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Compression based Class-Specific Target Recognition using SAR Images

机译:使用SAR图像基于压缩的类特定的目标识别

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Recognizing complex targets with unknown pose and scale remains an unsolved problem even after half a century of research in the field of synthetic aperture radar (SAR) based automatic target recognition (ATR). Feature extraction and the high-dimension of the feature vectors are two major issues in the field of ATR. Class-specific classification algorithms address the dimensionality issue to some extent, but feature extraction is a problem with such classifiers. Compression can be used to extract the features of synthetic aperture radar image for classification, but has not been exploited much by the ATR community. Using compression for feature extraction not only avoids the problems associated with high-dimensional feature space but also minimizes the storage and computational overheads. However, the disadvantage of using compression based ATR is that classification performance suffers. The proposed technique, compression based class-specific ATR algorithm, is a modular classifier which uses class-specific compression for classification to circumvent the dimensionality problem and at the same time achieve optimal classification results.
机译:识别具有未知姿势和规模的复杂目标仍然是一个未解决的问题,即使在合成孔径雷达(SAR)的自动目标识别(ATR)领域的研究中发生了一半。特征提取和特征向量的高维度是ATR领域的两个主要问题。类特定的分类算法在某种程度上解决了维度问题,但功能提取是此类分类器的问题。压缩可用于提取合成孔径雷达图像的特征进行分类,但尚未被ATR社区利用多大。使用压缩功能提取不仅避免了与高维特征空间相关的问题,而且最小化了存储和计算开销。然而,使用基于压缩的ATR的缺点是分类性能受到影响。所提出的技术,基于压缩的类特定于ATR算法,是模块化分类器,它使用特定的类压缩来分类,以绕过维度问题,同时实现最佳分类结果。

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