Thomas Brox


Ontology type: schema:Person     


Person Info

NAME

Thomas

SURNAME

Brox

Publications in SciGraph latest 50 shown

  • 2019-04 Non-smooth Non-convex Bregman Minimization: Unification and New Algorithms in JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS
  • 2019 Temporally Consistent Depth Estimation in Videos with Recurrent Architectures in COMPUTER VISION – ECCV 2018 WORKSHOPS
  • 2019-01 U-Net: deep learning for cell counting, detection, and morphometry in NATURE METHODS
  • 2018-11 Artistic Style Transfer for Videos and Spherical Images in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2018-10-09 ECO: Efficient Convolutional Network for Online Video Understanding in COMPUTER VISION – ECCV 2018
  • 2018-10-06 Uncertainty Estimates and Multi-hypotheses Networks for Optical Flow in COMPUTER VISION – ECCV 2018
  • 2018-10-06 DeepTAM: Deep Tracking and Mapping in COMPUTER VISION – ECCV 2018
  • 2018-10-06 Occlusions, Motion and Depth Boundaries with a Generic Network for Disparity, Optical Flow or Scene Flow Estimation in COMPUTER VISION – ECCV 2018
  • 2018-09 What Makes Good Synthetic Training Data for Learning Disparity and Optical Flow Estimation? in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2017-12 Global, Dense Multiscale Reconstruction for a Billion Points in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2017-08-15 End-to-End Learning of Video Super-Resolution with Motion Compensation in PATTERN RECOGNITION
  • 2017-05 Spatiotemporal Deformable Prototypes for Motion Anomaly Detection in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2017 Deep Multispectral Semantic Scene Understanding of Forested Environments Using Multimodal Fusion in 2016 INTERNATIONAL SYMPOSIUM ON EXPERIMENTAL ROBOTICS
  • 2016-10 Techniques for Gradient-Based Bilevel Optimization with Non-smooth Lower Level Problems in JOURNAL OF MATHEMATICAL IMAGING AND VISION
  • 2016 Multi-view 3D Models from Single Images with a Convolutional Network in COMPUTER VISION – ECCV 2016
  • 2016 Artistic Style Transfer for Videos in PATTERN RECOGNITION
  • 2016 3D U-Net: Learning Dense Volumetric Segmentation from Sparse Annotation in MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION – MICCAI 2016
  • 2016 Pixel-Level Encoding and Depth Layering for Instance-Level Semantic Labeling in PATTERN RECOGNITION
  • 2016 Shape Distances for Binary Image Segmentation in PERSPECTIVES IN SHAPE ANALYSIS
  • 2016 Segmentation in Point Clouds from RGB-D Using Spectral Graph Reduction in PERSPECTIVES IN SHAPE ANALYSIS
  • 2015-10 iPiasco: Inertial Proximal Algorithm for Strongly Convex Optimization in JOURNAL OF MATHEMATICAL IMAGING AND VISION
  • 2015 Bilevel Optimization with Nonsmooth Lower Level Problems in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
  • 2015 Motion Based Foreground Detection and Poselet Motion Features for Action Recognition in COMPUTER VISION -- ACCV 2014
  • 2015 First International Workshop on Video Segmentation - Panel Discussion in COMPUTER VISION - ECCV 2014 WORKSHOPS
  • 2015 Image Orientation Estimation with Convolutional Networks in PATTERN RECOGNITION
  • 2015 U-Net: Convolutional Networks for Biomedical Image Segmentation in MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION – MICCAI 2015
  • 2015 q-Space Deep Learning for Twelve-Fold Shorter and Model-Free Diffusion MRI Scans in MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION -- MICCAI 2015
  • 2014-02 Rotation-Invariant HOG Descriptors Using Fourier Analysis in Polar and Spherical Coordinates in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2014 Diffusion Filtering in COMPUTER VISION
  • 2014 Maximum Likelihood Estimation in COMPUTER VISION
  • 2014 Dense Semi-rigid Scene Flow Estimation from RGBD Images in COMPUTER VISION – ECCV 2014
  • 2014 Optical Flow in COMPUTER VISION
  • 2014 Training Deformable Object Models for Human Detection Based on Alignment and Clustering in COMPUTER VISION – ECCV 2014
  • 2014 Image Descriptors Based on Curvature Histograms in PATTERN RECOGNITION
  • 2013 Discriminative Detection and Alignment in Volumetric Data in PATTERN RECOGNITION
  • 2013 Distances Based on Non-rigid Alignment for Comparison of Different Object Instances in PATTERN RECOGNITION
  • 2012-10 Erratum: ViBE-Z: a framework for 3D virtual colocalization analysis in zebrafish larval brains in NATURE METHODS
  • 2012-07 ViBE-Z: a framework for 3D virtual colocalization analysis in zebrafish larval brains in NATURE METHODS
  • 2012-05 Region-based pose tracking with occlusions using 3D models in MACHINE VISION AND APPLICATIONS
  • 2012 Dense 3D Reconstruction with a Hand-Held Camera in PATTERN RECOGNITION
  • 2012 Hierarchy of Localized Random Forests for Video Annotation in PATTERN RECOGNITION
  • 2011-10 Stereoscopic Scene Flow Computation for 3D Motion Understanding in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2010-03 Optimization and Filtering for Human Motion Capture in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2010 Dense Point Trajectories by GPU-Accelerated Large Displacement Optical Flow in COMPUTER VISION – ECCV 2010
  • 2010 Detecting People Using Mutually Consistent Poselet Activations in COMPUTER VISION – ECCV 2010
  • 2010 Object Segmentation by Long Term Analysis of Point Trajectories in COMPUTER VISION – ECCV 2010
  • 2009-08 On Local Region Models and a Statistical Interpretation of the Piecewise Smooth Mumford-Shah Functional in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2009-08 Continuous Global Optimization in Multiview 3D Reconstruction in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2009 Localised Mixture Models in Region-Based Tracking in PATTERN RECOGNITION
  • 2009 An Evaluation Approach for Scene Flow with Decoupled Motion and Position in STATISTICAL AND GEOMETRICAL APPROACHES TO VISUAL MOTION ANALYSIS
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