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Dive into the research topics where Eldar Insafutdinov is active.

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Featured researches published by Eldar Insafutdinov.


computer vision and pattern recognition | 2016

DeepCut: Joint Subset Partition and Labeling for Multi Person Pose Estimation

Leonid Pishchulin; Eldar Insafutdinov; Siyu Tang; Bjoern Andres; Mykhaylo Andriluka; Peter V. Gehler; Bernt Schiele

This paper considers the task of articulated human pose estimation of multiple people in real world images. We propose an approach that jointly solves the tasks of detection and pose estimation: it infers the number of persons in a scene, identifies occluded body parts, and disambiguates body parts between people in close proximity of each other. This joint formulation is in contrast to previous strategies, that address the problem by first detecting people and subsequently estimating their body pose. We propose a partitioning and labeling formulation of a set of body-part hypotheses generated with CNN-based part detectors. Our formulation, an instance of an integer linear program, implicitly performs non-maximum suppression on the set of part candidates and groups them to form configurations of body parts respecting geometric and appearance constraints. Experiments on four different datasets demonstrate state-of-the-art results for both single person and multi person pose estimation.


european conference on computer vision | 2016

DeeperCut: A Deeper, Stronger, and Faster Multi-person Pose Estimation Model

Eldar Insafutdinov; Leonid Pishchulin; Bjoern Andres; Mykhaylo Andriluka; Bernt Schiele

The goal of this paper is to advance the state-of-the-art of articulated pose estimation in scenes with multiple people. To that end we contribute on three fronts. We propose (1) improved body part detectors that generate effective bottom-up proposals for body parts; (2) novel image-conditioned pairwise terms that allow to assemble the proposals into a variable number of consistent body part configurations; and (3) an incremental optimization strategy that explores the search space more efficiently thus leading both to better performance and significant speed-up factors. Evaluation is done on two single-person and two multi-person pose estimation benchmarks. The proposed approach significantly outperforms best known multi-person pose estimation results while demonstrating competitive performance on the task of single person pose estimation (Models and code available at http://pose.mpi-inf.mpg.de).


computer vision and pattern recognition | 2017

Joint Graph Decomposition & Node Labeling: Problem, Algorithms, Applications

Evgeny Levinkov; Jonas Uhrig; Siyu Tang; Mohamed Omran; Eldar Insafutdinov; Alexander Kirillov; Carsten Rother; Thomas Brox; Bernt Schiele; Bjoern Andres

We state a combinatorial optimization problem whose feasible solutions define both a decomposition and a node labeling of a given graph. This problem offers a common mathematical abstraction of seemingly unrelated computer vision tasks, including instance-separating semantic segmentation, articulated human body pose estimation and multiple object tracking. Conceptually, it generalizes the unconstrained integer quadratic program and the minimum cost lifted multicut problem, both of which are NP-hard. In order to find feasible solutions efficiently, we define two local search algorithms that converge monotonously to a local optimum, offering a feasible solution at any time. To demonstrate the effectiveness of these algorithms in tackling computer vision tasks, we apply them to instances of the problem that we construct from published data, using published algorithms. We report state-of-the-art application-specific accuracy in the three above-mentioned applications.


computer vision and pattern recognition | 2017

ArtTrack: Articulated Multi-Person Tracking in the Wild

Eldar Insafutdinov; Mykhaylo Andriluka; Leonid Pishchulin; Siyu Tang; Evgeny Levinkov; Bjoern Andres; Bernt Schiele

In this paper we propose an approach for articulated tracking of multiple people in unconstrained videos. Our starting point is a model that resembles existing architectures for single-frame pose estimation but is substantially faster. We achieve this in two ways: (1) by simplifying and sparsifying the body-part relationship graph and leveraging recent methods for faster inference, and (2) by offloading a substantial share of computation onto a feed-forward convolutional architecture that is able to detect and associate body joints of the same person even in clutter. We use this model to generate proposals for body joint locations and formulate articulated tracking as spatio-temporal grouping of such proposals. This allows to jointly solve the association problem for all people in the scene by propagating evidence from strong detections through time and enforcing constraints that each proposal can be assigned to one person only. We report results on a public MPII Human Pose benchmark and on a new MPII Video Pose dataset of image sequences with multiple people. We demonstrate that our model achieves state-of-the-art results while using only a fraction of time and is able to leverage temporal information to improve state-of-the-art for crowded scenes.


international conference on computer graphics and interactive techniques | 2016

EgoCap: egocentric marker-less motion capture with two fisheye cameras

Helge Rhodin; Christian Richardt; Dan Casas; Eldar Insafutdinov; Mohammad Shafiei; Hans-Peter Seidel; Bernt Schiele; Christian Theobalt

Marker-based and marker-less optical skeletal motion-capture methods use an outside-in arrangement of cameras placed around a scene, with viewpoints converging on the center. They often create discomfort with marker suits, and their recording volume is severely restricted and often constrained to indoor scenes with controlled backgrounds. Alternative suit-based systems use several inertial measurement units or an exoskeleton to capture motion with an inside-in setup, i.e. without external sensors. This makes capture independent of a confined volume, but requires substantial, often constraining, and hard to set up body instrumentation. Therefore, we propose a new method for real-time, marker-less, and egocentric motion capture: estimating the full-body skeleton pose from a lightweight stereo pair of fisheye cameras attached to a helmet or virtual reality headset - an optical inside-in method, so to speak. This allows full-body motion capture in general indoor and outdoor scenes, including crowded scenes with many people nearby, which enables reconstruction in larger-scale activities. Our approach combines the strength of a new generative pose estimation framework for fisheye views with a ConvNet-based body-part detector trained on a large new dataset. It is particularly useful in virtual reality to freely roam and interact, while seeing the fully motion-captured virtual body.


Archive | 2016

Articulated Multi-person Tracking in the Wild.

Eldar Insafutdinov; Mykhaylo Andriluka; Leonid Pishchulin; Siyu Tang; Evgeny Levinkov; Bjoern Andres; Bernt Schiele


computer vision and pattern recognition | 2018

PoseTrack: A Benchmark for Human Pose Estimation and Tracking

Mykhaylo Andriluka; Umar Iqbal; Eldar Insafutdinov; Leonid Pishchulin; Anton Milan; Juergen Gall; Bernt Schiele


arXiv: Computer Vision and Pattern Recognition | 2016

Joint Graph Decomposition and Node Labeling by Local Search.

Evgeny Levinkov; Siyu Tang; Eldar Insafutdinov; Bjoern Andres


neural information processing systems | 2018

Unsupervised Learning of Shape and Pose with Differentiable Point Clouds

Eldar Insafutdinov; Alexey Dosovitskiy


arXiv: Computer Vision and Pattern Recognition | 2016

EgoCap: Egocentric Marker-less Motion Capture with Two Fisheye Cameras (Extended Abstract)

Helge Rhodin; Christian Richardt; Dan Casas; Eldar Insafutdinov; Mohammad Shafiei; Hans-Peter Seidel; Bernt Schiele; Christian Theobalt

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