International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
Robust Metric based Anomaly Detection in Kernel Feature Space
Bo Du'*, Liangpei Zhang”, Huang Xin?
1 School of Computer Science, Wuhan University
2 The State Key Laboratory of Information Engineering in
Surveying, Mapping, and Remote Sensing
Wuhan University, P.R. China.
Abstract: This thesis analyzes the anomalous measurement metric in high dimension feature
space, where it is supposed the Gaussian assumption for state-of-art mahanlanobis algorithms is
reasonable. The realization of the detector in high dimension feature space is by kernel trick.
Besides, the masking and swamping effect is further inhibited by an iterative approach in the
feature space. The proposed robust metric based anomaly detection presents promising
performance in hyperspectral remote sensing images: the separability between anomalies and
background is enlarged; background statistics is more concentrated, and immune to the
contamination by anomalies.
Keywords: anomaly detection, hyperspectral images, Manhanlobis distance
Introduction
Anomaly targets in hyperspectal images (HSI) refer to those deviating obviously from the other
background pixels, especially by means of the spectral feature [1]. Typical ones are the man-made
objects in nature scene, such as the vehicles in a grass field. State-of-arts methods mainly evaluate
it by exploiting the distance of an observing pixel to the background statistics center. So the key is
the background statistics, or the anomalous metric. RX and its variants take use of a Manhanlobis
distance from background statistics [2]. In spite of their effectiveness, they are proved to be
susceptible to the masking and swamping effect, due to the contaminated background statistics [3].
Multivariate outlier detection methods, focusing to alleviate this effect, figure out a more robust
metric by eliminating the probable background pixels or a contracting iteration procedure to
obtain a new covariance matrix [3, 4]. Traditional ways include iterative exclusion algorithm, with