This paper addresses the issue of video-based action recognition by exploiting an advanced multistream convolutional neural network (CNN) to fully use semantics-derived multiple modalities in both spatial (appearance) and temporal (motion) domains, since the performance of the CNN-based action recognition methods heavily relates to two factors: semantic visual cues and the network architecture. Our work consists of two major parts. First, to extract useful human-related semantics accurately, we propose a novel spatiotemporal saliency-based video object segmentation (STS) model. By fusing different distinctive saliency maps, which are computed according to object signatures of complementary object detection approaches, a refined STS maps can...
In recent years, deep learning techniques have excelled in video action recognition. However, curren...
Research in human action recognition has accelerated significantly since the introduction of powerfu...
© 2016 IEEE. Human activity recognition in videos with convolutional neural network (CNN) features h...
This paper addresses the issue of video-based action recognition by exploiting an advanced multistre...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
Human action recognition in video is an active yet challenging research topic due to high variation ...
Video action recognition is a difficult and challenging task in video processing. In this thesis, we...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Human action recognition plays a crucial role in various applications, including video surveillance,...
MasterThis thesis proposes the mixed temporal kernel depthwise-separable convolution network that ex...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Human activity recognition in videos with convolutional neural network (CNN) features has received i...
In recent years, deep learning techniques have excelled in video action recognition. However, curren...
Research in human action recognition has accelerated significantly since the introduction of powerfu...
© 2016 IEEE. Human activity recognition in videos with convolutional neural network (CNN) features h...
This paper addresses the issue of video-based action recognition by exploiting an advanced multistre...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
The most successful video-based human action recognition methods rely on feature representations ext...
Human action recognition in video is an active yet challenging research topic due to high variation ...
Video action recognition is a difficult and challenging task in video processing. In this thesis, we...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Human action recognition plays a crucial role in various applications, including video surveillance,...
MasterThis thesis proposes the mixed temporal kernel depthwise-separable convolution network that ex...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Human activity recognition in videos with convolutional neural network (CNN) features has received i...
In recent years, deep learning techniques have excelled in video action recognition. However, curren...
Research in human action recognition has accelerated significantly since the introduction of powerfu...
© 2016 IEEE. Human activity recognition in videos with convolutional neural network (CNN) features h...