The current state-of-the-art in video classification is based on Bag-of-Words using local visual descriptors. Most commonly these are histogram of oriented gradients (HOG), histogram of optical flow (HOF) and motion boundary histograms (MBH) descriptors. While such approach is very powerful for classification, it is also computationally expensive. This paper addresses the problem of computational efficiency. Specifically: (1) We propose several speed-ups for densely sampled HOG, HOF and MBH descriptors and release Matlab code; (2) We investigate the trade-off between accuracy and computational efficiency of descriptors in terms of frame sampling rate and type of Optical Flow method; (3) We investigate the trade-off between accuracy and comp...
International audienceThis paper addresses the task of detecting diverse semantic concepts in videos...
Feature extraction plays a vital role in visual action recognition. Many existing gradient-based fea...
Given a set of algorithms, which one(s) should you apply to, i) compute optical flow, or ii) perform...
The current state-of-the-art in video classification is based on Bag-of-Words using local visual des...
The aim of this PhD thesis is to make a step forward towards teaching computers to understand videos...
In this paper, we have proposed a simple and effective approach to classify H.264 compressed videos,...
Abstract In order to reduce the computational complexity, most of the video classification approache...
International audienceThis paper introduces a video representation based on dense trajectories and m...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
In the field of Computer Vision, Gesture Recognition is kind of crucial problem. What differ video ...
Feature point detection and local feature extraction are the two critical steps in trajectory-based ...
International audienceFeature trajectories have shown to be efficient for representing videos. Typic...
Video sequence classification is the process of recognizing the semantic labels of the given video s...
In this paper we propose a new method for human action categorization by using an effective combinat...
International audienceThis paper addresses the task of detecting diverse semantic concepts in videos...
Feature extraction plays a vital role in visual action recognition. Many existing gradient-based fea...
Given a set of algorithms, which one(s) should you apply to, i) compute optical flow, or ii) perform...
The current state-of-the-art in video classification is based on Bag-of-Words using local visual des...
The aim of this PhD thesis is to make a step forward towards teaching computers to understand videos...
In this paper, we have proposed a simple and effective approach to classify H.264 compressed videos,...
Abstract In order to reduce the computational complexity, most of the video classification approache...
International audienceThis paper introduces a video representation based on dense trajectories and m...
This thesis compares hand-designed features with features learned by feature learning methods in vid...
This thesis presents a framework for automatic recognition of human actions in un- controlled, reali...
In the field of Computer Vision, Gesture Recognition is kind of crucial problem. What differ video ...
Feature point detection and local feature extraction are the two critical steps in trajectory-based ...
International audienceFeature trajectories have shown to be efficient for representing videos. Typic...
Video sequence classification is the process of recognizing the semantic labels of the given video s...
In this paper we propose a new method for human action categorization by using an effective combinat...
International audienceThis paper addresses the task of detecting diverse semantic concepts in videos...
Feature extraction plays a vital role in visual action recognition. Many existing gradient-based fea...
Given a set of algorithms, which one(s) should you apply to, i) compute optical flow, or ii) perform...