学位论文详细信息
A generic framework for context-dependent fusion with application to landmine detection.
Information fusion;Clustering;Local fusion;Data mining;Landmine detection;Pattern recognition
Ahmed Chamseddine Ben Abdallah
University:University of Louisville
Department:Computer Engineering and Computer Science
关键词: Information fusion;    Clustering;    Local fusion;    Data mining;    Landmine detection;    Pattern recognition;   
Others  :  https://ir.library.louisville.edu/cgi/viewcontent.cgi?article=1098&context=etd
美国|英语
来源: The Universite of Louisville's Institutional Repository
PDF
【 摘 要 】

For complex detection and classification problems, involving data with large intra-class variations and noisy inputs, no single source of information can provide a satisfactory solution. As a result, combination of multiple classifiers is playing an increasing role in solving these complex pattern recognition problems, and has proven to be a viable alternative to using a single classifier. Over the past few years, a variety of schemes have been proposed for combining multiple classifiers. Most of these were global as they assign a degree of worthiness to each classifier, that is averaged over the entire training data. This may not be the optimal way to combine the different experts since the behavior of each one may not be uniform over the different regions of the feature space. To overcome this issue, few local methods have been proposed in the last few years. Local fusion methods aim to adapt the classifiers' worthiness to different regions of the feature space. First, they partition the input samples. Then, they identify the best classifier for each partition and designate it as the expert for that partition. Unfortunately, current local methods are either computationally expensive and/or perform these two tasks independently of each other. However, feature space partition and algorithm selection are not independent and their optimization should be simultaneous. In this dissertation, we introduce a new local fusion approach, called Context Extraction for Local Fusion (CELF). CELF was designed to adapt the fusion to different regions of the feature space. It takes advantage of the strength of the different experts and overcome their limitations. First, we describe the baseline CELF algorithm. We formulate a novel objective function that combines context identification and multi-algorithm fusion criteria into a joint objective function. The context identification component thrives to partition the input feature space into different clusters (called contexts), while the fusion component thrives to learn the optimal fusion parameters within each cluster. Second, we propose several variations of CELF to deal with different applications scenario. In particular, we propose an extension that includes a feature discrimination component (CELF-FD). This version is advantageous when dealing with high dimensional feature spaces and/or when the number of features extracted by the individual algorithms varies significantly. CELF-CA is another extension of CELF that adds a regularization term to the objective function to introduce competition among the clusters and to find the optimal number of clusters in an unsupervised way. CELF-CA starts

【 预 览 】
附件列表
Files Size Format View
A generic framework for context-dependent fusion with application to landmine detection. 26990KB PDF download
  文献评价指标  
  下载次数:2次 浏览次数:22次