Training Object Class Detectors with Click Supervision

2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2017)

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摘要
Training object class detectors typically requires a large set of images with objects annotated by bounding boxes. However, manually drawing bounding boxes is very time consuming. In this paper we greatly reduce annotation time by proposing center-click annotations: we ask annotators to click on the center of an imaginary bounding box which tightly encloses the object instance. We then incorporate these clicks into existing Multiple Instance Learning techniques for weakly supervised object localization, to jointly localize object bounding boxes over all training images. Extensive experiments on PASCAL VOC 2007 and MS COCO show that: (1) our scheme delivers high-quality detectors, performing substantially better than those produced by weakly supervised techniques, with a modest extra annotation effort, (2) these detectors in fact perform in a range close to those trained from manually drawn bounding boxes, (3) as the center-click task is very fast, our scheme reduces total annotation time by 9x to 18x.
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关键词
center-click annotations,imaginary bounding box,object instance,weakly supervised object localization,object bounding boxes,high-quality detectors,click supervision,object class detectors,multiple instance learning techniques
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