Towards automatic object segmentation with sequential multiple views


Autoria(s): He, Hu; McKinnon, David N.; Upcroft, Ben
Contribuinte(s)

Drummond, Tom

Data(s)

2011

Resumo

Object segmentation is one of the fundamental steps for a number of robotic applications such as manipulation, object detection, and obstacle avoidance. This paper proposes a visual method for incorporating colour and depth information from sequential multiview stereo images to segment objects of interest from complex and cluttered environments. Rather than segmenting objects using information from a single frame in the sequence, we incorporate information from neighbouring views to increase the reliability of the information and improve the overall segmentation result. Specifically, dense depth information of a scene is computed using multiple view stereo. Depths from neighbouring views are reprojected into the reference frame to be segmented compensating for imperfect depth computations for individual frames. The multiple depth layers are then combined with color information from the reference frame to create a Markov random field to model the segmentation problem. Finally, graphcut optimisation is employed to infer pixels belonging to the object to be segmented. The segmentation accuracy is evaluated over images from an outdoor video sequence demonstrating the viability for automatic object segmentation for mobile robots using monocular cameras as a primary sensor.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/47889/

Publicador

Australian Robotics & Automation Association

Relação

http://eprints.qut.edu.au/47889/1/2011013103.He.eprints.Towards_automatic_object_segmentation_with_multiple_views.pdf

https://ssl.linklings.net/conferences/acra/program/attendee_program_acra2011/includes/files/pap154.pdf

He, Hu, McKinnon, David N., & Upcroft, Ben (2011) Towards automatic object segmentation with sequential multiple views. In Drummond, Tom (Ed.) ACRA 2011 Proceedings, Australian Robotics & Automation Association, Monash University, Melbourne, VIC, pp. 1-7.

Direitos

Copyright 2011 Australian Robotics & Automation Association.

Fonte

Faculty of Built Environment and Engineering; Creative Industries Faculty; Institute for Creative Industries and Innovation; School of Engineering Systems

Palavras-Chave #080104 Computer Vision #Segmentation #Multiple Views #Structure from Motion
Tipo

Conference Paper