Tag: metal detector
Aggregation of Choquet integrals in GPR and EMI for handheld platform-based explosive hazard detection
May 22, 2017Abstract: Substantial interest resides in identifying sensors, algorithms and fusion theories to detect buried explosive hazards. This is a significant research effort because it impacts the safety and lives of civilians and soldiers alike. Herein, we explore the fusion of different algorithms within and across ground penetrating radar (GPR) and electromagnetic induction (EMI) sensors on […]
Read more: Aggregation of Choquet integrals in GPR and EMI for handheld platform-based explosive hazard detection »LBP Features for Hand-Held Ground Penetrating Radar
April 24, 2017Abstract: Ground penetrating radar (GPR) has the ability to detect buried targets with little or no metal content. Achieving superior detection performance with a hand-held GPR can be very challenging due to the quality of the data, inconsistency of target signatures, variety of target types, and effects of a human operator. In this paper, we […]
Read more: LBP Features for Hand-Held Ground Penetrating Radar »Fourier Features for Explosive Hazard Detection using a Wideband Electromagnetic Induction Sensor
April 14, 2017Abstract: Sensors which use electromagnetic induction (EMI) to excite a response in conducting bodies have been investigated for the purpose of detecting buried explosives. In particular, wide band EMI sensors which use a relatively low number of operating frequencies have been used to discriminate between types of objects, and to detect objects with very low […]
Read more: Fourier Features for Explosive Hazard Detection using a Wideband Electromagnetic Induction Sensor »Binary Fuzzy Measures and Choquet Integration for Multi-Source Fusion
March 18, 2017Abstract: Countless challenges in engineering require the intelligent combining (aka fusion) of data or information from multiple sources. The Choquet integral (ChI), a parametric aggregation function, is a well-known tool for multisource fusion, where source refers to sensors, humans and/or algorithms. In particular, a selling point of the ChI is its ability to model and […]
Read more: Binary Fuzzy Measures and Choquet Integration for Multi-Source Fusion »Genetic Programming Based Choquet Integral for Multi-Source Fusion
March 15, 2017Abstract: While the Choquet integral (ChI) is a powerful parametric nonlinear aggregation function, it has limited scope and is not a universal function generator. Herein, we focus on a class of problems that are outside the scope of a single ChI. Namely, we are interested in tasks where different subsets of inputs require different ChIs. […]
Read more: Genetic Programming Based Choquet Integral for Multi-Source Fusion »Adaptive coherence estimator (ACE) for explosive hazard detection using wideband electromagnetic induction (WEMI)
April 11, 2016Abstract: The adaptive coherence estimator (ACE) estimates the squared cosine of the angle between a known target vector and a sample vector in a whitened coordinate space. The space is whitened according to an estimation of the background statistics, which directly effects the performance of the statistic as a target detector. In this paper, the […]
Read more: Adaptive coherence estimator (ACE) for explosive hazard detection using wideband electromagnetic induction (WEMI) »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 »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 »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 »Landmine classification using possibilistic K-nearest neighbors with wideband electromagnetic induction data
June 11, 2013Abstract: A possibilistic K-Nearest Neighbors classifier is presented to classify mine and non-mine objects using data collected from a wideband electromagnetic induction (WEMI) sensor. The proposed classifier is motivated by the observation that buried objects often have consistent signatures depending on their metal content, size, shape, and depth. Given a joint orthogonal matching pursuits (JOMP) […]
Read more: Landmine classification using possibilistic K-nearest neighbors with wideband electromagnetic induction data »