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Thomas Brox

Researcher at University of Freiburg

Publications -  353
Citations -  127470

Thomas Brox is an academic researcher from University of Freiburg. The author has contributed to research in topics: Segmentation & Optical flow. The author has an hindex of 99, co-authored 329 publications receiving 94431 citations. Previous affiliations of Thomas Brox include Dresden University of Technology & University of California, Berkeley.

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Proceedings ArticleDOI

Large displacement optical flow

TL;DR: This paper proposes a method that can combine the advantages of both matching strategies and provides dense and subpixel accurate estimates, making use of geometric constraints and all available image information.
Proceedings ArticleDOI

Active unsupervised texture segmentation on a diffusion based feature space

TL;DR: A variational framework is proposed that incorporates a small set of good features for texture segmentation based on the structure tensor and nonlinear diffusion in a level set based unsupervised segmentation process that adaptively takes into account their estimated statistical information inside and outside the region to segment.
Proceedings ArticleDOI

FreiHAND: A Dataset for Markerless Capture of Hand Pose and Shape From Single RGB Images

TL;DR: This paper introduces the first large-scale, multi-view hand dataset that is accompanied by both 3D hand pose and shape annotations and proposes an iterative, semi-automated `human-in-the-loop' approach, which includes hand fitting optimization to infer both the 3D pose andshape for each sample.
Posted Content

ECO: Efficient Convolutional Network for Online Video Understanding

TL;DR: In this article, a network architecture that takes long-term content into account and enables fast per-video processing at the same time is proposed, which achieves competitive performance across all datasets while being 10x to 80x faster than state-of-theart methods.
Posted Content

Descriptor Matching with Convolutional Neural Networks: a Comparison to SIFT

TL;DR: This paper compares features from various layers of convolutional neural nets to standard SIFT descriptors and Surprisingly, convolutionAL neural networks clearly outperform SIFT on descriptor matching.