Tag: unmixing
Piece-wise convex spatial-spectral unmixing of hyperspectral imagery using possibilistic and fuzzy clustering
June 11, 2011Abstract: Imaging spectroscopy refers to methods for identifying materials in a scene using cameras that digitize light into hundreds of spectral bands. Each pixel in these images consists of vectors representing the amount of light reflected in the different spectral bands from the physical location corresponding to the pixel. Images of this type are called […]
Read more: Piece-wise convex spatial-spectral unmixing of hyperspectral imagery using possibilistic and fuzzy clustering »Sub-pixel target spectra estimation and detection using functions of multiple instances
June 11, 2011Abstract: The Functions of Multiple Instances (FUMI) method for learning target pattern and non-target patterns is introduced and extended. The FUMI method differs significantly from traditional supervised learning algorithms because only functions of target patterns are available. Moreover, these functions are likely to involve other non-target patterns. In this paper, data points which are convex […]
Read more: Sub-pixel target spectra estimation and detection using functions of multiple instances »Multiclass subpixel target detection using functions of multiple instances
May 11, 2011Abstract: The Multi-class Convex-FUMI (Multi-class C-FUMI) method is developed and described. The method is capable of learning prototypes for multiple target classes from hyperspectral imagery. Multi-class C-FUMI is a non-traditional supervised learning method based on the Functions of Multiple Instances (FUMI) concept. The FUMI concept differs significantly from traditional supervised by the assumption that only […]
Read more: Multiclass subpixel target detection using functions of multiple instances »Rebuilding the injured brain: use of MRS in clinical regenerative medicine
March 11, 2011Abstract: Hypoxic-Ischemic Encephalopathy (HIE) is the brain manifestation of systemic asphyxia that occurs in 20 out of 1000 births. HIE triggers an immediate neuronal and glial injury leading to necrosis secondary to cellular edema and lysis. Because of this destructive neuronal injury, up to 25% of neonates exhibit severe permanent neuropsychological handicaps in the form […]
Read more: Rebuilding the injured brain: use of MRS in clinical regenerative medicine »Pattern recognition using functions of multiple instances
August 10, 2010Abstract: The Functions of Multiple Instances (FUMI) method for learning a target prototype from data points that are functions of target and non-target prototypes is introduced. In this paper, a specific case is considered where, given data points which are convex combinations of a target prototype and several non-target prototypes, the Convex-FUMI (C-FUMI) method learns […]
Read more: Pattern recognition using functions of multiple instances »An investigation of likelihoods and priors for bayesian endmember estimation
July 11, 2010Abstract: A Gibbs sampler for piece-wise convex hyperspectral unmixing and endmember detection is presented. The standard linear mixing model used for hyperspectral unmixing assumes that hyperspectral data reside in a single convex region. However, hyperspectral data is often non-convex. Furthermore, in standard unmixing methods, endmembers are generally represented as a single point in the high […]
Read more: An investigation of likelihoods and priors for bayesian endmember estimation »Robust endmember detection using L1 norm factorization
July 10, 2010Abstract: The results from L1-Endmembers display the algorithm’s stability and accuracy with increasing levels of noise. The algorithm was extremely stable in the number of endmembers when compared to the SPICE algorithm and the Virtual Dimensionality methods for estimating the number of endmembers. Furthermore, the results shown for this algorithm were generated with the same […]
Read more: Robust endmember detection using L1 norm factorization »Multiple model endmember detection based on spectral and spatial information
June 11, 2010Abstract: We introduce a new spectral mixture analysis approach. Unlike most available approaches that only use the spectral information, this approach uses the spectral and spatial information available in the hyperspectral data. Moreover, it does not assume a global convex geometry model that encompasses all the data but rather multiple local convex models. Both the […]
Read more: Multiple model endmember detection based on spectral and spatial information »A comparison of deterministic and probabilistic approaches to endmember representation
June 11, 2010Abstract: The piece-wise convex multiple model endmember detection algorithm (P-COMMEND) and the Piece-wise Convex End-member detection (PCE) algorithm autonomously estimate many sets of endmembers to represent a hyperspectral image. A piece-wise convex model with several sets of endmembers is more effective for representing non-convex hyperspectral imagery over the standard convex geometry model (or linear mixing […]
Read more: A comparison of deterministic and probabilistic approaches to endmember representation »PCE: piecewise convex endmember detection
June 10, 2010Abstract: A new hyperspectral endmember detection method that represents endmembers as distributions, autonomously partitions the input data set into several convex regions, and simultaneously determines endmember distributions (EDs) and proportion values for each convex region is presented. Spectral unmixing methods that treat endmembers as distributions or hyperspectral images as piecewise convex data sets have not […]
Read more: PCE: piecewise convex endmember detection »