Feature selection is essential for effective visual recognition. We propose an efficient joint classifier learning and feature selection method that discovers sparse, compact representations of input features from a vast sea of candidates, with an almost unsupervised formulation. Our method requires only the following knowledge, which we call the feature sign - whether or not a particular feature has on average stronger values over positive samples than over negatives. We show how this can be estimated using as few as a single labeled training sample per class. Then, using these feature signs, we extend an initial supervised learning problem into an (almost) unsupervised clustering formulation that can incorporate new data without requiring...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
In this paper we address the problem of structured feature selection in a multi-class classification...
Recently, newly invented features (e.g. Fisher vector, VLAD) have achieved state-of-the-art performa...
© 2017 IEEE. Video semantic recognition usually suffers from the curse of dimensionality and the abs...
Video analysis has been attracting increasing research due to the proliferation of internet videos. ...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
To improve both the efficiency and accuracy of video semantic recognition, we can perform feature se...
A large part of the current success of deep learning lies in the effectiveness of data -- more preci...
With the rapid advancement of deep learning techniques in computer vision, researchers have achieved...
With the number of videos growing rapidly in modern society, automatically recognizing objects from ...
Data representation is the core of all machine learning algorithms, and their performance depends mo...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
Along with the improvement of data acquisition techniques and the increasing computational capacity ...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
In this paper we address the problem of structured feature selection in a multi-class classification...
Recently, newly invented features (e.g. Fisher vector, VLAD) have achieved state-of-the-art performa...
© 2017 IEEE. Video semantic recognition usually suffers from the curse of dimensionality and the abs...
Video analysis has been attracting increasing research due to the proliferation of internet videos. ...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
To improve both the efficiency and accuracy of video semantic recognition, we can perform feature se...
A large part of the current success of deep learning lies in the effectiveness of data -- more preci...
With the rapid advancement of deep learning techniques in computer vision, researchers have achieved...
With the number of videos growing rapidly in modern society, automatically recognizing objects from ...
Data representation is the core of all machine learning algorithms, and their performance depends mo...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
Along with the improvement of data acquisition techniques and the increasing computational capacity ...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
In this paper we address the problem of structured feature selection in a multi-class classification...