Anomaly detection from hyperspectral data needs computationally efficient methods to process the data when the data gathering platform is a drone or a cube satellite. In this study, we introduce a minimal learning machine for hyperspectral anomaly detection. Minimal learning machine is a novel distance-based classification algorithm, which is now modified to detect anomalies. Besides being computationally efficient, minimal learning machine is also easy to implement. Based on the results, we show that minimal learning machine is efficient in detecting global anomalies from the hyperspectral data with low false alarm rate.peerReviewe
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
In this manuscript we investigate the efficient implementation of anomaly detection strategies in hy...
Automatic anomaly detection has previously been implemented on hyperspectral images by use of differ...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
A hyperspectral (HS) image is typically a stack of frames, where each frame represents the intensity...
<p> In hyperspectral images, anomaly detection without prior information develops rapidly. Most of ...
In this paper, a novel hyperspectral anomaly detector based on low-rank representation (LRR) and lea...
Hyperspectral anomaly detection is a research hot spot in the field of remote sensing. It can distin...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
<p> Hyperspectral anomaly detection is playing an important role in remote sensing field. Most conv...
Hyperspectral anomaly detection plays an important role in the field of remote sensing. It provides ...
In this paper, a tutorial overview on anomaly detection for hyperspectral electro-optical systems i...
The background dictionary used in the hyperspectral images anomaly detection based on low-rank and s...
This paper proposes a randomized subspace learning based anomaly detector (RSLAD) for hyperspectral ...
A major drawback of most of the existing hyperspectral anomaly detection methods is the lack of an e...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
In this manuscript we investigate the efficient implementation of anomaly detection strategies in hy...
Automatic anomaly detection has previously been implemented on hyperspectral images by use of differ...
Hyperspectral imaging, with its applications, offers promising tools for remote sensing and Earth ob...
A hyperspectral (HS) image is typically a stack of frames, where each frame represents the intensity...
<p> In hyperspectral images, anomaly detection without prior information develops rapidly. Most of ...
In this paper, a novel hyperspectral anomaly detector based on low-rank representation (LRR) and lea...
Hyperspectral anomaly detection is a research hot spot in the field of remote sensing. It can distin...
Anomaly detection is an active research topic in hyperspectral remote sensing and has been applied i...
<p> Hyperspectral anomaly detection is playing an important role in remote sensing field. Most conv...
Hyperspectral anomaly detection plays an important role in the field of remote sensing. It provides ...
In this paper, a tutorial overview on anomaly detection for hyperspectral electro-optical systems i...
The background dictionary used in the hyperspectral images anomaly detection based on low-rank and s...
This paper proposes a randomized subspace learning based anomaly detector (RSLAD) for hyperspectral ...
A major drawback of most of the existing hyperspectral anomaly detection methods is the lack of an e...
Using hyperspectral (HS) technology, this paper introduces an autonomous scene anomaly detection app...
In this manuscript we investigate the efficient implementation of anomaly detection strategies in hy...
Automatic anomaly detection has previously been implemented on hyperspectral images by use of differ...