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Exploiting Attribute Correlations: A Novel Trace Lasso-Based Weakly Supervised Dictionary Learning Method

机译:利用属性关联:一种基于轨迹套索的新型弱监督词典学习方法

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摘要

It is now well established that sparse representation models are working effectively for many visual recognition tasks, and have pushed forward the success of dictionary learning therein. Recent studies over dictionary learning focus on learning discriminative atoms instead of purely reconstructive ones. However, the existence of intraclass diversities (i.e., data objects within the same category but exhibit large visual dissimilarities), and interclass similarities (i.e., data objects from distinct classes but share much visual similarities), makes it challenging to learn effective recognition models. To this end, a large number of labeled data objects are required to learn models which can effectively characterize these subtle differences. However, labeled data objects are always limited to access, committing it difficult to learn a monolithic dictionary that can be discriminative enough. To address the above limitations, in this paper, we propose a weakly-supervised dictionary learning method to automatically learn a discriminative dictionary by fully exploiting visual attribute correlations rather than label priors. In particular, the intrinsic attribute correlations are deployed as a critical cue to guide the process of object categorization, and then a set of subdictionaries are jointly learned with respect to each category. The resulting dictionary is highly discriminative and leads to intraclass diversity aware sparse representations. Extensive experiments on image classification and object recognition are conducted to show the effectiveness of our approach.
机译:现在已经很好地证明,稀疏表示模型可以有效地用于许多视觉识别任务,并且已经在其中推动了字典学习的成功。关于字典学习的最新研究集中于学习区分性原子,而不是纯粹的重构性原子。但是,由于存在类内差异(即同一类别内的数据对象但视觉差异较大)和类间相似性(即来自不同类别的数据对象却具有许多视觉相似性),因此学习有效的识别模型具有挑战性。为此,需要大量的标记数据对象来学习可以有效地表征这些细微差异的模型。但是,带标签的数据对象始终受限于访问,这使学习具有足够区别性的整体字典变得困难。为了解决上述局限性,在本文中,我们提出了一种弱监督词典学习方法,该方法通过充分利用视觉属性相关性而不是标签先验来自动学习判别词典。特别地,内在属性相关性被用作指导对象分类过程的关键提示,然后针对每个类别共同学习一组子词典。所得字典具有很高的判别力,并导致类内多样性感知的稀疏表示。进行了大量的图像分类和目标识别实验,以证明我们的方法的有效性。

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