The performance of a generic pedestrian detector may drop significantly when it is applied to a specific scene due to mismatch between the source dataset used to train the detector and samples in the target scene. In this paper, we investigate how to automatically train a scene-specific pedestrian detector starting with a generic detector in video surveillance without further manually labeling any samples under a novel transfer learning framework. It tackles the problem from three aspects. (1) With a graphical represen-tation and through exploring the indegrees from target sam-ples to source samples, the source samples are properly re-weighted. The indegrees detect the boundary between the distributions of the source dataset and the target ...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
Copyright © 2014 Yu Li-ping et al. This is an open access article distributed under the Creative Com...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...
The performance of a generic pedestrian detector may drop significantly when it is applied to a spec...
The performance of a generic pedestrian detector may drop significantly when it is applied to a spec...
Abstract—The performance of a generic pedestrian detector may drop significantly when it is applied ...
Abstract—The performance of a generic pedestrian detector may drop significantly when it is applied ...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
Abstract. The performance of a detector depends much on its training dataset and drops significantly...
Pedestrian detection is of paramount importance for intelligent visual surveillance of people. Despi...
Most of the existing methods for pedestrian detection work well, only when the following assumption ...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
The detection and re-identification of pedestrians is an important component of the automated analys...
We consider scenarios where we have zero instances of real pedestrian data (e.g., a newly installed ...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
Copyright © 2014 Yu Li-ping et al. This is an open access article distributed under the Creative Com...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...
The performance of a generic pedestrian detector may drop significantly when it is applied to a spec...
The performance of a generic pedestrian detector may drop significantly when it is applied to a spec...
Abstract—The performance of a generic pedestrian detector may drop significantly when it is applied ...
Abstract—The performance of a generic pedestrian detector may drop significantly when it is applied ...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
Abstract. The performance of a detector depends much on its training dataset and drops significantly...
Pedestrian detection is of paramount importance for intelligent visual surveillance of people. Despi...
Most of the existing methods for pedestrian detection work well, only when the following assumption ...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
The detection and re-identification of pedestrians is an important component of the automated analys...
We consider scenarios where we have zero instances of real pedestrian data (e.g., a newly installed ...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
Copyright © 2014 Yu Li-ping et al. This is an open access article distributed under the Creative Com...
Abstract A scene model and statistic learning based method for pedestrian detection in complicated r...