On the semantics of similarity in deep trajectory representations: Unterschied zwischen den Versionen

Aus SDQ-Institutsseminar
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|betreuer=Saeed Taghizadeh
|betreuer=Saeed Taghizadeh
|termin=Institutsseminar/2019-05-31
|termin=Institutsseminar/2019-05-31
|kurzfassung=There are many approaches to compute the similarity between two trajectories. In 2018 a novel approach using deep learning had been introduced, which has several advantages against the classical models like Dynamic Time Warping, Edit Distance with Real Penalty etc. In this thesis the influence of the parameters of the deep learning approach considering the similarity are investigated. The similarity values are further compared between the novel and the classical models and in the end the quality of the similarity computation is evaluated via trajectory clustering techniques​ and finding popular routes in cities.
|kurzfassung=There are many approaches to compute the similarity between two trajectories. In 2018 a novel approach using deep learning had been introduced, which has several advantages against the classical models like Dynamic time warping, Edit distance with real penalty etc. In this thesis, the influence of the parameters of the deep learning approach on the similarity values are investigated. The similarity values are further compared between the novel and the classical models, and in the end the quality of the similarity computation is evaluated via trajectory clustering techniques​ and finding popular routes in cities.
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Version vom 23. Mai 2019, 14:13 Uhr

Vortragende(r) Zdravko Marinov
Vortragstyp Proposal
Betreuer(in) Saeed Taghizadeh
Termin Fr 31. Mai 2019
Vortragsmodus
Kurzfassung There are many approaches to compute the similarity between two trajectories. In 2018 a novel approach using deep learning had been introduced, which has several advantages against the classical models like Dynamic time warping, Edit distance with real penalty etc. In this thesis, the influence of the parameters of the deep learning approach on the similarity values are investigated. The similarity values are further compared between the novel and the classical models, and in the end the quality of the similarity computation is evaluated via trajectory clustering techniques and finding popular routes in cities.