Markus Oberweger
Graz University of Technology
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Publication
Featured researches published by Markus Oberweger.
international conference on computer vision | 2015
Markus Oberweger; Paul Wohlhart; Vincent Lepetit
We propose an entirely data-driven approach to estimating the 3D pose of a hand given a depth image. We show that we can correct the mistakes made by a Convolutional Neural Network trained to predict an estimate of the 3D pose by using a feedback loop. The components of this feedback loop are also Deep Networks, optimized using training data. They remove the need for fitting a 3D model to the input data, which requires both a carefully designed fitting function and algorithm. We show that our approach outperforms state-of-the-art methods, and is efficient as our implementation runs at over 400 fps on a single GPU.
computer vision and pattern recognition | 2016
Markus Oberweger; Gernot Riegler; Paul Wohlhart; Vincent Lepetit
While many recent hand pose estimation methods critically rely on a training set of labelled frames, the creation of such a dataset is a challenging task that has been overlooked so far. As a result, existing datasets are limited to a few sequences and individuals, with limited accuracy, and this prevents these methods from delivering their full potential. We propose a semi-automated method for efficiently and accurately labeling each frame of a hand depth video with the corresponding 3D locations of the joints: The user is asked to provide only an estimate of the 2D reprojections of the visible joints in some reference frames, which are automatically selected to minimize the labeling work by efficiently optimizing a sub-modular loss function. We then exploit spatial, temporal, and appearance constraints to retrieve the full 3D poses of the hand over the complete sequence. We show that this data can be used to train a recent state-of-the-art hand pose estimation method, leading to increased accuracy.
european conference on computer vision | 2018
Markus Oberweger; Mahdi Rad; Vincent Lepetit
We introduce a novel method for robust and accurate 3D object pose estimation from a single color image under large occlusions. Following recent approaches, we first predict the 2D projections of 3D points related to the target object and then compute the 3D pose from these correspondences using a geometric method. Unfortunately, as the results of our experiments show, predicting these 2D projections using a regular CNN or a Convolutional Pose Machine is highly sensitive to partial occlusions, even when these methods are trained with partially occluded examples. Our solution is to predict heatmaps from multiple small patches independently and to accumulate the results to obtain accurate and robust predictions. Training subsequently becomes challenging because patches with similar appearances but different positions on the object correspond to different heatmaps. However, we provide a simple yet effective solution to deal with such ambiguities. We show that our approach outperforms existing methods on two challenging datasets: The Occluded LineMOD dataset and the YCB-Video dataset, both exhibiting cluttered scenes with highly occluded objects.
arXiv: Computer Vision and Pattern Recognition | 2015
Markus Oberweger; Paul Wohlhart; Vincent Lepetit
international conference on computer vision | 2017
Markus Oberweger; Vincent Lepetit
Archive | 2014
Markus Oberweger; Andreas Wendel; Horst Bischof
computer vision and pattern recognition | 2018
Mahdi Rad; Markus Oberweger; Vincent Lepetit
ieee virtual reality conference | 2018
Markus Höll; Markus Oberweger; Clemens Arth; Vincent Lepetit
arXiv: Computer Vision and Pattern Recognition | 2018
Abhishake Kumar Bojja; Franziska Mueller; Sri Raghu Malireddi; Markus Oberweger; Vincent Lepetit; Christian Theobalt; Kwang Moo Yi; Andrea Tagliasacchi
arXiv: Computer Vision and Pattern Recognition | 2018
Mahdi Rad; Markus Oberweger; Vincent Lepetit