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Visual Diver Detection using Multi-Descriptor Nearest-Class-Mean Random Forests in the Context of Underwater Human Robot Interaction (HRI) (CROSBI ID 625656)

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

Gomez Chavez, Arturo ; Pfingsthorn, Max ; Birk, Andreas ; Rendulić, Ivor ; Mišković, Nikola Visual Diver Detection using Multi-Descriptor Nearest-Class-Mean Random Forests in the Context of Underwater Human Robot Interaction (HRI) // Proceedings of MTS/IEEE OCEANS'15 Conference. Institute of Electrical and Electronics Engineers (IEEE), 2015. str. 1-7

Podaci o odgovornosti

Gomez Chavez, Arturo ; Pfingsthorn, Max ; Birk, Andreas ; Rendulić, Ivor ; Mišković, Nikola

engleski

Visual Diver Detection using Multi-Descriptor Nearest-Class-Mean Random Forests in the Context of Underwater Human Robot Interaction (HRI)

This paper introduces a visual method for diver detection in the context of Human Robot Interaction (HRI). The detection is treated as a classification problem, where a discriminative model is trained by computing image features of the target (diver) and underwater scenery. This type of scenery poses great challenges due to its high variability, as it often presents high illumination changes, scarce features and image distortions. For this reason, it is desirable to represent this type of images with multiple type of complementary features. The system scalability is, however, lowered as the number of features types increase as the amount of data to represent queries and indexes also increases. To remedy this, we modified the Nearest Class Mean Forests (NCMF) method, a variant of Random Forests, to integrate as many features types as desired without concerning about scalability and performance decay. The system outperforms the common generative tracking methods which fail to encompass di erent type of distortions into one model and ignore background information. And in contrast to tracking methods using acoustic sensors which output a single value (distance to the diver), our approach outputs a region encompassing the diver’s body ; information that can be further exploited to enhance underwater HRI. Not to mention that camera setups o er higher flexibility in size and energy consumption constraints than acoustic sensors. All of the system’s aforementioned capabilities are tested with real-life data obtained from field experiments.

human robot interaction ; diver detection ; nearest-class-mean random forrest

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Podaci o prilogu

1-7.

2015.

objavljeno

Podaci o matičnoj publikaciji

Proceedings of MTS/IEEE OCEANS'15 Conference

Institute of Electrical and Electronics Engineers (IEEE)

Podaci o skupu

MTS/IEEE OCEANS'15 Conference

predavanje

18.05.2015-21.05.2015

Genova, Italija

Povezanost rada

Elektrotehnika, Temeljne tehničke znanosti