多标签零学习的共享多注意框架

Dat T. Huynh, Ehsan Elhamifar
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引用次数: 64

摘要

在这项工作中,我们开发了一个用于多标签零次学习的共享多注意模型。我们认为设计用于识别图像中多个可见和未见标签的注意机制是一项非常重要的任务,因为没有训练信号来定位未见标签,并且图像只包含数千个可能标签中需要注意的几个现有标签。因此,我们不是为具有未知行为且由于缺乏任何训练样本而可能关注无关区域的看不见的标签生成关注,而是让看不见的标签在一组共享关注中进行选择,这些共享关注被训练为标签不可知的,并且通过我们的新损失只关注相关/前景区域。最后,我们学习了一个兼容函数,根据选择的注意力来区分标签。我们进一步提出了一种新的损失函数,它由三个部分组成,引导注意力集中在不同的和相关的图像区域,同时利用所有的注意力特征。通过大量的实验,我们表明我们的方法在NUS-WIDE和大规模Open Images数据集上分别提高了2.9%和1.4%的F1分数。
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A Shared Multi-Attention Framework for Multi-Label Zero-Shot Learning
In this work, we develop a shared multi-attention model for multi-label zero-shot learning. We argue that designing attention mechanism for recognizing multiple seen and unseen labels in an image is a non-trivial task as there is no training signal to localize unseen labels and an image only contains a few present labels that need attentions out of thousands of possible labels. Therefore, instead of generating attentions for unseen labels which have unknown behaviors and could focus on irrelevant regions due to the lack of any training sample, we let the unseen labels select among a set of shared attentions which are trained to be label-agnostic and to focus on only relevant/foreground regions through our novel loss. Finally, we learn a compatibility function to distinguish labels based on the selected attention. We further propose a novel loss function that consists of three components guiding the attention to focus on diverse and relevant image regions while utilizing all attention features. By extensive experiments, we show that our method improves the state of the art by 2.9% and 1.4% F1 score on the NUS-WIDE and the large scale Open Images datasets, respectively.
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