© 2014 IEEE. To improve both the efficiency and accuracy of video semantic recognition, we can perform feature selection on the extracted video features to select a subset of features from the high-dimensional feature set for a compact and accurate video data representation. Provided the number of labeled videos is small, supervised feature selection could fail to identify the relevant features that are discriminative to target classes. In many applications, abundant unlabeled videos are easily accessible. This motivates us to develop semisupervised feature selection algorithms to better identify the relevant video features, which are discriminative to target classes by effectively exploiting the information underlying the huge amount of un...
In this paper we present a novel technique for object modeling and object recognition in video. Give...
AbstractThis paper presents a fast and simple method for human action recognition. The proposed tech...
[[abstract]]Most learning-based video semantic analysis methods require a large training set to achi...
To improve both the efficiency and accuracy of video semantic recognition, we can perform feature se...
© 2017 IEEE. Video semantic recognition usually suffers from the curse of dimensionality and the abs...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
Feature selection is essential for effective visual recognition. We propose an efficient joint class...
Recently, newly invented features (e.g. Fisher vector, VLAD) have achieved state-of-the-art performa...
In this paper, we propose a novel semi-supervised feature analyzing framework for multimedia data un...
Dictionary learning (DL) and sparse representation (SR) based classifiers have greatly impacted the ...
Recognizing actions is one of the important challenges in computer vision with respect to video data...
Abstract—In this paper, we present an approach for regression-based feature selection in human activ...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
With the number of videos growing rapidly in modern society, automatically recognizing objects from ...
Human action recognition is the process of labeling a video according to human behavior. This proces...
In this paper we present a novel technique for object modeling and object recognition in video. Give...
AbstractThis paper presents a fast and simple method for human action recognition. The proposed tech...
[[abstract]]Most learning-based video semantic analysis methods require a large training set to achi...
To improve both the efficiency and accuracy of video semantic recognition, we can perform feature se...
© 2017 IEEE. Video semantic recognition usually suffers from the curse of dimensionality and the abs...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
Feature selection is essential for effective visual recognition. We propose an efficient joint class...
Recently, newly invented features (e.g. Fisher vector, VLAD) have achieved state-of-the-art performa...
In this paper, we propose a novel semi-supervised feature analyzing framework for multimedia data un...
Dictionary learning (DL) and sparse representation (SR) based classifiers have greatly impacted the ...
Recognizing actions is one of the important challenges in computer vision with respect to video data...
Abstract—In this paper, we present an approach for regression-based feature selection in human activ...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
With the number of videos growing rapidly in modern society, automatically recognizing objects from ...
Human action recognition is the process of labeling a video according to human behavior. This proces...
In this paper we present a novel technique for object modeling and object recognition in video. Give...
AbstractThis paper presents a fast and simple method for human action recognition. The proposed tech...
[[abstract]]Most learning-based video semantic analysis methods require a large training set to achi...