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Memory-efficient Global Refinement of Decision-Tree Ensembles and its Application to Face Alignment (CROSBI ID 665163)

Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija

Markuš, Nenad ; Gogić, Ivan ; Pandžić, Igor Sunday ; Ahlberg, Jörgen Memory-efficient Global Refinement of Decision-Tree Ensembles and its Application to Face Alignment // Proceedings of British Machine Vision Conference BMVC 2018. 2018. str. 1-11

Podaci o odgovornosti

Markuš, Nenad ; Gogić, Ivan ; Pandžić, Igor Sunday ; Ahlberg, Jörgen

engleski

Memory-efficient Global Refinement of Decision-Tree Ensembles and its Application to Face Alignment

Ren et al. recently introduced a method for aggregating multiple decision trees into a strong predictor by interpreting a path taken by a sample down each tree as a binary vector and performing linear regression on top of these vectors stacked together. They provided experimental evidence that the method offers advantages over the usual approaches for combining decision trees (random forests and boosting). The method truly shines when the regression target is a large vector with correlated dimensions, such as a 2D face shape represented with the positions of several facial landmarks. However, we argue that their basic method is not applicable in many practical scenarios due to large memory requirements. This paper shows how this issue can be solved through the use of quantization and architectural changes of the predictor that maps decision tree-derived encodings to the desired output.

decision tree

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Podaci o prilogu

1-11.

2018.

objavljeno

Podaci o matičnoj publikaciji

Proceedings of British Machine Vision Conference BMVC 2018

Podaci o skupu

British Machine Vision Conference BMVC

predavanje

03.09.2018-06.09.2018

Newcastle upon Tyne, Ujedinjeno Kraljevstvo

Povezanost rada

Računarstvo