Affinity CNN: Learning Pixel-Centric Pairwise Relations for Figure/Ground Embedding

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
Spectral embedding provides a framework for solving perceptual organization problems, including image segmentation and figure/ground organization. From an affinity matrix describing pairwise relationships between pixels, it clusters pixels into regions, and, using a complex-valued extension, orders pixels according to layer. We train a convolutional neural network (CNN) to directly predict the pair-wise relationships that define this affinity matrix. Spectral embedding then resolves these predictions into a globally-consistent segmentation and figure/ground organization of the scene. Experiments demonstrate significant benefit to this direct coupling compared to prior works which use explicit intermediate stages, such as edge detection, on the pathway from image to affinities. Our results suggest spectral embedding as a powerful alternative to the conditional random field (CRF)-based globalization schemes typically coupled to deep neural networks.
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关键词
affinity CNN,learning pixel-centric pairwise relations,figure/ground embedding,spectral embedding,perceptual organization problems,image segmentation,figure/ground organization,affinity matrix,pairwise relationships,complex-valued extension,convolutional neural network,pair-wise relationships,globally-consistent segmentation,edge detection,conditional random field,CRF-based globalization schemes,deep neural network
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