资源论文Image Segmentation by Cascaded Region Agglomeration

Image Segmentation by Cascaded Region Agglomeration

2019-12-10 | |  92 |   48 |   0

Abstract

We propose a hierarchical segmentation algorithm that starts with a very fifine oversegmentation and gradually merges regions using a cascade of boundary classififiers. This approach allows the weights of region and boundary features to adapt to the segmentation scale at which they are applied. The stages of the cascade are trained sequentially, with asymetric loss to maximize boundary recall. On six segmentation data sets, our algorithm achieves best performance under most region-quality measures, and does it with fewer segments than the prior work. Our algorithm is also highly competitive in a dense oversegmentation (superpixel) regime under boundary-based measures

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