This article is devoted to passive submarine target motion analysis (TMA) from data given by sonobuoys and vertical arrays. The set of sonobuoys provide time difference of arrival measurements and ...and the vertical antennas provide cosines of elevation. The originality of this study comes from the fact that (i) the measurements are in a cluttered environment, (ii) the elevations are those of direct and/or reflected paths, (iii) the sound travel time (also called propagation delay) is taken into consideration. The asymptotic performance is evaluated by the Crame´r-Rao lower bound and confirmed by intensive simulations.
Multiple Object Tracking (MOT) has gained increasing attention due to its academic and commercial potential. Although different approaches have been proposed to tackle this problem, it still remains ...challenging due to factors like abrupt appearance changes and severe object occlusions. In this work, we contribute the first comprehensive and most recent review on this problem. We inspect the recent advances in various aspects and propose some interesting directions for future research. To the best of our knowledge, there has not been any extensive review on this topic in the community. We endeavor to provide a thorough review on the development of this problem in recent decades. The main contributions of this review are fourfold: 1) Key aspects in an MOT system, including formulation, categorization, key principles, evaluation of MOT are discussed; 2) Instead of enumerating individual works, we discuss existing approaches according to various aspects, in each of which methods are divided into different groups and each group is discussed in detail for the principles, advances and drawbacks; 3) We examine experiments of existing publications and summarize results on popular datasets to provide quantitative and comprehensive comparisons. By analyzing the results from different perspectives, we have verified some basic agreements in the field; and 4) We provide a discussion about issues of MOT research, as well as some interesting directions which will become potential research effort in the future.
Simple online and realtime tracking Bewley, Alex; Zongyuan Ge; Ott, Lionel ...
2016 IEEE International Conference on Image Processing (ICIP),
2016-Sept.
Conference Proceeding
Open access
This paper explores a pragmatic approach to multiple object tracking where the main focus is to associate objects efficiently for online and realtime applications. To this end, detection quality is ...identified as a key factor influencing tracking performance, where changing the detector can improve tracking by up to 18.9%. Despite only using a rudimentary combination of familiar techniques such as the Kalman Filter and Hungarian algorithm for the tracking components, this approach achieves an accuracy comparable to state-of-the-art online trackers. Furthermore, due to the simplicity of our tracking method, the tracker updates at a rate of 260 Hz which is over 20x faster than other state-of-the-art trackers.
•Tracks and detections are modelled as random vectors in which uncertainties are taken into account.•The similarity between track and detection is evaluated based on a modified Kullback-Leibler ...divergence.•The level of track uncertainty is incorporated in the proposed cost function to guide the data association process.•Code has been made available at https://github.com/hejiawei2023/UG3DMOT. For the benefit of the community.
In the existing literature, most 3D multi-object tracking algorithms based on the tracking-by-detection framework employed deterministic tracks and detections for similarity calculation in the data association stage. Namely, the inherent uncertainties existing in tracks and detections are overlooked. In this work, we discard the commonly used deterministic tracks and deterministic detections for data association, instead, we propose to model tracks and detections as random vectors in which uncertainties are taken into account. Then, based on a modified Kullback-Leibler divergence, the similarity between two multidimensional distributions, i.e. track and detection, is evaluated for data association purposes. Lastly, the level of track uncertainty is incorporated in our cost function design to guide the data association process. Comparative experiments have been conducted on two typical datasets, KITTI and nuScenes, and the results indicated that our proposed method outperformed the compared state-of-the-art 3D tracking algorithms. For the benefit of the community, our code has been made available at https://github.com/hejiawei2023/UG3DMOT.
Simple Online and Realtime Tracking (SORT) is a pragmatic approach to multiple object tracking with a focus on simple, effective algorithms. In this paper, we integrate appearance information to ...improve the performance of SORT. Due to this extension we are able to track objects through longer periods of occlusions, effectively reducing the number of identity switches. In spirit of the original framework we place much of the computational complexity into an offline pre-training stage where we learn a deep association metric on a largescale person re-identification dataset. During online application, we establish measurement-to-track associations using nearest neighbor queries in visual appearance space. Experimental evaluation shows that our extensions reduce the number of identity switches by 45%, achieving overall competitive performance at high frame rates.
