Training object class detectors typically requires a large set of images in which objects are annotated by bounding-boxes. However, manually drawing bounding-boxes is very time consuming. We propose a new scheme for training object detectors which only requires annotators to verify bounding-boxes produced automatically by the learning algorithm. Our scheme iterates between re-training the detector, re-localizing objects in the training images, and human verification. We use the verification signal both to improve re-training and to reduce the search space for re-localisation, which makes these steps different to what is normally done in a weakly supervised setting. Extensive experiments on PASCAL VOC 2007 show that (1) using human verification to update detectors and reduce the search space leads to the rapid production of high-quality bounding-box annotations; (2) our scheme delivers detectors performing almost as good as those trained in a fully supervised setting, without ever drawing any bounding-box; (3) as the verification task is very quick, our scheme substantially reduces total annotation time by a factor 6x-9x.
We don't need no bounding-boxes: Training object class detectors using only human verification
A new iterative scheme for training object detectors uses human verification of automatically generated bounding boxes to produce high-quality annotations and achieve performance close to fully supervised training with significantly reduced annotation time.
- Year
- 2016
- Venue
- arXiv 2016
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/1602.08405ARXIV-DEFAULT
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