Please use this identifier to cite or link to this item: https://research.matf.bg.ac.rs/handle/123456789/1936
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dc.contributor.authorAdžemović, Momiren_US
dc.contributor.authorTadić, Predragen_US
dc.contributor.authorPetrović, Andrijaen_US
dc.contributor.authorNikolić, Mladenen_US
dc.date.accessioned2025-04-10T10:02:45Z-
dc.date.available2025-04-10T10:02:45Z-
dc.date.issued2025-01-01-
dc.identifier.issn09328092-
dc.identifier.urihttps://research.matf.bg.ac.rs/handle/123456789/1936-
dc.description.abstractTraditional tracking-by-detection systems typically employ Kalman filters (KF) for state estimation. However, the KF requires domain-specific design choices and it is ill-suited to handling non-linear motion patterns. To address these limitations, we propose two innovative data-driven filtering methods. Our first method employs a Bayesian filter with a trainable motion model to predict an object’s future location and combines its predictions with observations gained from an object detector to enhance bounding box prediction accuracy. Moreover, it dispenses with most domain-specific design choices characteristic of the KF. The second method, an end-to-end trainable filter, goes a step further by learning to correct detector errors, further minimizing the need for domain expertise. Additionally, we introduce a range of motion model architectures based on recurrent neural networks, neural ordinary differential equations, and conditional neural processes, that are combined with the proposed filtering methods. Our extensive evaluation across multiple datasets demonstrates that our proposed filters outperform the traditional KF in object tracking, especially in the case of non-linear motion patterns—the use case our filters are best suited to. We also conduct noise robustness analysis of our filters with convincing positive results. We further propose a new cost function for associating observations with tracks. Our tracker, which incorporates this new association cost with our proposed filters, outperforms the conventional SORT method and other motion-based trackers in multi-object tracking according to multiple metrics on motion-rich DanceTrack and SportsMOT datasets.en_US
dc.language.isoenen_US
dc.publisherSpringeren_US
dc.relation.ispartofMachine Vision and Applicationsen_US
dc.subjectConditional neural processesen_US
dc.subjectDeep learningen_US
dc.subjectFilteren_US
dc.subjectMotion modelen_US
dc.subjectMulti-object trackingen_US
dc.subjectNeural ordinary differential equationsen_US
dc.titleBeyond Kalman filters: deep learning-based filters for improved object trackingen_US
dc.typeArticleen_US
dc.identifier.doi10.1007/s00138-024-01644-x-
dc.identifier.scopus2-s2.0-85211947874-
dc.identifier.isi001377050700001-
dc.identifier.urlhttps://api.elsevier.com/content/abstract/scopus_id/85211947874-
dc.contributor.affiliationInformatics and Computer Scienceen_US
dc.relation.issn0932-8092en_US
dc.description.rankM22en_US
dc.relation.firstpageArticle no. 20en_US
dc.relation.volume36en_US
dc.relation.issue1en_US
item.grantfulltextnone-
item.cerifentitytypePublications-
item.openairecristypehttp://purl.org/coar/resource_type/c_18cf-
item.openairetypeArticle-
item.fulltextNo Fulltext-
item.languageiso639-1en-
crisitem.author.deptInformatics and Computer Science-
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