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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Integrating multi-level deep learning and concept ontology for large-scale visual recognition
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Integrating multi-level deep learning and concept ontology for large-scale visual recognition

机译:为大规模视觉识别集成多级深度学习和概念本体

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摘要

To support large-scale visual recognition (i.e., recognizing thousands or even tens of thousands of object classes), a multi-level deep learning algorithm is developed to learn multiple deep networks and a tree classifier jointly, where a concept ontology is constructed to organize large numbers of object classes hierarchically in a coarse-to-fine fashion and determine the inter-related learning tasks automatically. Our multi-level deep learning algorithm can: (a) train multiple deep networks simultaneously to achieve more discriminative representations of both coarse-grained groups and fine-grained object classes at different levels of the concept ontology (i.e., learning multiple sets of deep features simultaneously for different tasks); (b) leverage multi-task learning to train more discriminative classifiers for the fine-grained object classes in the same group to enhance their separability significantly and enable inter-class knowledge transferring; and (c) learn multiple deep networks and the tree classifier jointly in an end-to-end fashion. Our experimental results on three image sets have demonstrated that our multi-level deep learning algorithm can achieve very competitive results on both the accuracy rates and the computational efficiency for large-scale visual recognition. (C) 2018 Elsevier Ltd. All rights reserved.
机译:为了支持大规模的视觉识别(即识别成千上万甚至数千个对象类),开发了一种多级深度学习算法来学习多个深网络和树分类器,其中构建概念本体以组织大量对象类以粗为精细的方式分层,并自动确定与相关的学习任务。我们的多级深度学习算法可以:(a)同时列出多个深网络,以在不同层次的概念本体(即,学习多组深度特征中的粗粒群和细粒度对象类的更多辨别性表示同时针对不同的任务); (b)利用多任务学习为同一组中的细粒度对象类培训更多辨别性分类,以显着增强它们的可分离性并实现阶级知识转移; (c)以端到端的方式共同了解多个深网络和树分类器。我们的三种图像集的实验结果表明,我们的多层次深度学习算法可以实现非常竞争力的结果,以便对大规模视觉识别进行准确率和计算效率。 (c)2018年elestvier有限公司保留所有权利。

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