研究目的
To develop an alternate HMM approach using a multiple-instance learning (MIL) framework for GPR-based landmine detection that considers an unordered set of HMM sequences at a particular alarm location, improving upon the standard EM-HMM by addressing the uncertainty in object depths.
研究成果
The proposed MiHMM approaches extend a standard HMM approach to an HMM in a MIL framework that inherently incorporates the ambiguity in the individual sample labels. Results indicate that the proposed approach performs better than the standard EM-HMM technique by modeling the label uncertainty of the MIL nature of the data.
研究不足
The standard EM-HMM approach is not able to learn an accurate H1 model and instead acts mostly as an anomaly detector. However, in data sets with a large number of H1 instances per positive bag, the standard EM-HMM may perform comparably to the MiHMMs.
1:Experimental Design and Method Selection:
The study integrates HMMs into a MIL framework and develops a new approach called the multiple-instance hidden Markov model (MiHMM). The model parameters are inferred using variational Bayes.
2:Sample Selection and Data Sources:
The approach is evaluated on two synthetic data sets and two landmine data sets. The synthetic data sets are generated based on two specific component densities: multinomial (MN) and multivariate normal (MVN).
3:List of Experimental Equipment and Materials:
Ground penetrating radar (GPR) data is used for landmine detection.
4:Experimental Procedures and Operational Workflow:
The MiHMM approach is compared against the standard EM-HMM and the NPBMIL approach using 10-fold cross-validation.
5:Data Analysis Methods:
The performance is analyzed using receiver operating characteristics (ROC) performance metrics.
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