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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Curriculum learning of visual attribute clusters for multi-task classification
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Curriculum learning of visual attribute clusters for multi-task classification

机译:用于多任务分类的Visual属性集群课程学习

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摘要

Visual attributes, from simple objects (e.g., backpacks, hats) to soft-biometrics (e.g., gender, height, clothing) have proven to be a powerful representational approach for many applications such as image description and human identification. In this paper, we introduce a novel method to combine the advantages of both multi-task and curriculum learning in a visual attribute classification framework. Individual tasks are grouped after performing hierarchical clustering based on their correlation. The clusters of tasks are learned in a curriculum learning setup by transferring knowledge between clusters. The learning process within each cluster is performed in a multi-task classification setup. By leveraging the acquired knowledge, we speed-up the process and improve performance. We demonstrate the effectiveness of our method via ablation studies and a detailed analysis of the covariates, on a variety of publicly available datasets of humans standing with their full-body visible. Extensive experimentation has proven that the proposed approach boosts the performance by 4%-10%. (C) 2018 Elsevier Ltd. All rights reserved.
机译:从简单的物体(例如,背包,帽子)到软生物识别(例如,性别,高度,服装)的视觉属性已被证明是许多应用的强大代表方法,例如图像描述和人类识别。在本文中,我们介绍了一种新的方法,将多任务和课程学习中的优势结合在视觉属性分类框架中。基于其相关性在执行分层群集之后分组各个任务。通过在群集之间传输知识,在课程学习设置中学到任务集群。在多项任务分类设置中执行每个群集内的学习过程。通过利用所获得的知识,我们加快过程并提高性能。我们通过消融研究证明了我们的方法的有效性和对协变量的详细分析,在各种各样的人类地站在他们的全身可见的人身上。经过广泛的实验证明,拟议的方法将性能提高了4%-10%。 (c)2018年elestvier有限公司保留所有权利。

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