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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.

Papers
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Book ChapterDOI

Localised Mixture Models in Region-Based Tracking

TL;DR: This paper proposes localised mixture models (LMMs) and evaluates this idea in the scope of model-based tracking by automatically partitioning the fore- and background into several subregions and shows that tracking is remarkably stabilised by the new model.
Posted ContentDOI

Conserved structures of neural activity in sensorimotor cortex of freely moving rats allow cross-subject decoding

TL;DR: Similarity of neural population structures across the sensorimotor cortex enables generalization across animals in the decoding of unconstrained behavior and demonstrates cross-subject and cross-session generalization in a decoding task arguing for a conserved neuronal code.
Proceedings Article

TD or not TD: Analyzing the Role of Temporal Differencing in Deep Reinforcement Learning

TL;DR: This paper re-examine the role of TD in modern deep RL, using specially designed environments that control for specific factors that affect performance, such as reward sparsity, reward delay, and the perceptual complexity of the task.
Posted Content

On Exposing the Challenging Long Tail in Future Prediction of Traffic Actors

TL;DR: In this paper, the authors address the challenging scenarios at the long tail of the dataset distribution and propose to supplement the usual loss with aloss that places challenging cases closer to each other.
Journal ArticleDOI

Neural Architecture Search for Dense Prediction Tasks in Computer Vision

TL;DR: An overview of neural architecture search for dense prediction tasks can be found in this paper , where the authors provide an overview of the challenges and ways to address them to ease future research and apply existing methods to novel problems.