SVDD ALGORITHM BASED ON NOISE COST FOR ANOMALY DETECTION IN HYPERSPECTRAL IMAGERY

Journal Title: Applied Computer Letters (ACL) - Year 2017, Vol 1, Issue 2

Abstract

Anomaly detection algorithm based on Support Vector Data Description (SVDD) brings low detection rates due to background training samples being contaminated by anomalous data. To solve the problem, a new method based on SVDD with Noise Cost is proposed by introducing unbalanced data mining cost sensitive mind. This algorithm gives a different noise cost value to each background training samples through the neighbourhood clustering and then introduces the noise cost into SVDD to construct the SVDD hypersphere, thus making the classification interface more compact and improving the description ability of the anomaly and background value. At the same time, the sensitivity to the abnormal algorithm and the detection probability of the algorithm are greatly improved. Experimental results based on simulation data show that: compared to SVDD, this algorithm greatly reduces the false alarm rate, and improves the detection precision.

Authors and Affiliations

Liyan Zhang, Zhilin Liang, Xianling Zeng, Dandan Fu

Keywords

Related Articles

WAVELET THRESHOLD TRANSFORM AND EMPIRICAL MODE DECOMPOSITION JOINT DENOISING OF SIGNAL

Wavelet transforms and empirical mode decomposition are powerful tools for processing non-stationary and nonlinear signals, suitable for de-noising nuclear magnetic resonance logging echo signal. This paper introduces th...

GAIT PLANNING FOR ONE-LEGGED ARTICULATED HOPPING ROBOT

A gait planning procedure for planar one-legged articulated hopping robot is proposed in this paper. Its major advantage is the capability to design the take-off velocities of the mass center of the robot in X and Z axes...

INTERFERENCE CANCELLATION SCHEME BASED ON INTERFERENCE ALIGNMENT FOR MULTIUSER FULL-DUPLEX COMMUNICATION

Full-duplex systems have been proposed as a key technology of fifth generation (5G) mobile communications .For the first time this paper proposes an interference cancellation scheme by interference alignment to eliminate...

COMPUTER RESEARCH OF THEORY LINE LOSS BASED ON GIS COMPONENT TECHNOLOGY

The theoretical line loss data of distribution network is an important economical and technical index in Grid corporation routine work. This paper in view of the problems of theoretical line loss calculation in data inte...

RESEARCH ON NOISYS AND NOISY REDUCTION STRATEGY IN IEC ALGORITHM

The noises in the individual fitness evaluation will be unfavorable to the population evolution in IEC (interactive evolutionary computation), so it restricts extensive application of the algorithm in complicated optimiz...

Download PDF file
  • EP ID EP403958
  • DOI 10.26480/acl.02.2017.16.19
  • Views 103
  • Downloads 0

How To Cite

Liyan Zhang, Zhilin Liang, Xianling Zeng, Dandan Fu (2017). SVDD ALGORITHM BASED ON NOISE COST FOR ANOMALY DETECTION IN HYPERSPECTRAL IMAGERY. Applied Computer Letters (ACL), 1(2), 16-19. https://europub.co.uk/articles/-A-403958