Online self-supervised multi-instance segmentation of dynamic objects


Autoria(s): Bewley, Alex; Guizilini, Vitor; Ramos, Fabio; Upcroft, Ben
Contribuinte(s)

Parker, Lynne

Hutchinson, Seth

Data(s)

31/05/2014

Resumo

This paper presents a method for the continuous segmentation of dynamic objects using only a vehicle mounted monocular camera without any prior knowledge of the object’s appearance. Prior work in online static/dynamic segmentation is extended to identify multiple instances of dynamic objects by introducing an unsupervised motion clustering step. These clusters are then used to update a multi-class classifier within a self-supervised framework. In contrast to many tracking-by-detection based methods, our system is able to detect dynamic objects without any prior knowledge of their visual appearance shape or location. Furthermore, the classifier is used to propagate labels of the same object in previous frames, which facilitates the continuous tracking of individual objects based on motion. The proposed system is evaluated using recall and false alarm metrics in addition to a new multi-instance labelled dataset to evaluate the performance of segmenting multiple instances of objects.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/69800/

Publicador

IEEE

Relação

http://eprints.qut.edu.au/69800/1/root.pdf

DOI:10.1109/ICRA.2014.6907020

Bewley, Alex, Guizilini, Vitor, Ramos, Fabio, & Upcroft, Ben (2014) Online self-supervised multi-instance segmentation of dynamic objects. In Parker, Lynne & Hutchinson, Seth (Eds.) International Conference on Robotics and Automation, IEEE, Hong Kong Convention and Exhibition Center, Hong Kong, China, pp. 1296-1303.

Direitos

Copyright 2014 IEEE

Fonte

School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #motion clustering #multiple object tracking #online learning #self-supervised learning
Tipo

Conference Paper