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On Expert-Defined Versus Learned Hierarchies for Image Classification

机译:关于图像分类的专家定义与学习层次结构

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For classification task involving a large number of classes, a decrease in recognition accuracy is observed for visually similar classes. We believe that forcing the model to learn appropriate features separately for each set, of similar classes could improve classification performance. To justify our idea, we tried to improve classification performance by employing class hierarchy, which reflects visual similarities in data. More specifically, we used and compared two kinds of hierarchies to enhance classification performance of the model: (ⅰ) a hierarchy defined by experts (H-E), and (ⅱ) a hierarchy created from performance results of a flat classifier and using DBScan clustering method (H-C). Moreover, we created a classification model that efficiently utilizes these hierarchies to learn appropriate features at different levels of the hierarchy. We evaluated the performance of the model on CIFAR-100 benchmark. Our results demonstrate that the hierarchical classification under H-C outperforms both H-E and the flat classifier.
机译:对于涉及大量类别的分类任务,对于视觉上相似的类别,观察到识别精度下降。我们认为,强迫模型为相似类的每组分别学习适当的功能可以改善分类性能。为了证明我们的想法的正确性,我们尝试通过使用类层次结构来提高分类性能,该类层次结构反映了数据中的视觉相似性。更具体地说,我们使用和比较了两种层次结构来增强模型的分类性能:(ⅰ)专家(HE)定义的层次结构,以及(ⅱ)根据平面分类器的性能结果并使用DBScan聚类方法创建的层次结构(HC)。此外,我们创建了一个分类模型,可以有效地利用这些层次结构来学习层次结构不同级别上的适当功能。我们根据CIFAR-100基准评估了该模型的性能。我们的结果表明,在H-C下的分层分类优于H-E和平面分类器。

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