Stacked spatial-pyramid kernel: An object-class recognition method to combine scores from random trees

N. Larios, Junyuan Lin, Mengzi Zhang, D. Lytle, A. Moldenke, L. Shapiro, Thomas G. Dietterich
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引用次数: 27

Abstract

The combination of local features, complementary feature types, and relative position information has been successfully applied to many object-class recognition tasks. Stacking is a common classification approach that combines the results from multiple classifiers, having the added benefit of allowing each classifier to handle a different feature space. However, the standard stacking method by its own nature discards any spatial information contained in the features, because only the combination of raw classification scores are input to the final classifier. The object-class recognition method proposed in this paper combines different feature types in a new stacking framework that efficiently quantizes input data and boosts classification accuracy, while allowing the use of spatial information. This classification method is applied to the task of automated insect-species identification for biomonitoring purposes. The test data set for this work contains 4722 images with 29 insect species, belonging to the three most common orders used to measure stream water quality, several of which are closely related and very difficult to distinguish. The specimens are in different 3D positions, different orientations, and different developmental and degradation stages with wide intra-class variation. On this very challenging data set, our new algorithm outperforms other classifiers, showing the benefits of using spatial information in the stacking framework with multiple dissimilar feature types.
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堆叠空间金字塔核:一种结合随机树得分的对象类识别方法
局部特征、互补特征类型和相对位置信息的组合已成功应用于许多目标类识别任务。堆叠是一种常见的分类方法,它将来自多个分类器的结果组合在一起,还具有允许每个分类器处理不同特征空间的额外好处。然而,标准的叠加方法由于其本身的性质,丢弃了特征中包含的任何空间信息,因为只有原始分类分数的组合被输入到最终的分类器中。本文提出的目标类识别方法将不同的特征类型结合在一个新的叠加框架中,在允许使用空间信息的同时,有效地量化了输入数据,提高了分类精度。这种分类方法适用于生物监测目的的昆虫物种自动鉴定任务。这项工作的测试数据集包含4722张图像,包含29种昆虫,属于用于测量溪流水质的三个最常见的目,其中一些是密切相关的,很难区分。不同的三维位置、不同的方位、不同的发育和退化阶段,类内差异较大。在这个非常具有挑战性的数据集上,我们的新算法优于其他分类器,显示了在具有多个不同特征类型的堆叠框架中使用空间信息的好处。
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