Excluding the Misleading Relatedness Between Attributes in Multi-Task Attribute Recognition Network

Sirui Cai, Yuchun Fang
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Abstract

In the attribute recognition area, attributes that are unrelated in the real world may have a high co-occurrence rate in a dataset due to the dataset bias, which forms a misleading relatedness. A neural network, especially a multi-task neural network, trained on this dataset would learn this relatedness, and be misled when it is used in practice. In this paper, we propose Share-and-Compete Multi-Task deep learning (SCMTL) model to handle this problem. This model uses adversarial training methods to enhance competition between unrelated attributes while keeping sharing between related attributes, making the task-specific layer of the multi-task model to be more specific and thus rule out the misleading relatedness between the unrelated attributes. Experiments performed on elaborately designed datasets show that the proposed model outperforms the single task neural network and the traditional multi-task neural network in the situation mentioned above.
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多任务属性识别网络中属性间误导性关联的排除
在属性识别领域,由于数据集偏差,现实世界中不相关的属性在数据集中可能会有很高的共现率,从而形成误导性的相关性。在这个数据集上训练的神经网络,特别是多任务神经网络,会学习到这种相关性,在实际应用中会被误导。本文提出了共享竞争多任务深度学习(SCMTL)模型来解决这一问题。该模型采用对抗性训练方法,增强不相关属性之间的竞争,同时保持相关属性之间的共享,使多任务模型的任务特定层更加具体,从而排除不相关属性之间误导性的相关性。在精心设计的数据集上进行的实验表明,该模型在上述情况下优于单任务神经网络和传统的多任务神经网络。
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