Introducing Geometry in Active Learning for Image Segmentation

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
We propose an Active Learning approach to training a segmentation classifier that exploits geometric priors to streamline the annotation process in 3D image volumes. To this end, we use these priors not only to select voxels most in need of annotation but to guarantee that they lie on 2D planar patch, which makes it much easier to annotate than if they were randomly distributed in the volume. A simplified version of this approach is effective in natural 2D images. We evaluated our approach on Electron Microscopy and Magnetic Resonance image volumes, as well as on natural images. Comparing our approach against several accepted baselines demonstrates a marked performance increase.
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关键词
geometry,active learning,image segmentation,segmentation classifier,geometric prior,annotation process,3D image volume,2D planar patch,natural 2D image,electron microscopy,magnetic resonance image volume,natural image
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