4.7 Article

Hierarchical generator of tracking global hypotheses

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 206, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.117813

Keywords

Multi-object tracking; Hierarchical data association; Tracking global hypothesis; Appearance neural model

Funding

  1. Spanish Government through the CICYT [TRA2016-78886-C3-1-R, RTI2018-096036-B-C21]
  2. Universidad Carlos III of Madrid through (PEAVAUTOCM-UC3M)
  3. Comunidad de Madrid through SEGVAUTO-4.0-CM [P2018/EMT-4362]
  4. Ministerio de Educacion, Cultura y Deporte para la Formacion de Profesorado Universitario [FPU14/02143]
  5. NVIDIA Corporation

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This article proposes a hierarchical method for generating tracking global hypotheses to address the difficulties of multi-object tracking in complex scenarios. By dividing the data association process into different levels and properly combining various affinity metrics, the method can generate a global hypothesis that describes the assignment of identities and handle new individuals entering the scene.
The presence of crowds, crossing people, occlusions, and individuals entering and leaving the monitored scenario turns the automatization of Multi-Object Tracking into a demanding task. Due to the difficulties in dealing with those situations, the data association between the incoming observations and their corresponding identities could produce split, merged, and even missed tracks. This article proposes a Hierarchical Generator of Tracking Global Hypotheses (HGTGH) to prevent those errors. In this method, the data association process is divided into hier-archical levels according to multiple factors, such as the duration of tracking on the individuals or the number of frames in a row where they have been missed. A dedicated formulation of the association cost at each level properly combines various affinity metrics. Instead of generating hypotheses for each individual and analyzing them through a batch of future frames, the proposed method immediately generates a global hypothesis that describes the assignment of a whole set of identities on every incoming frame. The generated hypothesis is also able to render new people entering the scene. Thanks to this advantage, the proposed method simultaneously addresses the reduction of identity switches and the problem of starting new tracks. This novel data association method constitutes the core of an online tracking algorithm, which has been evaluated over the MOT17 dataset to demonstrate its effectiveness.

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