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Large Scale Semi-Supervised Object Detection Using Visual and Semantic Knowledge Transfer

机译:使用视觉和语义知识转移的大规模半监督目标检测

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Deep CNN-based object detection systems have achieved remarkable success on several large-scale object detection benchmarks. However, training such detectors requires a large number of labeled bounding boxes, which are more difficult to obtain than image-level annotations. Previous work addresses this issue by transforming image-level classifiers into object detectors. This is done by modeling the differences between the two on categories with both imagelevel and bounding box annotations, and transferring this information to convert classifiers to detectors for categories without bounding box annotations. We improve this previous work by incorporating knowledge about object similarities from visual and semantic domains during the transfer process. The intuition behind our proposed method is that visually and semantically similar categories should exhibit more common transferable properties than dissimilar categories, e.g. a better detector would result by transforming the differences between a dog classifier and a dog detector onto the cat class, than would by transforming from the violin class. Experimental results on the challenging ILSVRC2013 detection dataset demonstrate that each of our proposed object similarity based knowledge transfer methods outperforms the baseline methods. We found strong evidence that visual similarity and semantic relatedness are complementary for the task, and when combined notably improve detection, achieving state-of-the-art detection performance in a semi-supervised setting.
机译:基于深度CNN的物体检测系统在几个大型物体检测基准上均取得了显著成功。然而,训练这种检测器需要大量标记的边界框,这比图像级注释更难获得。先前的工作通过将图像级分类器转换为对象检测器来解决此问题。这是通过使用图像级别注释和边界框注释对两个类别之间的差异进行建模,然后传输此信息以将分类器转换为类别的检测器而没有边界框注释来完成的。我们通过在传输过程中纳入来自视觉和语义领域的对象相似性知识,来改进之前的工作。我们提出的方法背后的直觉是,视觉和语义上相似的类别应比不相似的类别(例如,通过将狗分类器和狗检测器之间的差异转换为猫类,可以得到比从小提琴类进行转换更好的检测器。在具有挑战性的ILSVRC2013检测数据集上的实验结果表明,我们提出的每个基于对象相似性的知识转移方法均优于基线方法。我们发现有力的证据表明,视觉相似性和语义相关性是该任务的补充,并且当显着相似时,可以显着提高检测效率,在半监督的环境中实现最新的检测性能。

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