3D registration of multi-view depth data for hand-arm pose estimation

Author(s):  
Yeongmin Ha ◽  
Seho Shin ◽  
Jaeheung Park
Author(s):  
Stefan Thalhammer ◽  
Timothy Patten ◽  
Markus Vincze

AbstractFor visual assistance systems deployed in an industrial setting, precise object pose estimation is an important task in order to support scene understanding and to enable subsequent grasping and manipulation. Industrial environments are especially challenging since mesh-models are usually available while physical objects are not or are expensive to model. Manufactured objects are often similar in appearance, have limited to no textural cues and exhibit symmetries. Thus, these are especially challenging for recognizers that are meant to provide detection, classification and pose estimation on instance level. A usability study of a recent synthetically trained learning-based recognizer for these particular challenges is conducted. Experiments are performed on the challenging T-LESS dataset due to its relevance for industry.


Author(s):  
Paul Doliotis ◽  
Vassilis Athitsos ◽  
Dimitrios Kosmopoulos ◽  
Stavros Perantonis

Author(s):  
Reza Shoja Ghiass ◽  
Denis Laurendeau

This work addresses the problem of automatic head pose estimation and its application in 3D gaze estimation using low quality RGB--D sensors without any subject cooperation or manual intervention. The previous works on 3D head pose estimation using RGB--D sensors require either an offline step for supervised learning or 3D head model construction which may require manual intervention or subject cooperation for complete head model reconstruction. In this paper, we propose a 3D pose estimator based on low quality depth data, which is not limited by any of the aforementioned steps. Instead, the proposed technique relies on modeling the subject's face in 3--D rather than the complete head, which in turn, relaxes all of the constraints with the previous works. The proposed method is robust, highly accurate and fully automatic. Moreover, it does not need any offline step. Unlike some of the previous works, the method only uses depth data for pose estimation. The experimental results on the Biwi head pose database confirm the efficiency of our algorithm in handling large pose variations and partial occlusion. We also evaluate the performance of our algorithm on IDIAP database for 3D head pose and eye gaze estimation.


2016 ◽  
Vol 34 (2) ◽  
pp. 193-211 ◽  
Author(s):  
Xenophon Zabulis ◽  
Manolis I. A. Lourakis ◽  
Panagiotis Koutlemanis

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