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Indexing quantized ensembles of exemplar-SVMs with rejecting taxonomies

机译:用拒绝分类法索引样本支持向量机的量化合奏

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Ensembles of Exemplar-SVMs have been introduced as a framework for Object Detection but have rapidly found a large interest in a wide variety of computer vision applications such as mid-level feature learning, tracking and segmentation. What makes this technique so attractive is the possibility of associating to instance specific classifiers one or more semantic labels that can be transferred at test time. To guarantee its effectiveness though, a large collection of classifiers has to be used. This directly translates in a high computational footprint, which could make the evaluation step prohibitive. To overcome this issue we organize Exemplar-SVMs into a taxonomy, exploiting the joint distribution of Exemplar scores. This permits to index the classifiers at a logarithmic cost, while maintaining the label transfer capabilities of the method almost unaffected. We propose different formulations of the taxonomy in order to maximize the speed gain. In particular we propose a highly efficient Vector Quantized Rejecting Taxonomy to discard unpromising image regions during evaluation, performing computations in a quantized domain. This allow us to obtain ramarkable speed gains, with an improvement up to more than two orders of magnitude. To verify the robustness of our indexing data structure with reference to a standard Exemplar-SVM ensemble, we experiment with the Pascal VOC 2007 benchmark on the Object Detection competition and on a simple segmentation task.
机译:Exemplar-SVM的集成已作为对象检测的框架引入,但很快就引起了对各种计算机视觉应用程序的广泛兴趣,例如中级特征学习,跟踪和分段。使该技术如此具有吸引力的原因是,可能将一个或多个可以在测试时传送的语义标签与实例特定的分类器相关联。为了保证其有效性,必须使用大量的分类器。这直接转化为高计算量,这可能会使评估步骤望而却步。为了克服这个问题,我们利用示例性分数的联合分布将示例性SVM组织到分类法中。这允许对数索引索引器,同时保持该方法的标签传递功能几乎不受影响。为了最大程度地提高速度,我们提出了不同的分类法表述。特别是,我们提出了一种高效的矢量量化拒绝分类法,以在评估期间丢弃没有希望的图像区域,并在量化域中执行计算。这使我们获得了可观的速度提升,并提高了两个数量级以上。为了参考标准的Exemplar-SVM集成验证索引数据结构的鲁棒性,我们在对象检测竞赛和简单分段任务上使用Pascal VOC 2007基准进行了试验。

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