This work proposes a boosting-based transfer learning approach for head-pose classification from multiple, low-resolution views. Head-pose classification performance is adversely affected when the source (training) and target (test) data arise from different distributions (due to change in face appearance, lighting, etc). Under such conditions, we employ Xferboost, a Logitboost-based transfer learning framework that integrates knowledge from a few labeled target samples with the source model to effectively minimize misclassifications on the target data. Experiments confirm that the Xferboost framework can improve classification performance by up to 6%, when knowledge is transferred between the CLEAR and FBK four-view headpose datasets
Artificial intelligent and machine learning technologies have already achieved significant success i...
There has been a lot of work on face modeling, analysis, and landmark detection, with Active Appeara...
In supervised learning of head pose classification, uniformly distributed and labeled ground-truth o...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
Head pose classification from surveillance images acquired with distant, large field-of-view cameras...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
This paper describes an active transfer learning technique for multi-view head-pose classification. ...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial ...
Considerable research progress in the areas of computer vision and multimodal analysis have now made...
We propose a novel Multi-Task Learning framework (FEGA-MTL) for classifying the head pose of a perso...
In this paper, we deal with the estimation of body and head poses (i.e orientations) in surveillance...
Recognizing faces corresponding to target individuals remains a challenging problem in video surveil...
The objective of this work is to estimate upper body pose for signers in TV broadcasts. Given suitab...
Artificial intelligent and machine learning technologies have already achieved significant success i...
There has been a lot of work on face modeling, analysis, and landmark detection, with Active Appeara...
In supervised learning of head pose classification, uniformly distributed and labeled ground-truth o...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
This work proposes a boosting-based transfer learning approach for head-pose classification from mul...
Head pose classification from surveillance images acquired with distant, large field-of-view cameras...
Over the years, extensive research has been devoted to the study of people's head pose due to its re...
This paper describes an active transfer learning technique for multi-view head-pose classification. ...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial...
Multi-view head-pose estimation in low-resolution, dynamic scenes is difficult due to blurred facial ...
Considerable research progress in the areas of computer vision and multimodal analysis have now made...
We propose a novel Multi-Task Learning framework (FEGA-MTL) for classifying the head pose of a perso...
In this paper, we deal with the estimation of body and head poses (i.e orientations) in surveillance...
Recognizing faces corresponding to target individuals remains a challenging problem in video surveil...
The objective of this work is to estimate upper body pose for signers in TV broadcasts. Given suitab...
Artificial intelligent and machine learning technologies have already achieved significant success i...
There has been a lot of work on face modeling, analysis, and landmark detection, with Active Appeara...
In supervised learning of head pose classification, uniformly distributed and labeled ground-truth o...