Tomas Vojir
Czech Technical University in Prague
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Publication
Featured researches published by Tomas Vojir.
european conference on computer vision | 2016
Matej Kristan; Roman P. Pflugfelder; Aleš Leonardis; Jiri Matas; Luka Cehovin; Georg Nebehay; Tomas Vojir; Gustavo Fernández; Alan Lukezic; Aleksandar Dimitriev; Alfredo Petrosino; Amir Saffari; Bo Li; Bohyung Han; CherKeng Heng; Christophe Garcia; Dominik Pangersic; Gustav Häger; Fahad Shahbaz Khan; Franci Oven; Horst Bischof; Hyeonseob Nam; Jianke Zhu; Jijia Li; Jin Young Choi; Jin-Woo Choi; João F. Henriques; Joost van de Weijer; Jorge Batista; Karel Lebeda
Visual tracking has attracted a significant attention in the last few decades. The recent surge in the number of publications on tracking-related problems have made it almost impossible to follow the developments in the field. One of the reasons is that there is a lack of commonly accepted annotated data-sets and standardized evaluation protocols that would allow objective comparison of different tracking methods. To address this issue, the Visual Object Tracking (VOT) workshop was organized in conjunction with ICCV2013. Researchers from academia as well as industry were invited to participate in the first VOT2013 challenge which aimed at single-object visual trackers that do not apply pre-learned models of object appearance (model-free). Presented here is the VOT2013 benchmark dataset for evaluation of single-object visual trackers as well as the results obtained by the trackers competing in the challenge. In contrast to related attempts in tracker benchmarking, the dataset is labeled per-frame by visual attributes that indicate occlusion, illumination change, motion change, size change and camera motion, offering a more systematic comparison of the trackers. Furthermore, we have designed an automated system for performing and evaluating the experiments. We present the evaluation protocol of the VOT2013 challenge and the results of a comparison of 27 trackers on the benchmark dataset. The dataset, the evaluation tools and the tracker rankings are publicly available from the challenge website (http://votchallenge.net).
IEEE Transactions on Pattern Analysis and Machine Intelligence | 2016
Matej Kristan; Jiri Matas; Aleš Leonardis; Tomas Vojir; Roman P. Pflugfelder; Gustavo Fernández; Georg Nebehay; Fatih Porikli; Luka Cehovin
This paper addresses the problem of single-target tracker performance evaluation. We consider the performance measures, the dataset and the evaluation system to be the most important components of tracker evaluation and propose requirements for each of them. The requirements are the basis of a new evaluation methodology that aims at a simple and easily interpretable tracker comparison. The ranking-based methodology addresses tracker equivalence in terms of statistical significance and practical differences. A fully-annotated dataset with per-frame annotations with several visual attributes is introduced. The diversity of its visual properties is maximized in a novel way by clustering a large number of videos according to their visual attributes. This makes it the most sophistically constructed and annotated dataset to date. A multi-platform evaluation system allowing easy integration of third-party trackers is presented as well. The proposed evaluation methodology was tested on the VOT2014 challenge on the new dataset and 38 trackers, making it the largest benchmark to date. Most of the tested trackers are indeed state-of-the-art since they outperform the standard baselines, resulting in a highly-challenging benchmark. An exhaustive analysis of the dataset from the perspective of tracking difficulty is carried out. To facilitate tracker comparison a new performance visualization technique is proposed.
international conference on intelligent transportation systems | 2012
Claudio Caraffi; Tomas Vojir; Jiri Trefny; Jan Sochman; Jiri Matas
A novel system for detection and tracking of vehicles from a single car-mounted camera is presented. The core of the system are high-performance vision algorithms: the WaldBoost detector [1] and the TLD tracker [2] that are scheduled so that a real-time performance is achieved. The vehicle monitoring system is evaluated on a new dataset collected on Italian motorways which is provided with approximate ground truth (GT0) obtained from laser scans. For a wide range of distances, the recall and precision of detection for cars are excellent. Statistics for trucks are also reported. The dataset with the ground truth is made public.
