We propose a visual event recognition framework for consumer domain videos by leveraging a large amount of loosely labeled web videos (e.g., from YouTube). First, we propose a new aligned space-time pyramid matching method to measure the distances between two video clips, where each video clip is divided into space-time volumes over multiple levels. We calculate the pair-wise distances between any two volumes and further integrate the information from different volumes with Integer-flow Earth Mover's Distance (EMD) to explicitly align the volumes. Second, we propose a new cross-domain learning method in order to 1) fuse the information from multiple pyramid levels and features (i.e., space-time feature and static SIFT feature) and 2) cope w...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
In this work, we propose to leverage a large number of loosely labeled web videos (e.g., from YouTub...
This report summarizes the work that has been done in the final year project of recognizing visual e...
Recent work has demonstrated the effectiveness of domain adaptation methods for computer vision appl...
In recent decades, transfer learning has attracted intensive attention from researchers and become a...
In the last decade, we have witnessed exponential growth of visual content in internet social media ...
The report provides a detailed documentation on the methods implemented and evaluations carried out ...
The report provides a detailed documentation on the methods implemented and evaluations carried out ...
Human action recognition is an increasingly important research topic in the fields of video sensing,...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
We propose a visual event recognition framework for consumer videos by leveraging a large amount of ...
In this work, we propose to leverage a large number of loosely labeled web videos (e.g., from YouTub...
This report summarizes the work that has been done in the final year project of recognizing visual e...
Recent work has demonstrated the effectiveness of domain adaptation methods for computer vision appl...
In recent decades, transfer learning has attracted intensive attention from researchers and become a...
In the last decade, we have witnessed exponential growth of visual content in internet social media ...
The report provides a detailed documentation on the methods implemented and evaluations carried out ...
The report provides a detailed documentation on the methods implemented and evaluations carried out ...
Human action recognition is an increasingly important research topic in the fields of video sensing,...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...
Graduation date: 2011Access restricted to the OSU Community at author's request from May 12, 2011 - ...
In recent years, the task of event recognition from videos has attracted increasing interest in mult...