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Gabor features for detection and identification.

机译:Gabor用于检测和识别的功能。

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摘要

Gabor features are considered for the problems of detection and identification of multiple distorted objects in high clutter scenes. Detection requires the location of all possible regions of interest in an input scene, while identification requires the classification of the detected regions of interest into the various object classes. Gabor filters are used in a correlator to extract features that are useful for solving both stages of the problem. Detection and identification are different problems that require different information, therefore different Gabor filters are used in each stage. One of the main issues addressed is the selection of the proper Gabor filter parameters for each task. The Gabor filter function is complex-valued in the image domain. We introduce guidelines for the selection of an initial set of Gabor parameters that enable the real part of the Gabor filter (RGF) to perform blob detection and the imaginary part (IGF) to perform edge detection. A neural network training algorithm is developed which iteratively refines the initial Gabor filter parameter values and selects the proper linear combination weights for a composite macro Gabor filter (MGF). We combine the outputs from the MGF and an IGF for detection. We show that fusion of these two Gabor filter outputs reduces the detection of false alarms.; For the identification problem, we calculate Gabor feature vectors which describe the local spatial characteristics of each object. This feature space is produced by correlating the input with a new MGF and sampling the output correlation at several internal locations. A neural network algorithm is developed which optimizes the Fisher ratio for these feature vectors. It iteratively refines the initial Gabor parameter values and combination weights used in the MGF. This produces an MGF which extracts improved features for identification.
机译:对于高杂波场景中的多个失真对象的检测和识别问题,考虑使用Gabor特征。检测需要在输入场景中定位所有可能的兴趣区域,而识别则需要将检测到的兴趣区域分类为各种对象类别。 Gabor滤波器用于相关器中,以提取可用于解决问题两个阶段的特征。检测和识别是需要不同信息的不同问题,因此在每个阶段都使用不同的Gabor滤波器。解决的主要问题之一是为每个任务选择适当的Gabor滤波器参数。 Gabor过滤器函数在图像域中是复数值。我们介绍了用于选择一组初始Gabor参数的准则,这些参数使Gabor滤波器的实部(RGF)能够执行斑点检测,而虚部(IGF)能够进行边缘检测。开发了一种神经网络训练算法,该算法可以迭代地优化初始Gabor滤波器参数值,并为复合宏Gabor滤波器(MGF)选择适当的线性组合权重。我们将MGF和IGF的输出结合起来进行检测。我们表明,这两个Gabor滤波器输出的融合减少了错误警报的检测。对于识别问题,我们计算Gabor特征向量,该向量描述每个对象的局部空间特征。通过将输入与新的MGF相关联并在几个内部位置对输出相关性进行采样来产生此特征空间。开发了一种神经网络算法,可以针对这些特征向量优化费舍尔比率。迭代地优化MGF中使用的初始Gabor参数值和组合权重。这样就产生了MGF,该MGF提取了用于识别的改进功能。

著录项

  • 作者

    Smokelin, John-Scott.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 1993
  • 页码 177 p.
  • 总页数 177
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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