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Weakly Supervised Object Localization with Latent Category Learning

机译:与潜在类别学习的弱势对象本地化

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Localizing objects in cluttered backgrounds is a challenging task in weakly supervised localization. Due to large object variations in cluttered images, objects have large ambiguity with backgrounds. However, backgrounds contain useful latent information, e.g., the sky for aeroplanes. If we can learn this latent information, object-background ambiguity can be reduced to suppress the background. In this paper, we propose the latent category learning (LCL), which is an unsupervised learning problem given only image-level class labels. Firstly, inspired by the latent semantic discovery, we use the typical probabilistic Latent Semantic Analysis (pLSA) to learn the latent categories, which can represent objects, object parts or backgrounds. Secondly, to determine which category contains the target object, we propose a category selection method evaluating each category's discrimination. We evaluate the method on the PASCAL VOC 2007 database and ILSVRC 2013 detection challenge. On VOC 2007, the proposed method yields the annotation accuracy of 48%, which outperforms previous results by 10%. More importantly, we achieve the detection average precision of 30.9%, which improves previous results by 8% and can be competitive with the supervised deformable part model (DPM) 5.0 baseline 33.7%. On ILSVRC 2013 detection, the method yields the precision of 6.0%, which is also competitive with the DPM 5.0.
机译:本地化对象在混乱的背景中是一个挑战的任务,在弱势监督的本地中。由于杂乱图像的大量对象变化,对象与背景具有大的歧义。然而,背景包含有用的潜在信息,例如,飞机的天空。如果我们能够学习这种潜在信息,可以减少对象背景模糊,以抑制背景。在本文中,我们提出了潜在的类别学习(LCL),这是一个仅为图像级类标签给出的无人监督的学习问题。首先,灵感来自潜在语义发现,我们使用典型的概率潜伏语义分析(PLSA)来学习潜在类别,可以代表物体,对象零件或背景。其次,要确定哪个类别包含目标对象,我们提出了一种评估每个类别的歧视的类别选择方法。我们评估Pascal VOC 2007数据库和ILSVRC 2013检测挑战的方法。在VOC 2007上,所提出的方法产生48%的注释精度,这优于先前的结果10%。更重要的是,我们达到了30.9%的检测平均精度,从而提高了8%的结果,可以竞争监督的可变形部件模型(DPM)5.0基线33.7%。在ILSVRC 2013检测中,该方法产生6.0%的精度,这也与DPM 5.0竞争。

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