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Daniel Cremers

Researcher at Technische Universität München

Publications -  702
Citations -  55592

Daniel Cremers is an academic researcher from Technische Universität München. The author has contributed to research in topics: Image segmentation & Computer science. The author has an hindex of 99, co-authored 655 publications receiving 44957 citations. Previous affiliations of Daniel Cremers include Siemens & University of Mannheim.

Papers
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Proceedings ArticleDOI

Semi-dense Visual Odometry for a Monocular Camera

TL;DR: A fundamentally novel approach to real-time visual odometry for a monocular camera that allows to benefit from the simplicity and accuracy of dense tracking - which does not depend on visual features - while running in real- time on a CPU.
Posted Content

Direct Sparse Odometry

TL;DR: The experiments show that the presented approach significantly outperforms state-of-the-art direct and indirect methods in a variety of real-world settings, both in terms of tracking accuracy and robustness.
Posted Content

One-Shot Video Object Segmentation

TL;DR: One-shot video object segmentation (OSVOS) as mentioned in this paper is based on a fully-convolutional neural network architecture that is able to successively transfer generic semantic information, learned on ImageNet, to the task of foreground segmentation, and finally to learning the appearance of a single annotated object of the test sequence.
Proceedings ArticleDOI

Large-scale direct SLAM with stereo cameras

TL;DR: A novel Large-Scale Direct SLAM algorithm for stereo cameras (Stereo LSD-SLAM) that runs in real-time at high frame rate on standard CPUs, capable of handling aggressive brightness changes between frames - greatly improving the performance in realistic settings.
Book ChapterDOI

An Improved Algorithm for TV-L1 Optical Flow

TL;DR: This work proposes an improvement variant of the original duality based TV-L 1 optical flow algorithm that can preserve discontinuities in the flow field by employing total variation (TV) regularization and integrates a median filter into the numerical scheme to further increase the robustness to sampling artefacts in the image data.