PASCAL Boundaries: A Semantic Boundary Dataset with a Deep Semantic Boundary Detector

2017 IEEE Winter Conference on Applications of Computer Vision (WACV)(2017)

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摘要
In this paper, we address the task of instance-level semantic boundary detection. To this end, we generate a large database consisting of more than 10k images (which is 20 bigger than existing edge detection databases) along with ground truth boundaries between 459 semantic classes including instances from both foreground objects and different types of background, and call it the PASCAL Boundaries dataset. This is a timely introduction of the dataset since results on the existing standard dataset for measuring edge detection performance, i.e. BSDS500, have started to saturate. In addition to generating a new dataset, we propose a deep network-based multi-scale semantic boundary detector and name it Multi-scale Deep Semantic Boundary Detector (M-DSBD). We evaluate M-DSBD on PASCAL boundaries and compare it to baselines. We test the transfer capabilities of our model by evaluating on MS-COCO and BSDS500 and show that our model transfers well.
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关键词
semantic boundary dataset,instance-level semantic boundary detection,image database,ground truth boundaries,semantic classes,foreground objects,PASCAL Boundaries dataset,edge detection performance measurement,BSDS500 dataset,deep network-based multiscale semantic boundary detector,multiscale deep-semantic boundary detector,M-DSBD,transfer capabilities,MS-COCO
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