Explosive hazard detection with feature and decision level fusion, multiple kernel learning, and fuzzy integrals

Document Type

Conference Proceeding

Publication Date

2-9-2017

Abstract

© 2016 IEEE. Kernel methods for classification is a well-studied area in which data are implicitly mapped from a lower-dimensional space to a higher-dimensional space to improve classification accuracy. However, for most kernel methods, one must still choose a kernel to use for the problem. Since there is, in general, no way of knowing which kernel is the best, multiple kernel learning (MKL) is a technique used to learn the aggregation of a set of valid kernels into a single (ideally) superior kernel. The aggregation can be done using weighted sums of the pre-computed kernels, but determining the summation weights is not a trivial task. A popular and successful approach to this problem is MKL-group lasso (MKLGL), where the weights and classification surface are simultaneously solved by iteratively optimizing a min-max optimization until convergence. In this work, we compare the results of two previously proposed MKL algorithms to MKLGL in the context of explosive hazard detection using ground penetrating radar (GPR) data. The first MKL algorithm we employ is an ℓp-normed genetic algorithm MKL (GAMKLp), which uses a genetic algorithm to learn the weights of a set of pre-computed kernel matrices for use with MKL classification. A second algorithm, called decision-level fuzzy integral MKL (DeFIMKL), is also employed, where a fuzzy measure with respect to the fuzzy Choquet integral is learned via quadratic programming, and the decision value - viz., the class label - is computed using the fuzzy Choquet integral aggregation. Experiments using government furnished GPR data show that these MKL algorithms can outperform MKLGL when applied to support vector machine (SVM)-based classification.

Publication Title

2016 IEEE Symposium Series on Computational Intelligence, SSCI 2016

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