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Discriminatively Trained And-Or Tree Models for Object Detection

机译:区分训练的“或”树模型用于对象检测

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This paper presents a method of learning reconfigurable And-Or Tree (AOT) models discriminatively from weakly annotated data for object detection. To explore the appearance and geometry space of latent structures effectively, we first quantize the image lattice using an over complete set of shape primitives, and then organize them into a directed a cyclic And-Or Graph (AOG) by exploiting their compositional relations. We allow overlaps between child nodes when combining them into a parent node, which is equivalent to introducing an appearance Or-node implicitly for the overlapped portion. The learning of an AOT model consists of three components: (i) Unsupervised sub-category learning (i.e., branches of an object Or-node) with the latent structures in AOG being integrated out. (ii) Weakly supervised part configuration learning (i.e., seeking the globally optimal parse trees in AOG for each sub-category). To search the globally optimal parse tree in AOG efficiently, we propose a dynamic programming (DP) algorithm. (iii) Joint appearance and structural parameters training under latent structural SVM framework. In experiments, our method is tested on PASCAL VOC 2007 and 2010 detection benchmarks of 20 object classes and outperforms comparable state-of-the-art methods.
机译:本文提出了一种从弱注释数据中有区别地学习可重构的“或或树”(AOT)模型以进行对象检测的方法。为了有效地探索潜在结构的外观和几何空间,我们首先使用一组完整的形状基元对图像晶格进行量化,然后通过利用它们的组成关系将它们组织为有向的循环“与-或-图”(AOG)。当将子节点组合成父节点时,我们允许子节点之间有重叠,这等效于为重叠部分隐式引入外观Or-node。 AOT模型的学习包含三个部分:(i)无监督的子类别学习(即,对象Or-node的分支),其中AOG中的潜在结构已集成在一起。 (ii)弱监督零件配置学习(即,在AOG中为每个子类别寻找全局最优的解析树)。为了有效地在AOG中搜索全局最优分析树,我们提出了一种动态规划(DP)算法。 (iii)在潜在的结构SVM框架下进行联合外观和结构参数训练。在实验中,我们的方法在20种对象类别的PASCAL VOC 2007和2010检测基准上进行了测试,性能优于可比的最新技术。

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