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Jan Hosang

Researcher at Max Planck Society

Publications -  25
Citations -  4838

Jan Hosang is an academic researcher from Max Planck Society. The author has contributed to research in topics: Object detection & Pedestrian detection. The author has an hindex of 18, co-authored 23 publications receiving 3953 citations. Previous affiliations of Jan Hosang include RWTH Aachen University & Google.

Papers
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Journal ArticleDOI

What Makes for Effective Detection Proposals

TL;DR: An in-depth analysis of twelve proposal methods along with four baselines regarding proposal repeatability, ground truth annotation recall on PASCAL, ImageNet, and MS COCO, and their impact on DPM, R-CNN, and Fast R- CNN detection performance shows that for object detection improving proposal localisation accuracy is as important as improving recall.
Book ChapterDOI

Ten Years of Pedestrian Detection, What Have We Learned?

TL;DR: This work analyzes the remarkable progress of the last decade by dis- cussing the main ideas explored in the 40+ detectors currently present in the Caltech pedestrian detection benchmark to find a new decision forest detector.
Proceedings ArticleDOI

Simple Does It: Weakly Supervised Instance and Semantic Segmentation

TL;DR: The authors proposed a weak supervision approach that does not require modification of the segmentation training procedure, and showed that when carefully designing the input labels from given bounding boxes, even a single round of training is enough to improve over previously reported weakly supervised results.
Proceedings ArticleDOI

How Far are We from Solving Pedestrian Detection

TL;DR: The gap between current state-of-the-art methods and the "perfect single frame detector" is investigated, the impact of training annotation noise on the detector performance is studied, and it is shown that one can improve even with a small portion of sanitised training data.
Proceedings ArticleDOI

Taking a deeper look at pedestrians

TL;DR: This paper analyses small and big convnets, their architectural choices, parameters, and the influence of different training data, including pretraining on surrogate tasks, and presents the best convnet detectors on the Caltech and KITTI dataset.