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首页> 外文期刊>Journal of visual communication & image representation >Semantic-aware visual attributes learning for zero-shot recognition
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Semantic-aware visual attributes learning for zero-shot recognition

机译:对零拍识别的语义感知视觉属性学习

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Zero-shot learning (ZSL) aims to recognize unseen image classes without requiring any training samples of these specific classes. The ZSL problem is typically achieved by building up a semantic embedding space like attributes to bridge the visual features and class labels of images. Currently, most ZSL approaches focus on learning a visual-semantic alignment from seen classes using only the human-designed attributes, and then ZSL problem is solved by transferring semantic knowledge from seen classes to the unseen classes. However, few works indicate if the human-designed attributes are discriminative enough for image class prediction. To address this issue, we propose a semantic-aware dictionary learning (SADL) framework to explore these discriminative visual attributes across seen and unseen classes. Furthermore, the semantic cues are elegantly integrated into the feature representations via learned visual attributes for recognition task. Experiments conducted on two challenging benchmark datasets show that our approach outweighs other state-of-the-art ZSL methods.
机译:零拍摄学习(ZSL)旨在识别不需要这些特定类别的任何培训样本的看不见的图像类。 ZSL问题通常是通过构建像属性的语义嵌入空间来实现桥接图像的可视特征和类标签。目前,大多数ZSL方法专注于使用人类设计的属性使用从看的类别学习视觉语义对齐,然后通过将语义知识从看中的类传输到看不见的类来解决ZSL问题。然而,很少有作品指示人类设计的属性是否是足以用于图像类预测的判别。为了解决这个问题,我们提出了一个语义感知的字典学习(SADL)框架,以探索看到的这些歧视性视觉属性和看不见的类。此外,语义提示通过学习的视觉属性优雅地集成到特征表示中以进行识别任务。在两个具有挑战性的基准数据集上进行的实验表明我们的方法超过了其他最先进的ZSL方法。

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