Daniel Cremers

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Publications in SciGraph latest 50 shown

  • 2022-11-03 Parameterized Temperature Scaling for Boosting the Expressive Power in Post-Hoc Uncertainty Calibration in COMPUTER VISION – ECCV 2022
  • 2022-10-29 A Cutting-Plane Method for Sublabel-Accurate Relaxation of Problems with Product Label Spaces in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2022-09-07 Perceiver Hopfield Pooling for Dynamic Multi-modal and Multi-instance Fusion in ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING – ICANN 2022
  • 2022-08-20 Biologically Inspired Neural Path Finding in BRAIN INFORMATICS
  • 2022-06-02 Lateral Ego-Vehicle Control Without Supervision Using Point Clouds in PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE
  • 2021-04-30 Bregman Proximal Gradient Algorithms for Deep Matrix Factorization in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
  • 2021-03-17 4Seasons: A Cross-Season Dataset for Multi-Weather SLAM in Autonomous Driving in PATTERN RECOGNITION
  • 2021-03-17 Learning Monocular 3D Vehicle Detection Without 3D Bounding Box Labels in PATTERN RECOGNITION
  • 2021-02-25 Effective Version Space Reduction for Convolutional Neural Networks in MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES
  • 2021 Sublabel-Accurate Multilabeling Meets Product Label Spaces in PATTERN RECOGNITION
  • 2021 Multidirectional Conjugate Gradients for Scalable Bundle Adjustment in PATTERN RECOGNITION
  • 2020-12-23 MOTChallenge: A Benchmark for Single-Camera Multiple Target Tracking in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2020-11-07 q-Space Novelty Detection with Variational Autoencoders in COMPUTATIONAL DIFFUSION MRI
  • 2020-10-29 DH3D: Deep Hierarchical 3D Descriptors for Robust Large-Scale 6DoF Relocalization in COMPUTER VISION – ECCV 2020
  • 2020-10-29 Hamiltonian Dynamics for Real-World Shape Interpolation in COMPUTER VISION – ECCV 2020
  • 2020-09-17 On the Well-Posedness of Uncalibrated Photometric Stereo Under General Lighting in ADVANCES IN PHOTOMETRIC 3D-RECONSTRUCTION
  • 2020-04-04 Lifting Methods for Manifold-Valued Variational Problems in HANDBOOK OF VARIATIONAL METHODS FOR NONLINEAR GEOMETRIC DATA
  • 2020-02-07 TUM Flyers: Vision—Based MAV Navigation for Systematic Inspection of Structures in BRINGING INNOVATIVE ROBOTIC TECHNOLOGIES FROM RESEARCH LABS TO INDUSTRIAL END-USERS
  • 2020-01-31 Bregman Proximal Mappings and Bregman–Moreau Envelopes Under Relative Prox-Regularity in JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS
  • 2019-05-29 Deep Depth from Focus in COMPUTER VISION – ACCV 2018
  • 2019-04-18 Efficient Deep Network Architectures for Fast Chest X-Ray Tuberculosis Screening and Visualization in SCIENTIFIC REPORTS
  • 2019-02-14 Associative Deep Clustering: Training a Classification Network with No Labels in PATTERN RECOGNITION
  • 2018-10-07 MRF Optimization with Separable Convex Prior on Partially Ordered Labels in COMPUTER VISION – ECCV 2018
  • 2018-10-07 Deep Virtual Stereo Odometry: Leveraging Deep Depth Prediction for Monocular Direct Sparse Odometry in COMPUTER VISION – ECCV 2018
  • 2018-10-07 Direct Sparse Odometry with Rolling Shutter in COMPUTER VISION – ECCV 2018
  • 2018-10-06 DeepWrinkles: Accurate and Realistic Clothing Modeling in COMPUTER VISION – ECCV 2018
  • 2018-09-11 Image Denoising—Old and New in DENOISING OF PHOTOGRAPHIC IMAGES AND VIDEO
  • 2018-04-02 What Makes Good Synthetic Training Data for Learning Disparity and Optical Flow Estimation? in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2018-03-22 A Variational Approach to Shape-from-Shading Under Natural Illumination in ENERGY MINIMIZATION METHODS IN COMPUTER VISION AND PATTERN RECOGNITION
  • 2018-03-22 Multiframe Motion Coupling for Video Super Resolution in ENERGY MINIMIZATION METHODS IN COMPUTER VISION AND PATTERN RECOGNITION
  • 2018-03-19 Variational Reflectance Estimation from Multi-view Images in JOURNAL OF MATHEMATICAL IMAGING AND VISION
  • 2017-09-19 LED-Based Photometric Stereo: Modeling, Calibration and Numerical Solution in JOURNAL OF MATHEMATICAL IMAGING AND VISION
  • 2017-06-30 Computer Vision für 3D Rekonstruktion in 50 JAHRE UNIVERSITÄTS-INFORMATIK IN MÜNCHEN
  • 2017-05-18 Beyond Multi-view Stereo: Shading-Reflectance Decomposition in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
  • 2017-05-18 Nonlinear Spectral Image Fusion in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
  • 2017-05-18 Semi-calibrated Near-Light Photometric Stereo in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
  • 2017-03-10 FuseNet: Incorporating Depth into Semantic Segmentation via Fusion-Based CNN Architecture in COMPUTER VISION – ACCV 2016
  • 2017-02-23 Computer Vision für 3-D-Rekonstruktion in INFORMATIK SPEKTRUM
  • 2016-10-01 Applying Random Forests to the Problem of Dense Non-rigid Shape Correspondence in PERSPECTIVES IN SHAPE ANALYSIS
  • 2016-09-17 Sublabel-Accurate Convex Relaxation of Vectorial Multilabel Energies in COMPUTER VISION – ECCV 2016
  • 2016-09-17 Non-rigid 3D Shape Retrieval via Large Margin Nearest Neighbor Embedding in COMPUTER VISION – ECCV 2016
  • 2016-09-17 A Convex Solution to Spatially-Regularized Correspondence Problems in COMPUTER VISION – ECCV 2016
  • 2016-04-09 Holistic Image Reconstruction for Diffusion MRI in COMPUTATIONAL DIFFUSION MRI
  • 2016-03-16 SPENCER: A Socially Aware Service Robot for Passenger Guidance and Help in Busy Airports in FIELD AND SERVICE ROBOTICS
  • 2015-11-18 q-Space Deep Learning for Twelve-Fold Shorter and Model-Free Diffusion MRI Scans in MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION -- MICCAI 2015
  • 2015-11-13 Collision Avoidance for Quadrotors with a Monocular Camera in EXPERIMENTAL ROBOTICS
  • 2015-07-10 Midrange Geometric Interactions for Semantic Segmentation in INTERNATIONAL JOURNAL OF COMPUTER VISION
  • 2015-05-06 Field phenotyping of grapevine growth using dense stereo reconstruction in BMC BIOINFORMATICS
  • 2015-04-28 Interactive Multi-label Segmentation of RGB-D Images in SCALE SPACE AND VARIATIONAL METHODS IN COMPUTER VISION
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