Pattern Recognition Letters | 2014
Tomas Vojir; Jana Noskova; Jiri Matas
The mean-shift procedure is a popular object tracking algorithm since it is fast, easy to implement and performs well in a range of conditions. We address the problem of scale adaptation and present a novel theoretically justified scale estimation mechanism which relies solely on the mean-shift procedure for the Hellinger distance. We also propose two improvements of the mean-shift tracker that make the scale estimation more robust in the presence of background clutter. The first one is a novel histogram color weighting that exploits the object neighborhood to help discriminate the target called background ratio weighting (BRW). We show that the BRW improves performance of MS-like tracking methods in general. The second improvement boost the performance of the tracker with the proposed scale estimation by the introduction of a forward-backward consistency check and by adopting regularization terms that counter two major problems: scale expansion caused by background clutter and scale implosion on self-similar objects. The proposed mean-shift tracker with scale selection and BRW is compared with recent state-of-the-art algorithms on a dataset of 77 public sequences. It outperforms the reference algorithms in average recall, processing speed and it achieves the best score for 30% of the sequences - the highest percentage among the reference algorithms.
computer vision and pattern recognition | 2017
Alan Lukezic; Tomas Vojir; Luka Cehovin Zajc; Jiri Matas; Matej Kristan
Short-term tracking is an open and challenging problem for which discriminative correlation filters (DCF) have shown excellent performance. We introduce the channel and spatial reliability concepts to DCF tracking and provide a novel learning algorithm for its efficient and seamless integration in the filter update and the tracking process. The spatial reliability map adjusts the filter support to the part of the object suitable for tracking. This allows tracking of non-rectangular objects as well as extending the search region. Channel reliability reflects the quality of the learned filter and it is used as a feature weighting coefficient in localization. Experimentally, with only two simple standard features, HOGs and Colornames, the novel CSR-DCF method – DCF with Channel and Spatial Reliability – achieves state-of-the-art results on VOT 2016, VOT 2015 and OTB. The CSR-DCF runs in real-time on a CPU.
international conference on computer vision | 2015
Michael Felsberg; Amanda Berg; Gustav Häger; Jörgen Ahlberg; Matej Kristan; Jiri Matas; Aleš Leonardis; Luka Cehovin; Gustavo Fernández; Tomas Vojir; Georg Nebehay; Roman P. Pflugfelder
The Thermal Infrared Visual Object Tracking challenge 2015, VOT-TIR2015, aims at comparing short-term single-object visual trackers that work on thermal infrared (TIR) sequences and do not apply pre-learned models of object appearance. VOT-TIR2015 is the first benchmark on short-term tracking in TIR sequences. Results of 24 trackers are presented. For each participating tracker, a short description is provided in the appendix. The VOT-TIR2015 challenge is based on the VOT2013 challenge, but introduces the following novelties: (i) the newly collected LTIR (Link -- ping TIR) dataset is used, (ii) the VOT2013 attributes are adapted to TIR data, (iii) the evaluation is performed using insights gained during VOT2013 and VOT2014 and is similar to VOT2015.
scandinavian conference on image analysis | 2013
Tomas Vojir; Jana Noskova; Jiri Matas
Mean-Shift tracking is a popular algorithm for object tracking since it is easy to implement and it is fast and robust. In this paper, we address the problem of scale adaptation of the Hellinger distance based Mean-Shift tracker.
Computer Vision and Image Understanding | 2016
Tomas Vojir; Jiri Matas; Jana Noskova
We introduce a novel method for fusion of multiple trackers based on Hidden Markov Models.We propose a simple, and so far unused, unsupervised method for HMMs training in the context of tracking using a tunable feature-based detector with very low false positive rate-state-of-the-art performance on multiple public benchmarks and, additionally, on extensive collection of publicly available sequences. In this paper, we propose a novel method for visual object tracking called HMMTxD. The method fuses observations from complementary out-of-the box trackers and a detector by utilizing a hidden Markov model whose latent states correspond to a binary vector expressing the failure of individual trackers. The Markov model is trained in an unsupervised way, relying on an online learned detector to provide a source of tracker-independent information for a modified Baum- Welch algorithm that updates the model w.r.t. the partially annotated data. We show the effectiveness of the proposed method on combination of two and three tracking algorithms. The performance of HMMTxD is evaluated on two standard benchmarks (CVPR2013 and VOT) and on a rich collection of 77 publicly available sequences. The HMMTxD outperforms the state-of-the-art, often significantly, on all data-sets in almost all criteria.
Proceedings of the 19th Computer Vision Winter Workshop | 2014
Matej Kristan; Roman P. Pflugfelder; Aleš Leonardis; Jiri Matas; Fatih Porikli; Luka Cehovin; Georg Nebehay; Gustavo Fernández; Tomas Vojir
arXiv: Computer Vision and Pattern Recognition | 2018
Alan Lukezic; Luka Cehovin Zajc; Tomas Vojir; Jiri Matas; Matej Kristan