It is of great importance to extract and validate an optimal subset of non-dominated features for effective multi-label classification. However, deciding on the best subset of features is an NP-Hard problem and plays a key role in improving the prediction accuracy and the processing time of video datasets. In this study, we propose autoencoders for dimensionality reduction of video data sets and ensemble the features extracted by the multi-objective evolutionary Non-dominated Sorting Genetic Algorithm and the autoencoder. We explore the performance of well-known multi-label classification algorithms for video datasets in terms of prediction accuracy and the number of features used. More specifically, we evaluate Non-dominated Sorting Geneti...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
This paper presents a comparative evaluation of popular multi-label classification methods on severa...
Abstract. Image and video annotations are challenging but important tasks to understand digital mult...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
There are few studies in the literature to address the multi-objective multi-label feature selection...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
Feature selection is essential for effective visual recognition. We propose an efficient joint class...
This paper reports robustness comparison of clustering-based multi-label classification methods vers...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
Video analysis has been attracting increasing research due to the proliferation of internet videos. ...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
AbstractThis paper presents an evolutionary algorithm based technique to solve multi-objective featu...
Labeling video data is an essential prerequisite for many vision applications that depend on trainin...
Video semantic concept detection is considered as an important research problem by the multimedia in...
This project is a part of the YouTube-8M Video Understanding Challenge. The challenge asks participa...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
This paper presents a comparative evaluation of popular multi-label classification methods on severa...
Abstract. Image and video annotations are challenging but important tasks to understand digital mult...
It is of great importance to extract and validate an optimal subset of non-dominated features for ef...
There are few studies in the literature to address the multi-objective multi-label feature selection...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
Feature selection is essential for effective visual recognition. We propose an efficient joint class...
This paper reports robustness comparison of clustering-based multi-label classification methods vers...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
Video analysis has been attracting increasing research due to the proliferation of internet videos. ...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
AbstractThis paper presents an evolutionary algorithm based technique to solve multi-objective featu...
Labeling video data is an essential prerequisite for many vision applications that depend on trainin...
Video semantic concept detection is considered as an important research problem by the multimedia in...
This project is a part of the YouTube-8M Video Understanding Challenge. The challenge asks participa...
Abstract Video data are usually represented by high dimensional features. The performance of video s...
This paper presents a comparative evaluation of popular multi-label classification methods on severa...
Abstract. Image and video annotations are challenging but important tasks to understand digital mult...