Offline learning of prototypical negatives for efficient online Exemplar SVM

Masato Takami, Peter Bell, B. Ommer
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引用次数: 2

Abstract

Online searches in big image databases require sufficient results in feasible time. Digitization campaigns have simplified the access to a huge number of images in the field of art history, which can be analyzed by detecting duplicates and similar objects in the dataset. A high recall is essential for the evaluation and therefore the search method has to be robust against minor changes due to smearing or aging effects of the documents. At the same time the computational time has to be short to allow a practical use of the online search. By using an Exemplar SVM based classifier [12] a high recall can be achieved, but the mining of negatives and the multiple rounds of retraining for every search makes the method too time-consuming. An even bigger problem is that by allowing arbitrary query regions, it is not possible to provide a training set, which would be necessary to create a classifier. To solve this, we created a pool of general negatives offline in advance, which can be used by any arbitrary input in the online search step and requires only one short training round without the time-consuming mining. In a second step, this classifier is improved by using positive detections in an additional training round. This results in a classifier for the online search in unlabeled datasets, which provides high recall in short calculation time respectively.
高效在线样例支持向量机的原型否定离线学习
大图像数据库的在线搜索要求在可行的时间内得到充分的结果。数字化运动简化了对艺术史领域大量图像的访问,可以通过检测数据集中的重复和相似对象来分析这些图像。高召回率对于评估是必不可少的,因此搜索方法必须对由于文件的涂抹或老化影响而产生的微小变化具有鲁棒性。同时,计算时间必须短,以允许实际使用的在线搜索。通过使用基于样例支持向量机的分类器[12],可以获得较高的召回率,但每次搜索的负面挖掘和多轮再训练使得该方法过于耗时。一个更大的问题是,通过允许任意查询区域,不可能提供创建分类器所必需的训练集。为了解决这个问题,我们提前在离线状态下创建了一个通用否定库,它可以被任何在线搜索步骤中的任意输入使用,并且只需要一个短的训练回合,而不需要耗时的挖掘。在第二步中,通过在额外的训练轮中使用阳性检测来改进该分类器。这产生了一个分类器,用于在线搜索未标记的数据集,分别在较短的计算时间内提供高召回率。
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