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Weakly Supervised Learning of Deformable Part-Based Models for Object Detection via Region Proposals

机译:通过区域提案对可变形基于零件的模型进行弱监督学习

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The success of deformable part-based models (DPMs) for visual object detection relies on a large number of labeled bounding boxes. With only image-level annotations, our goal is to propose a model enhancing the weakly supervised DPMs by emphasizing the importance of location and size of the initial class-specific root filter. To adaptively select a discriminative set of candidate bounding boxes as this root filter estimate, first, we explore the generic objectness measurement to combine the most salient regions and “good” region proposals. Second, we propose learning of the latent class label of each candidate window as a binary classification problem, by training category-specific classifiers used to coarsely classify a candidate window into either a target object or a nontarget class. Finally, we design a flexible enlarging-and-shrinking postprocessing procedure to modify the DPMs outputs, which can effectively match the approximative object aspect ratios and further improve final accuracy. Extensive experimental results on the challenging PASCAL Visual Object Class 2007 and the Microsoft Common Objects in Context 2014 dataset demonstrate that our proposed framework is effective for initialization of the DPM's root filter. It also shows competitive final localization performance with state-of-the-art weakly supervised object detection methods, particularly for the object categories that are relatively salient in the images and deformable in structures.
机译:用于视觉对象检测的可变形基于零件的模型(DPM)的成功取决于大量标记的边界框。仅使用图像级注释,我们的目标是提出一个模型,通过强调初始特定于类的根过滤器的位置和大小的重要性来增强弱监督DPM。为了适应性地选择一组候选边界框作为此根过滤器估计值,首先,我们探索通用的客观性度量,以结合最显着的区域和“良好”的区域提议。其次,我们建议通过训练用于将候选窗口粗略地分类为目标对象或非目标类的特定于类别的分类器,来学习每个候选窗口的潜在类标签作为二进制分类问题。最后,我们设计了灵活的放大和缩小后处理程序来修改DPM输出,可以有效地匹配近似的对象长宽比并进一步提高最终精度。在具有挑战性的PASCAL Visual Object Class 2007和Microsoft Common Objects in Context 2014数据集中的大量实验结果表明,我们提出的框架对于DPM根过滤器的初始化是有效的。它还显示了使用最新的弱监督对象检测方法的最终最终定位性能的竞争性,特别是对于图像中相对突出且结构可变形的对象类别。

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    《Multimedia, IEEE Transactions on》 |2017年第2期|393-407|共15页
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