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
Abstract—This paper addresses two issues related to the detection of hyperspectral anomalies. The fi...
Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply sea...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...
This thesis provides a performance comparison of linear and nonlinear subspace-based anomaly detecti...
International audienceAnomaly detection methods are devoted to target detection schemes in which no ...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
Abstract—Anomaly detection methods are devoted to target detection schemes in which no a priori info...
In this paper we present a novel algorithm for anomaly detection in multichannel images. Proposed al...
This thesis provides a performance comparison of linear and nonlinear subspace-based anomaly detecti...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
International audienceAnomaly Detection methods are used when there is not enough information about ...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
In recent years, hyperspectral Anomaly Detection (AD) has become a challenging area due to the rich ...
Recent studies on global anomaly detection (AD) in hyperspectral images have focused on non-parametr...
Abstract—This paper addresses two issues related to the detection of hyperspectral anomalies. The fi...
Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply sea...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...
This thesis provides a performance comparison of linear and nonlinear subspace-based anomaly detecti...
International audienceAnomaly detection methods are devoted to target detection schemes in which no ...
Anomaly Detection methods are used when there is not enough information about the target to detect. ...
Abstract—Anomaly detection methods are devoted to target detection schemes in which no a priori info...
In this paper we present a novel algorithm for anomaly detection in multichannel images. Proposed al...
This thesis provides a performance comparison of linear and nonlinear subspace-based anomaly detecti...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
International audienceAnomaly Detection methods are used when there is not enough information about ...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
In recent years, hyperspectral Anomaly Detection (AD) has become a challenging area due to the rich ...
Recent studies on global anomaly detection (AD) in hyperspectral images have focused on non-parametr...
Abstract—This paper addresses two issues related to the detection of hyperspectral anomalies. The fi...
Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply sea...
In remote sensing, hyperspectral sensors are effectively used for target detection and recognition b...