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Beyond Weakly Supervised: Pseudo Ground Truths Mining for Missing Bounding-Boxes Object Detection

机译:除了弱弱监督:伪地面真理挖掘缺少边界箱对象检测

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摘要

Due to the shortcomings of the weakly supervised and fully supervised object detection (i.e., unsatisfactory performance and expensive annotations, respectively), leveraging partially labeled images in a cost-effective way to train an object detector has attracted much attention. In this paper, we formulate this challenging task as a missing bounding-boxes’ object detection problem. Specifically, we develop a pseudo ground truth mining procedure to automatically find the missing bounding boxes for the unlabeled instances, called pseudo ground truths here, in the training data, and then combine the mined pseudo ground truths and the labeled annotations to train a fully supervised object detector. Furthermore, we propose an incremental learning framework to gradually incorporate the results of the trained fully supervised detector to improve the performance of the missing bounding-boxes’ object detection. More importantly, we find an effective way to label the massive images with limited labors and funds, which is crucial when building a large-scale weakly/webly labeled dataset for object detection. The extensive experiments on the PASCAL VOC and COCO benchmarks demonstrate that our proposed method can narrow the gap between the fully supervised and weakly supervised object detectors, and outperform the previous state-of-the-art weakly supervised detectors by a large margin (more than 3% mAP absolutely) when the missing rate equals 0.9. Moreover, our proposed method with 30% missing bounding-box annotations can achieve comparable performance to some fully supervised detectors.
机译:由于弱监督和完全监督的对象检测(即,不满意的性能和昂贵的注释),以经济效益的方式利用部分标记的图像来训练物体检测器引起了很多关注。在本文中,我们将这种具有挑战性的任务制订为缺少的边界框对象检测问题。具体来说,我们开发了一个伪地基实践挖掘过程,以自动找到未删除的实例的缺失的边界框,在此处致电培训数据,然后将占用的伪原理真理和标记的注释结合起来,以培训完全监督对象探测器。此外,我们提出了一个增量学习框架,逐渐纳入训练有素的完全监督探测器的结果,以提高缺失的边界盒对象检测的性能。更重要的是,我们找到了用有限的劳动和资金标记大规模图像的有效方法,这在构建用于对象检测的大规模弱/柔性标记的数据集时至关重要。 Pascal VOC和Coco基准上的广泛实验表明,我们的提出方法可以缩小完全监督和弱监管的物体探测器之间的差距,并且优越通过大幅度的先前最先进的弱监管探测器(超过当缺失率等于0.9时,绝对地图3%地图。此外,我们提出的方法具有30%缺失的边界盒注释可以实现对某些完全监督的探测器的可比性。

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