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Learning Semantic Concepts from Noisy Media Collection for Automatic Image Annotation

机译:从嘈杂的媒体库中学习语义概念以进行自动图像注释

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摘要

Along with the explosive growth of images, automatic image annotation has attracted great interest of various research communities. However, despite the great progress achieved in the past two decades, automatic annotation is still an important open problem in computer vision, and can hardly achieve satisfactory performance in real-world environment. In this paper, we address the problem of annotation when noise is interfering with the dataset. A semantic neighborhood learning model on noisy media collection is proposed. Missing labels are replenished, and semantic balanced neighborhood is construct. The model allows the integration of multiple label metric learning and local nonnegative sparse coding. We construct semantic consistent neighborhood for each sample, thus corresponding neighbors have higher global similarity, partial correlation, conceptual similarity along with semantic balance. Meanwhile, an iterative denoising method is also proposed. The method proposed makes a marked improvement as compared to the current state-of-the-art.
机译:随着图像的爆炸性增长,自动图像标注引起了各个研究团体的极大兴趣。然而,尽管在过去的二十年中取得了长足的进步,但是自动标注仍然是计算机视觉中的一个重要的开放问题,并且在现实环境中几乎无法获得令人满意的性能。在本文中,我们解决了噪声干扰数据集时的注释问题。提出了一种基于嘈杂媒体收集的语义邻域学习模型。补充缺少的标签,并构造语义平衡的邻域。该模型允许集成多个标签度量学习和局部非负稀疏编码。我们为每个样本构造语义一致的邻域,因此相应的邻域具有更高的全局相似性,部分相关性,概念相似性以及语义平衡。同时,还提出了一种迭代去噪方法。与当前的最新技术相比,提出的方法有了明显的改进。

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