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Multiview Active Learning for Scene Classification with High-Level Semantic-Based Hypothesis Generation

机译:具有高级别语义假设生成的场景分类的多视图主动学习

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Multiview active learning (MVAL) is a technique which can result in a large decrease in the size of the version space than traditional active learning and has great potential applications in large-scale data analysis. This paper made research on MVAL-based scene classification for helping the computer accurately understand diverse and complex environments macroscopically, which has been widely used in many fields such as image retrieval and autonomous driving. The main contribution of this paper is that different high-level image semantics are used for replacing the traditional low-level features to generate more independent and diverse hypotheses in MVAL. First, our algorithm uses different object detectors to achieve local object responses in the scenes. Furthermore, we design a cascaded online LDA model for mining the theme semantic of an image. The experimental results demonstrate that our proposed theme modeling strategy fits the large-scale data learning, and our MVAL algorithm with both high-level semantic views can achieve significant improvement in the scene classification than traditional active learning-based algorithms.
机译:MultiView主动学习(MVAL)是一种技术,它可以导致了比传统的主动学习的版本空间大小的大小,并且在大规模数据分析中具有很大的潜在应用。本文对基于MVAL的场景分类进行了研究,以帮助计算机准确地理解多样化和复杂的环境,这已广泛应用于许多领域,例如图像检索和自主驾驶。本文的主要贡献是,不同的高级图像语义用于更换传统的低级功能,以在MVAL中产生更独立和多样化的假设。首先,我们的算法使用不同的对象检测器来实现场景中的本地对象响应。此外,我们设计了一个级联的在线LDA模型,用于挖掘图像的主题。实验结果表明,我们所提出的主题建模策略适合大规模的数据学习,我们的MVAL算法具有高级别的语义视图,可以实现比传统的基于主动学习的算法的场景分类的显着改进。

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