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Bag-of-Visual Words and Error-Correcting Output Codes for Multilabel Classification of Remote Sensing Images

机译:遥感影像多标签分类的视觉袋词和纠错输出代码

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This paper presents a novel framework for multilabel classification of remote sensing images using Error-Correcting Output Codes (ECOC). Starting with a set of primary class labels, the proposed framework consists in transforming the multiclass problem into binary learning subproblems. The distributed output representations of these binary learners are then transformed into primary class labels. In order to obtain robustness with respect to scale, rotation and image content, a Bag-of-Visual Words (BOVW) model based on Scale Invariant Feature Transform (SIFT) descriptors is used for feature extraction. BOVW assumes an a-priori unsupervised learning of a dictionary of visual words over the training set. Experiments are performed on GeoEye-1 images and the results show the effectiveness of the proposed approach towards multilabel classification, if compared to other methods.
机译:本文提出了一种使用纠错输出代码(ECOC)对遥感影像进行多标签分类的新颖框架。从一组主要的类标签开始,提出的框架包括将多类问题转换为二元学习子问题。然后将这些二进制学习器的分布式输出表示形式转换为初级类标签。为了获得关于缩放,旋转和图像内容的鲁棒性,基于缩放不变特征变换(SIFT)描述符的视觉袋(BOVW)模型用于特征提取。 BOVW假定在训练集上对视觉单词词典进行了先验无监督的学习。在GeoEye-1图像上进行了实验,结果表明,与其他方法相比,该方法对多标签分类的有效性。

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