob-lem in machine learn...
In this paper, we propose a general model to address the overfitting problem in online similarity le...
Person re-identification is to match persons appearing across non-overlapping cameras. The matching ...
Deep metric learning aims to learn a deep embedding that can capture the semantic similarity of data...
Abstract — Conventional visual recognition systems usually train an image classifier in a bath mode ...
Image classification is a key problem in computer vision community. Most of the conventional visual ...
Visual object tracking can be considered as an online procedure to adaptively measure the foreground...
In this paper, we propose online metric learning tracking method that consider visual tracking as a ...
In this paper, we propose a visual tracker based on a metric-weighted linear representation of appea...
By considering visual tracking as a similarity matching problem, we propose a self-supervised tracki...
By considering visual tracking as a similarity matching problem, we propose a self-supervised tracki...
Recently, many machine learning problems rely on a valuable tool: metric learning. However, in many ...
Within the eld of image and video recognition, the traditional approach is a dataset split into xed ...
Most sparse linear representation-based trackers need to solve a computationally expensive `1-regula...
Learning similarity and distance measures has become increasingly important for the analysis, matchi...
Learning a measure of similarity between pairs of objects is a fundamental prob-lem in machine learn...
In this paper, we propose a general model to address the overfitting problem in online similarity le...
Person re-identification is to match persons appearing across non-overlapping cameras. The matching ...
Deep metric learning aims to learn a deep embedding that can capture the semantic similarity of data...