Back to Search Start Over

Salient object detection on hyperspectral images using features learned from unsupervised segmentation task

Authors :
Imamoglu, Nevrez
Ding, Guanqun
Fang, Yuming
Kanezaki, Asako
Kouyama, Toru
Nakamura, Ryosuke
Imamoglu, Nevrez
Ding, Guanqun
Fang, Yuming
Kanezaki, Asako
Kouyama, Toru
Nakamura, Ryosuke
Publication Year :
2019

Abstract

Various saliency detection algorithms from color images have been proposed to mimic eye fixation or attentive object detection response of human observers for the same scenes. However, developments on hyperspectral imaging systems enable us to obtain redundant spectral information of the observed scenes from the reflected light source from objects. A few studies using low-level features on hyperspectral images demonstrated that salient object detection can be achieved. In this work, we proposed a salient object detection model on hyperspectral images by applying manifold ranking (MR) on self-supervised Convolutional Neural Network (CNN) features (high-level features) from unsupervised image segmentation task. Self-supervision of CNN continues until clustering loss or saliency maps converges to a defined error between each iteration. Finally, saliency estimations is done as the saliency map at last iteration when the self-supervision procedure terminates with convergence. Experimental evaluations demonstrated that proposed saliency detection algorithm on hyperspectral images is outperforming state-of-the-arts hyperspectral saliency models including the original MR based saliency model.<br />Comment: 5 pages, 3 figures, accepted to appear in IEEE ICASSP 2019 (accepted version)

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1106332502
Document Type :
Electronic Resource