Tag: #Uncertain/Imprecise Labels
Multiple Instance Choquet Integral for Classifier Fusion
July 11, 2016Abstract: The Multiple Instance Choquet integral (MICI) for classifier fusion and an evolutionary algorithm for parameter estimation is presented. The Choquet integral has a long history of providing an effective framework for non-linear fusion. Previous methods to learn an appropriate measure for the Choquet integral assumed accurate and precise training labels (with low levels of […]
Read more: Multiple Instance Choquet Integral for Classifier Fusion »Buried object detection using handheld WEMI with task-driven extended functions of multiple instances
April 11, 2016Abstract: Many effective supervised discriminative dictionary learning methods have been developed in the literature. However, when training these algorithms, precise ground-truth of the training data is required to provide very accurate point-wise labels. Yet, in many applications, accurate labels are not always feasible. This is especially true in the case of buried object detection in […]
Read more: Buried object detection using handheld WEMI with task-driven extended functions of multiple instances »Instance Influence Estimation for Hyperspectral Target Signature Characterization using Extended Functions of Multiple Instances
April 11, 2016Abstract: The Extended Functions of Multiple Instances (eFUMI) algorithm is a generalization of Multiple Instance Learning (MIL). In eFUMI, only bag level (i.e. set level) labels are needed to estimate target signatures from mixed data. The training bags in eFUMI are labeled positive if any data point in a bag contains or represents any proportion […]
Read more: Instance Influence Estimation for Hyperspectral Target Signature Characterization using Extended Functions of Multiple Instances »Task Driven Extended Functions of Multiple Instances
December 11, 2015Abstract: Dictionary learning techniques have proven to be a powerful method in the pattern recognition literature. Recently supervised dictionary learning has been used to achieve very good results on a number of different data types and applications. However, these supervised dictionary learning algorithms do not perform as well when the data contains a number of […]
Read more: Task Driven Extended Functions of Multiple Instances »Functions of Multiple Instances for Learning Target Signatures
August 11, 2015Abstract: The functions of multiple instances (FUMI) approach for learning target and nontarget signatures is introduced. FUMI is a generalization of the multiple-instance learning (MIL) approach for supervised learning. FUMI differs significantly from standard MIL and supervised learning approaches because only data points which are functions of class concepts/signatures are available. In particular, this paper […]
Read more: Functions of Multiple Instances for Learning Target Signatures »Estimating Target Signatures with Diverse Density
June 11, 2015Abstract: Hyperspectral target detection algorithms rely on knowing the desired target signature in advance. However, obtaining an effective target signature can be difficult; signatures obtained from laboratory measurements or hand-spectrometers in the field may not transfer to airborne imagery effectively. One approach to dealing with this difficulty is to learn an effective target signature from […]
Read more: Estimating Target Signatures with Diverse Density »Possibilistic context identification for SAS imagery
May 11, 2015Abstract: This paper proposes a possibilistic context identification approach for synthetic aperture sonar (SAS) imagery. SAS seabed imagery can display a variety of textures that can be used to identify seabed types such as sea grass, sand ripple and hard-packed sand, etc. Target objects in SAS imagery often have varying characteristics and features due to […]
Read more: Possibilistic context identification for SAS imagery »Functions of multiple instances for sub-pixel target characterization in hyperspectral imagery
May 11, 2015Abstract: In this paper, the Multi-target Extended Function of Multiple Instances (Multi-target eFUMI) method is developed and described. The method is capable of learning multiple target spectral signatures from weakly- and inaccurately-labeled hyperspectral imagery. Multi-target eFUMI is a generalization of the Function of Multiple Instances approach (FUMI). The FUMI approach differs significantly from standard Multiple […]
Read more: Functions of multiple instances for sub-pixel target characterization in hyperspectral imagery »Multiple instance dictionary learning for subsurface object detection using handheld EMI
May 11, 2015Abstract: A dictionary learning approach for subsurface object detection using handheld electromagnetic induction (EMI) data is presented. A large number of unsupervised and supervised dictionary learning methods have been developed in the literature. However, the majority of these methods require data point-specific labels during training. In the application to subsurface object detection, often the specific […]
Read more: Multiple instance dictionary learning for subsurface object detection using handheld EMI »Extended functions of multiple instances for target characterization
June 11, 2014Abstract: An extension of the Function of Multiple Instances (FUMI) algorithm for target characterization is presented. FUMI is a generalization of Multiple Instance Learning (MIL). However, FUMI differs significantly from standard MIL and supervised learning approaches because only data points which are functions of class concepts are available. For applicability to hyperspectral data, this paper […]
Read more: Extended functions of multiple instances for target characterization »