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Dive into the research topics where Jan Hendrik Hosang is active.

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Featured researches published by Jan Hendrik Hosang.


european conference on computer vision | 2014

Ten Years of Pedestrian Detection, What Have We Learned?

Rodrigo Benenson; Mohamed Omran; Jan Hendrik Hosang; Bernt Schiele

Paper-by-paper results make it easy to miss the forest for the trees.We analyse 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. We observe that there exist three families of approaches, all currently reaching similar detec- tion quality. Based on our analysis, we study the complementarity of the most promising ideas by combining multiple published strategies. This new decision forest detector achieves the current best known performance on the challenging Caltech-USA dataset.


IEEE Transactions on Pattern Analysis and Machine Intelligence | 2016

What Makes for Effective Detection Proposals

Jan Hendrik Hosang; Rodrigo Benenson; Piotr Dollár; Bernt Schiele

Current top performing object detectors employ detection proposals to guide the search for objects, thereby avoiding exhaustive sliding window search across images. Despite the popularity and widespread use of detection proposals, it is unclear which trade-offs are made when using them during object detection. We provide 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. Our analysis shows that for object detection improving proposal localisation accuracy is as important as improving recall. We introduce a novel metric, the average recall (AR), which rewards both high recall and good localisation and correlates surprisingly well with detection performance. Our findings show common strengths and weaknesses of existing methods, and provide insights and metrics for selecting and tuning proposal methods.


computer vision and pattern recognition | 2015

Taking a deeper look at pedestrians

Jan Hendrik Hosang; Mohamed Omran; Rodrigo Benenson; Bernt Schiele

In this paper we study the use of convolutional neural networks (convnets) for the task of pedestrian detection. Despite their recent diverse successes, convnets historically underperform compared to other pedestrian detectors. We deliberately omit explicitly modelling the problem into the network (e.g. parts or occlusion modelling) and show that we can reach competitive performance without bells and whistles. In a wide range of experiments we analyse small and big convnets, their architectural choices, parameters, and the influence of different training data, including pretraining on surrogate tasks. We present the best convnet detectors on the Caltech and KITTI dataset. On Caltech our convnets reach top performance both for the Caltech1x and Caltech10x training setup. Using additional data at training time our strongest convnet model is competitive even to detectors that use additional data (optical flow) at test time.


computer vision and pattern recognition | 2017

Simple Does It: Weakly Supervised Instance and Semantic Segmentation

Anna Khoreva; Rodrigo Benenson; Jan Hendrik Hosang; Matthias Hein; Bernt Schiele

Semantic labelling and instance segmentation are two tasks that require particularly costly annotations. Starting from weak supervision in the form of bounding box detection annotations, we propose a new approach that does not require modification of the segmentation training procedure. We show 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. Overall, our weak supervision approach reaches ~95% of the quality of the fully supervised model, both for semantic labelling and instance segmentation.


IEEE Transactions on Human-Machine Systems | 2015

GyroPen: Gyroscopes for Pen-Input With Mobile Phones

Thomas Deselaers; Daniel Martin Keysers; Jan Hendrik Hosang; Henry A. Rowley

We present GyroPen, a method to reconstruct the motion path for pen-like interaction from standard built-in sensors in modern smartphones. The key idea is to reconstruct a representation of the trajectory of the phones corner that is touching a writing or drawing surface from the measurements obtained from the phones gyroscopes and accelerometers. We propose to directly use the angular trajectory for this reconstruction, which removes the necessity for accurate absolute 3-D position estimation, a task that can be difficult using low-cost accelerometers. We connect GyroPen to a handwriting recognition system and perform two proof-of-concept experiments to demonstrate that the reconstruction accuracy of GyroPen is accurate enough to be a promising approach to text entry. In a first experiment, the average novice participant (n=10) was able to write the first word only 37 s after the starting to use GyroPen for the first time. In a second experiment, experienced users (n=2) were able to write at the speed of 3-4 s for one English word and with a character error rate of 18%.


computer vision and pattern recognition | 2017

Learning Non-maximum Suppression

Jan Hendrik Hosang; Rodrigo Benenson; Bernt Schiele

Object detectors have hugely profited from moving towards an end-to-end learning paradigm: proposals, fea tures, and the classifier becoming one neural network improved results two-fold on general object detection. One indispensable component is non-maximum suppression (NMS), a post-processing algorithm responsible for merging all detections that belong to the same object. The de facto standard NMS algorithm is still fully hand-crafted, suspiciously simple, and — being based on greedy clustering with a fixed distance threshold — forces a trade-off between recall and precision. We propose a new network architecture designed to perform NMS, using only boxes and their score. We report experiments for person detection on PETS and for general object categories on the COCO dataset. Our approach shows promise providing improved localization and occlusion handling.


IEEE Transactions on Pattern Analysis and Machine Intelligence | 2018

Towards Reaching Human Performance in Pedestrian Detection

Shanshan Zhang; Rodrigo Benenson; Mohamed Omran; Jan Hendrik Hosang; Bernt Schiele

Encouraged by the recent progress in pedestrian detection, we investigate the gap between current state-of-the-art methods and the “perfect single frame detector”. We enable our analysis by creating a human baseline for pedestrian detection (over the Caltech pedestrian dataset). After manually clustering the frequent errors of a top detector, we characterise both localisation and background-versus-foreground errors. To address localisation errors we study the impact of training annotation noise on the detector performance, and show that we can improve results even with a small portion of sanitised training data. To address background/foreground discrimination, we study convnets for pedestrian detection, and discuss which factors affect their performance. Other than our in-depth analysis, we report top performance on the Caltech pedestrian dataset, and provide a new sanitised set of training and test annotations.


german conference on pattern recognition | 2016

A Convnet for Non-maximum Suppression

Jan Hendrik Hosang; Rodrigo Benenson; Bernt Schiele

Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. While essential object detection ingredients such as features, classifiers, and proposal methods have been extensively researched surprisingly little work has aimed to systematically address NMS. The de-facto standard for NMS is based on greedy clustering with a fixed distance threshold, which forces to trade-off recall versus precision. We propose a convnet designed to perform NMS of a given set of detections. We report experiments on a synthetic setup, crowded pedestrian scenes, and for general person detection. Our approach overcomes the intrinsic limitations of greedy NMS, obtaining better recall and precision.


computer vision and pattern recognition | 2016

How Far are We from Solving Pedestrian Detection

Shanshan Zhang; Rodrigo Benenson; Mohamed Omran; Jan Hendrik Hosang; Bernt Schiele


Archive | 2017

Analysis and improvement of the visual object detection pipeline

Jan Hendrik Hosang

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Matthias Hein

Technische Universität Ilmenau

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