Zero Shot Learning via Multi-scale Manifold Regularization

Shay Deutsch, Soheil Kolouri, Kyungnam Kim, Y. Owechko, Stefano Soatto
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引用次数: 44

Abstract

We address zero-shot learning using a new manifold alignment framework based on a localized multi-scale transform on graphs. Our inference approach includes a smoothness criterion for a function mapping nodes on a graph (visual representation) onto a linear space (semantic representation), which we optimize using multi-scale graph wavelets. The robustness of the ensuing scheme allows us to operate with automatically generated semantic annotations, resulting in an algorithm that is entirely free of manual supervision, and yet improves the state-of-the-art as measured on benchmark datasets.
基于多尺度流形正则化的零射击学习
我们使用基于图的局部多尺度变换的新的流形对齐框架来解决零射击学习。我们的推理方法包括将图(视觉表示)上的节点映射到线性空间(语义表示)上的函数的平滑准则,我们使用多尺度图小波对其进行优化。后续方案的鲁棒性使我们能够使用自动生成的语义注释进行操作,从而产生完全不需要人工监督的算法,并且在基准数据集上提高了最先进的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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