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Latent Embeddings for Zero-Shot Classification

机译:零射击分类的潜在嵌入

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We present a novel latent embedding model for learning a compatibility function between image and class embeddings, in the context of zero-shot classification. The proposed method augments the state-of-the-art bilinear compatibility model by incorporating latent variables. Instead of learning a single bilinear map, it learns a collection of maps with the selection, of which map to use, being a latent variable for the current image-class pair. We train the model with a ranking based objective function which penalizes incorrect rankings of the true class for a given image. We empirically demonstrate that our model improves the state-of-the-art for various class embeddings consistently on three challenging publicly available datasets for the zero-shot setting. Moreover, our method leads to visually highly interpretable results with clear clusters of different fine-grained object properties that correspond to different latent variable maps.
机译:我们提出了一种新颖的潜在嵌入模型,用于在零镜头分类的情况下学习图像和类嵌入之间的兼容性函数。所提出的方法通过合并潜在变量来增强最新的双线性兼容性模型。它不是学习单个双线性图,而是学习具有选择的地图集合,以选择要使用的地图,将其作为当前图像类对的潜在变量。我们使用基于排名的目标函数训练模型,该函数会对给定图像的真实类的错误排名进行惩罚。我们凭经验证明,我们的模型在零镜头设置的三个具有挑战性的公开可用数据集上,始终如一地改善了各种类别嵌入的最新技术。此外,我们的方法可产生视觉上高度可解释的结果,其中包含与不同潜变量图相对应的不同细粒度对象属性的清晰簇。

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