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Improved Class-Specific Codebook with Two-Step Classification for Scene-Level Classification of High Resolution Remote Sensing Images

机译:改进的具有两步分类的特定于类别的密码本,用于高分辨率遥感影像的场景级分类

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With the rapid advances in sensors of remote sensing satellites, a large number of highresolution images (HRIs) can be accessed every day. Land use classification using high-resolution images has become increasingly important as it can help to overcome the problems of haphazard, deteriorating environmental quality, loss of prime agricultural lands, and destruction of important wetlands, and so on. Recently, local feature with bag-of-words (BOW) representation has been successfully applied to land-use scene classification with HRIs. However, the BOW representation ignores information from scene labels, which is critical for scene-level land-use classification. Several algorithms have incorporated information from scene labels into BOW by calculating a class-specific codebook from the universal codebook and coding a testing image with a number of histograms. Those methods for mapping the BOW feature to some inaccurate class-specific codebooks may increase the classification error. To effectively solve this problem, we propose an improved class-specific codebook using kernel collaborative representation based classification (KCRC) combined with SPM approach and SVM classifier to classify the testing image in two steps. This model is robust for categories with similar backgrounds. On the standard Land use and Land Cover image dataset, the improved class-specific codebook achieves an average classification accuracy of 93% and demonstrates superiority over other state-of-the-art scene-level classification methods.
机译:随着遥感卫星传感器的迅速发展,每天可以获取大量的高分辨率图像(HRI)。使用高分辨率图像进行土地利用分类变得越来越重要,因为它可以帮助克服偶然性,环境质量恶化,主要农业用地流失以及重要湿地遭到破坏等问题。最近,带有词袋(BOW)表示的局部特征已成功应用于具有HRI的土地使用场景分类。但是,BOW表示会忽略场景标签中的信息,这对于场景级土地使用分类至关重要。通过从通用密码簿计算特定类别的密码簿并用多个直方图对测试图像进​​行编码,几种算法已将场景标签中的信息合并到BOW中。将BOW功能映射到某些不准确的类特定码本的方法可能会增加分类错误。为了有效解决此问题,我们提出了一种改进的特定于类别的代码本,该代码本结合了基于内核协作表示的分类(KCRC),SPM方法和SVM分类器,可分两步对测试图像进​​行分类。对于具有相似背景的类别,此模型是可靠的。在标准的土地利用和土地覆盖图像数据集上,经过改进的特定于类别的密码本可实现93%的平均分类准确率,并证明优于其他最新的场景级分类方法。

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