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Learning semantic attributes via a common latent space

机译:通过公共潜在空间学习语义属性

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Semantic attributes represent an adequate knowledge that can be easily transferred to other domains where lack of information and training samples exist. However, in the classical object recognition case, where training data is abundant, attribute-based recognition usually results in poor performance compared to methods that used image features directly. We introduce a generic framework that boosts the performance of semantic attributes considerably in traditional classification and knowledge transfer tasks, such as zero-shot learning. It incorporates the discriminative power of the visual features and the semantic meaning of the attributes by learning a common latent space that joins both spaces. We also specifically account for the presence of attribute correlations in the source dataset to generalize more efficiently across domains. Our evaluation of the proposed approach on standard public datasets shows that it is not only simple and computationally efficient but also performs remarkably better than the common direct attribute model.
机译:语义属性代表了足够的知识,可以轻松地将其转移到缺少信息和训练样本的其他领域。但是,在经典的对象识别情况下,训练数据非常丰富,与直接使用图像特征的方法相比,基于属性的识别通常导致性能较差。我们引入了一个通用框架,该框架在传统分类和知识转移任务(例如零镜头学习)中显着提高了语义属性的性能。通过学习连接两个空间的共同潜在空间,它融合了视觉特征的判别力和属性的语义。我们还专门考虑了源数据集中属性相关性的存在,以更有效地泛化各个域。我们对标准公共数据集上提出的方法的评估表明,它不仅简单且计算效率高,而且其性能也比普通直接属性模型好得多。

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