This paper proposes an efficient implementation of the generalized labeled multi-Bernoulli (GLMB) filter by combining the prediction and update into a single step. In contrast to an earlier ...implementation that involves separate truncations in the prediction and update steps, the proposed implementation requires only one truncation procedure for each iteration. Furthermore, we propose an efficient algorithm for truncating the GLMB filtering density based on Gibbs sampling. The resulting implementation has a linear complexity in the number of measurements and quadratic in the number of hypothesized objects.
Modern multi-object tracking (MOT) systems usually build trajectories through associating per-frame detections. However, facing the challenges of camera motion, fast motion, and occlusion, it is ...difficult to ensure the quality of long-range tracking or even the tracklet purity, especially for small objects. Most of tracking frameworks depend heavily on the performance of re-identification (ReID) for the data association. Unfortunately, the ReID-based association is not only unreliable and time-consuming, but still cannot address the false negatives for occluded and blurred objects, due to noisy partial-detections, similar appearances, and lack of temporal-spatial constraints. In this paper, we propose an enhanced MOT paradigm, namely Motion-Aware Tracker (MAT). Our MAT is a plug-and-play solution, it mainly focuses on high-performance motion-based prediction, reconnection, and association. First, the nonrigid pedestrian motion and rigid camera motion are blended seamlessly to develop the Integrated Motion Localization (IML) module. Second, the Dynamic Reconnection Context (DRC) module is devised to guarantee the robustness for long-range motion-based reconnection. The core ideas in DRC are the motion-based dynamic-window and cyclic pseudo-observation trajectory filling strategy, which can smoothly fill in the tracking fragments caused by occlusion or blur. At last, we present the 3D Integral Image (3DII) module to efficiently cut off useless track-detection association connections using temporal-spatial constraints. Extensive experiments are conducted on the MOT16&17 challenging benchmarks. The results demonstrate that our MAT can achieve superior performance and surpass other state-of-the-art trackers by a large margin with high efficiency.
Recently, tracking-by-detection has become a popular paradigm in Multiple-object tracking (MOT) for its concise pipeline. Many current works first associate the detections to form track proposals and ...then score proposalns by manual functions to select the best. However, long-term tracking information is lost in this way due to detection failure or heavy occlusion. In this paper, the Extendable Multiple Nodes Tracking framework (EMNT) is introduced to model the association. Instead of detections, EMNT creates four basic types of nodes including correct, false, dummy and termination to generally model the tracking procedure. Further, we propose a General Recurrent Tracking Unit (RTU++) to score track proposals by capturing long-term information. In addition, we present an efficient generation method of simulated tracking data to overcome the dilemma of limited available data in MOT. The experiments show that our methods achieve state-of-the-art performance on MOT17, MOT20 and HiEve benchmarks. Meanwhile, RTU++ can be flexibly plugged into other trackers such as MHT, and bring significant improvements. The additional experiments on MOTS20 and CTMC-v1 also demonstrate the generalization ability of RTU++ trained by simulated data in various scenarios.
To track multiple extended targets in dense clutter, an improved Gaussian processes linear joint probabilistic data association (IGP-LJPDA) method is proposed. This method consists of two stages. In ...the first stage, measurements are associated with targets, and pseudo-measurements are constructed. By integrating linear JPDA with Gaussian processes, probabilities for each measurement's assignment to each target are determined. Following this, a novel pseudo-measurement model is devised by combining the marginal probability of each target with measurements belonging to their respective basic point neighborhood, enabling more efficient state updates. In the second stage, pseudo-measurements are associated with the contour, and states of extended targets are updated accordingly. By associating pseudo-measurements with Gaussian processes basic points of each target, the algorithm achieves globally optimal association. The proposed algorithm demonstrates a notable improvement in Intersection over Union (IOU) metrics in environments with significantly higher clutter rates compared to existing methods.
•A multiple extended targets tracking algorithm that can perform efficiently in dense clutter is proposed.•A new pseudo-measurement model is constructed, resulting in a decreased computational complexity.•A pseudo-measurement to contour association is proposed to achieve a globally optimal association.•The track maintenance process operates without relying on any clustering or partitioning method.