We propose a deep-learning approach for people detection on depth imagery. The approach is designed to be deployed as an autonomous appliance for identifying people attacks and intrusion in video surveillance scenarios. To this end, we propose a fully-convolutional and sequential network, named WatchNet, that localizes people in depth images by predicting human body landmarks such as head and shoulders. We use a large synthetic dataset to train the network with abundant data and generate automatic annotations. Adaptation to real data is performed via fine tuning with real depth images. The proposed method is validated in a novel and challenging database with about 29k top view images collected from several sequences including different peop...
In recent years, deep learning, a critical technology in computer vision, has achieved remarkable mi...
This thesis addresses the problem of automatically detecting people from images. Our work is motiva...
Now days, Big data applications are having most of the importance and space in industry and research...
We present an efficient and accurate people detection approach based on deep learning to detect peop...
Recognition of the human activities in videos has gathered numerous demands in various applications ...
People counting is a crucial subject in video surveillance application. Factors such as severe occlu...
© 2017 Dr. Fu-Chun HsuMONITORING large crowds using video cameras is critical and challenging. In la...
This paper describes a novel DNN-based system, named PD3net, that detects multiple people from a sin...
In our constantly monitored world, surveillance cameras play a crucial role in curbing crime and vio...
Surveillance is a part of security. In most cases, this work costs a lot of time for people to obser...
Advanced intelligent surveillance systems are able to automatically analyze video of surveillance da...
In modern age computing technologies, detection and tracking of a complex moving target still remain...
This study presents a scalable automated video surveillance framework that (1) automatically detects...
Abstract Currently, the number of surveillance cameras is rapidly increasing responding to security ...
The thesis addresses the following challenging problems of detecting and tracking humans in the pres...
In recent years, deep learning, a critical technology in computer vision, has achieved remarkable mi...
This thesis addresses the problem of automatically detecting people from images. Our work is motiva...
Now days, Big data applications are having most of the importance and space in industry and research...
We present an efficient and accurate people detection approach based on deep learning to detect peop...
Recognition of the human activities in videos has gathered numerous demands in various applications ...
People counting is a crucial subject in video surveillance application. Factors such as severe occlu...
© 2017 Dr. Fu-Chun HsuMONITORING large crowds using video cameras is critical and challenging. In la...
This paper describes a novel DNN-based system, named PD3net, that detects multiple people from a sin...
In our constantly monitored world, surveillance cameras play a crucial role in curbing crime and vio...
Surveillance is a part of security. In most cases, this work costs a lot of time for people to obser...
Advanced intelligent surveillance systems are able to automatically analyze video of surveillance da...
In modern age computing technologies, detection and tracking of a complex moving target still remain...
This study presents a scalable automated video surveillance framework that (1) automatically detects...
Abstract Currently, the number of surveillance cameras is rapidly increasing responding to security ...
The thesis addresses the following challenging problems of detecting and tracking humans in the pres...
In recent years, deep learning, a critical technology in computer vision, has achieved remarkable mi...
This thesis addresses the problem of automatically detecting people from images. Our work is motiva...
Now days, Big data applications are having most of the importance and space in industry and research...