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Learning Discriminative Mid-Level Patches for Fast Scene Classification

机译:学习区分性的中级补丁以进行快速场景分类

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Discriminative mid-level patch based approaches have become increasingly popular in the past few years. The reason of their popularity can be attributed to the fact that discriminative patches have the ability to accumulate low level features to form high level descriptors for objects and images. Unfortunately, state-of-the-art algorithms to discover those patches heavily rely on SVM related techniques, which consume a lot of computation resources in training. To overcome this shortage and apply discriminative part based techniques to more complicated computer vision problems with larger datasets, we proposed a fast, simple yet powerful way to mine part classifiers automatically with only class labels provided. Our experiments showed that our method, the Fast Exemplar Clustering, is 20 times faster than the commonly used SVM based methods while at the same time attaining competitive accuracy on scene classification.
机译:在过去几年中,基于区别性的中级补丁的方法变得越来越流行。它们之所以流行的原因可以归因于这样的事实,即判别性补丁具有累积低级特征以形成对象和图像的高级描述符的能力。不幸的是,发现这些补丁的最新算法严重依赖于SVM相关技术,这在训练中会消耗大量计算资源。为了克服这种不足并将基于判别式零件的技术应用于具有较大数据集的更复杂的计算机视觉问题,我们提出了一种快速,简单但功能强大的方法,仅提供类别标签即可自动挖掘零件分类器。我们的实验表明,我们的方法(快速示例聚类)比常用的基于SVM的方法快20倍,同时在场景分类上获得了竞争性的准确性。

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