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Automatic Target Recognition in Infrared Imagery Using Dense HOG Features and Relevance Grouping of Vocabulary

机译:使用密集HOG特征和词汇相关性分组的红外图像自动目标识别

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We study automatic target recognition (ATR) in infrared (IR) imagery by applying two recent computer vision techniques, Histogram of Oriented Gradients (HOG) and Bag-of-Words (BoW). We propose the idea of dense HOG features which are extracted from a set of high-overlapped local patches in a small IR chip and we apply a vocabulary tree that is learned from a set of training images to support efficient and scalable BoW-based ATR. We develop a relevance grouping of vocabulary (RGV) technique to improve the ATR performance by additional voting from grouped visual words. Different from traditional word grouping techniques, RGV groups visual words of the same dominant class to enhance the voting confidence in BoW-based classification. The proposed ATR algorithm is evaluated against recent sparse representation-based classification (SRC) approaches that reportedly outperform traditional methods. Experimental results on the COMANCHE IR dataset demonstrate the advantages of the newly proposed algorithm (BoW-RGV) over the recent SRC approaches.
机译:我们通过应用两种最新的计算机视觉技术(定向梯度直方图(HOG)和单词袋(BoW))研究红外(IR)图像中的自动目标识别(ATR)。我们提出了密集HOG特征的想法,该特征是从小型IR芯片中的一组高度重叠的局部补丁中提取的,并且应用了从一组训练图像中学习的词汇树,以支持有效且可扩展的基于BoW的ATR。我们开发了词汇的相关性分组(RGV)技术,以通过对可视化词进行分组投票来提高ATR的效果。与传统的单词分组技术不同,RGV将相同显性类别的视觉单词进行分组,以增强对基于BoW的分类的投票信心。针对最近据报道优于传统方法的基于稀疏表示的分类(SRC)方法,对提出的ATR算法进行了评估。在COMANCHE IR数据集上的实验结果证明了新提出的算法(BoW-RGV)优于最近的SRC方法的优势。

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