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Improved Coupled Autoencoder based Zero Shot Recognition using Active Learning

机译:基于激活学习的基于基于耦合的AutoEncoder的零射击识别

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Zero shot learning seeks to learn useful patterns in the source domain and identify novel concepts in the target domain. This transfer learning paradigm has recently gained immense popularity given the inherent limitations in data acquisition and subsequent annotation for a task (or domain). While typical zero shot learning methods utilize all the classes (and their instances) in the source domain in a passive way, we, in our work, actively use only a handful of relevant classes for learning in the source domain. With this intelligent data subset, we jointly learn the source and target domain parameters using coupled semantic autoencoders. This joint learning reduces the projection domain shift problem. We further extend the above model for word embedding based semantic space as well. For classes with no word embedding, we have solved prototype sparsity problem by training a neural network with all classes that has one. This neural network seeks to learn a mapping from attribute space to word embedding space. Experiments on AWA2 and CUB-UCSD datasets confirm the superiority of our hybrid approach over state of art methods by up to 16% and 8% in attribute and word embedding space respectively.
机译:零拍摄学习旨在在源域中学习有用模式并识别目标域中的新颖概念。鉴于数据采集和后续注释的固有限制,此传输学习范例最近获得了巨大的受欢迎程度和任务(或域)的批注。虽然典型的零拍摄学习方法以被动方式使用源域中的所有类(及其实例),但在我们的工作中,我们在我们的工作中积极使用少数相关类来在源域中学习。使用此智能数据子集,我们使用耦合语义autaliCoders联合学习源和目标域参数。该联合学习减少了投影域移位问题。我们还将上述模型扩展了基于基于语义空间的单词。对于没有单词嵌入的课程,我们通过培训一个神经网络与具有一个的所有类的神经网络解决了原型稀疏问题。该神经网络旨在从属性空间映射到Word嵌入空间。 AWA2和CUB-UCSD数据集的实验将在属性和单词嵌入空间中,通过高达16%和8%的艺术方法的混合方法的优越性。

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