Litcius/Paper detail

Graph Laplacian for image anomaly detection

Francesco Verdoja, Marco Grangetto

2020Machine Vision and Applications39 citationsDOIOpen Access PDF

Abstract

Abstract Reed–Xiaoli detector (RXD) is recognized as the benchmark algorithm for image anomaly detection; however, it presents known limitations, namely the dependence over the image following a multivariate Gaussian model, the estimation and inversion of a high-dimensional covariance matrix, and the inability to effectively include spatial awareness in its evaluation. In this work, a novel graph-based solution to the image anomaly detection problem is proposed; leveraging the graph Fourier transform, we are able to overcome some of RXD’s limitations while reducing computational cost at the same time. Tests over both hyperspectral and medical images, using both synthetic and real anomalies, prove the proposed technique is able to obtain significant gains over performance by other algorithms in the state of the art.

Topics & Concepts

Anomaly detectionCovarianceArtificial intelligencePattern recognition (psychology)Computer scienceImage (mathematics)AlgorithmGraphHyperspectral imagingMathematicsBlob detectionInversion (geology)DetectorComputer visionGaussianImage segmentationLaplace operatorBenchmark (surveying)Laplacian matrixImage processingCovariance matrixGaussian noiseAnomaly (physics)CutNoise (video)Fourier transformObject detectionRedundancy (engineering)Covariance intersectionMultivariate statisticsMoore–Penrose pseudoinverseImage denoisingRemote-Sensing Image ClassificationAnomaly Detection Techniques and ApplicationsAdvanced Graph Neural Networks