Despite the recent advances of image object proposals (IOPs) and video object proposals (VOPs), it still remains a challenge to apply them to online video object/action detection. To address this problem, we propose a novel form of image object proposals, Temporally Enhanced Image Object Proposals (TE-IOPs), for online video object/action detection. The proposed TE-IOPs augment the existing IOPs at every frame by their temporal dynamics in the past few frames. We develop a dynamic programming scheme to efficiently search for such TE-IOPs in an online manner. Compared with existing VOPs that cannot run online, our TE-IOPs can be used for online detection. Compared with IOPs, our TE-IOPs bring rich temporal dynamics with minor computational c...
In this paper we target at generating generic action pro-posals in unconstrained videos. Each action...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
Despite their great predictive capability, Convolutional Neural Networks (CNNs) are computational-ex...
Despite the recent advances of image object proposals (IOPs) and video object proposals (VOPs), it s...
Abstract. Spatio-temporal detection of actions and events in video is a challeng-ing problem. Beside...
The amount of video data has grown exponentially over the last years. It is not feasible anymore to ...
The details of the work will be defined when the student reaches his destination.In online detection...
This paper contributes a new boosting paradigm to achieve detection of events in video. Previous boo...
In online action detection, the goal is to detect the start of an action in a video stream as soon a...
© 2015 IEEE. In this paper we present a method to capture video-wide temporal information for action...
The development of the Internet makes the number of online videos increase dramatically, which bring...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
The Online Action Detection (OAD) problem needs to be revisited. Unlike traditional offline action d...
In this thesis, we focus on video action understanding problems from an online and real-time process...
Important issues such as low image quality and human operators' reactivity can seriously reduce the ...
In this paper we target at generating generic action pro-posals in unconstrained videos. Each action...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
Despite their great predictive capability, Convolutional Neural Networks (CNNs) are computational-ex...
Despite the recent advances of image object proposals (IOPs) and video object proposals (VOPs), it s...
Abstract. Spatio-temporal detection of actions and events in video is a challeng-ing problem. Beside...
The amount of video data has grown exponentially over the last years. It is not feasible anymore to ...
The details of the work will be defined when the student reaches his destination.In online detection...
This paper contributes a new boosting paradigm to achieve detection of events in video. Previous boo...
In online action detection, the goal is to detect the start of an action in a video stream as soon a...
© 2015 IEEE. In this paper we present a method to capture video-wide temporal information for action...
The development of the Internet makes the number of online videos increase dramatically, which bring...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
The Online Action Detection (OAD) problem needs to be revisited. Unlike traditional offline action d...
In this thesis, we focus on video action understanding problems from an online and real-time process...
Important issues such as low image quality and human operators' reactivity can seriously reduce the ...
In this paper we target at generating generic action pro-posals in unconstrained videos. Each action...
Current state-of-the-art action detection systems are tailored for offline batch-processing applicat...
Despite their great predictive capability, Convolutional Neural Networks (CNNs) are computational-ex...