Improving Predicate Representation in Scene Graph Generation by Self-Supervised Learning

So Hasegawa, Masayuki Hiromoto, Akira Nakagawa, Y. Umeda
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Abstract

Scene graph generation (SGG) aims to understand sophisticated visual information by detecting triplets of subject, object, and their relationship (predicate). Since the predicate labels are heavily imbalanced, existing supervised methods struggle to improve accuracy for the rare predicates due to insufficient labeled data. In this paper, we propose SePiR, a novel self-supervised learning method for SGG to improve the representation of rare predicates. We first train a relational encoder by contrastive learning without using predicate labels, and then fine-tune a predicate classifier with labeled data. To apply contrastive learning to SGG, we newly propose data augmentation in which subject-object pairs are augmented by replacing their visual features with those from other images having the same object labels. By such augmentation, we can increase the variation of the visual features while keeping the relationship between the objects. Comprehensive experimental results on the Visual Genome dataset show that the SGG performance of SePiR is comparable to the state-of-theart, and especially with the limited labeled dataset, our method significantly outperforms the existing supervised methods. Moreover, SePiR’s improved representation enables the model architecture simpler, resulting in 3.6x and 6.3x reduction of the parameters and inference time from the existing method, independently.
用自监督学习改进场景图生成中的谓词表示
场景图生成(SGG)旨在通过检测主体、客体及其关系(谓词)的三元组来理解复杂的视觉信息。由于谓词标签严重不平衡,由于标记数据不足,现有的监督方法难以提高罕见谓词的准确性。在本文中,我们提出了一种新颖的自监督学习方法SePiR,用于改进稀有谓词的表示。我们首先在不使用谓词标签的情况下通过对比学习训练关系编码器,然后使用标记数据微调谓词分类器。为了将对比学习应用到SGG中,我们新提出了数据增强,其中通过使用具有相同对象标签的其他图像的视觉特征替换主题-对象对来增强主题-对象对。通过这种增强,我们可以在保持物体之间关系的同时增加视觉特征的变化。在Visual Genome数据集上的综合实验结果表明,SePiR的SGG性能与目前的水平相当,特别是在有限标记数据集上,我们的方法明显优于现有的监督方法。此外,SePiR的改进表示使模型架构更简单,从而使参数和推理时间分别比现有方法减少3.6倍和6.3倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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