CVFeb 19, 2018

Machine Learning Methods for Data Association in Multi-Object Tracking

arXiv:1802.06897v240 citations
Originality Synthesis-oriented
AI Analysis

It addresses the combinatorial challenge of data association for researchers in multi-object tracking, but is incremental as it synthesizes existing approaches.

This survey reviews machine learning methods for data association in multi-object tracking, focusing on learning algorithms for the assignment step and comparing their performance.

Data association is a key step within the multi-object tracking pipeline that is notoriously challenging due to its combinatorial nature. A popular and general way to formulate data association is as the NP-hard multidimensional assignment problem (MDAP). Over the last few years, data-driven approaches to assignment have become increasingly prevalent as these techniques have started to mature. We focus this survey solely on learning algorithms for the assignment step of multi-object tracking, and we attempt to unify various methods by highlighting their connections to linear assignment as well as to the MDAP. First, we review probabilistic and end-to-end optimization approaches to data association, followed by methods that learn association affinities from data. We then compare the performance of the methods presented in this survey, and conclude by discussing future research directions.

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