Show, Deconfound and Tell: Image Captioning with Causal Inference

Bing Liu, Dong Wang, Xu Yang, Yong Zhou, Rui Yao, Zhiwen Shao, Jiaqi Zhao
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引用次数: 17

Abstract

The transformer-based encoder-decoder framework has shown remarkable performance in image captioning. However, most transformer-based captioning methods ever overlook two kinds of elusive confounders: the visual confounder and the linguistic confounder, which generally lead to harmful bias, induce the spurious correlations during training, and degrade the model generalization. In this paper, we first use Structural Causal Models (SCMs) to show how two confounders damage the image captioning. Then we apply the backdoor adjustment to propose a novel causal inference based image captioning (CIIC) framework, which consists of an interventional object detector (IOD) and an interventional transformer decoder (ITD) to jointly confront both confounders. In the encoding stage, the IOD is able to disentangle the region-based visual features by deconfounding the visual confounder. In the decoding stage, the ITD introduces causal intervention into the transformer decoder and deconfounds the visual and linguistic confounders simultaneously. Two modules collaborate with each other to alleviate the spurious correlations caused by the unobserved confounders. When tested on MSCOCO, our proposal significantly outperforms the state-of-the-art encoder-decoder models on Karpathy split and online test split. Code is published in https://github.com/CUMTGG/CIIC.
展示,拆解和讲述:带有因果推理的图像标题
基于变压器的编码器-解码器框架在图像字幕处理中表现出了显著的性能。然而,大多数基于变换的字幕方法都忽略了两种难以识别的混杂因素:视觉混杂因素和语言混杂因素,这两种混杂因素通常会导致有害的偏差,在训练过程中诱发伪相关,降低模型的泛化能力。在本文中,我们首先使用结构因果模型(scm)来显示两个混杂因素如何损害图像标题。然后,我们应用后门调整提出了一种新的基于因果推理的图像字幕(CIIC)框架,该框架由介入对象检测器(IOD)和介入变压器解码器(ITD)组成,共同对抗这两个干扰。在编码阶段,IOD能够通过解构视觉混淆来解开基于区域的视觉特征。在解码阶段,过渡段将因果干预引入变压器解码器,同时消除视觉和语言干扰。两个模块相互协作,以减轻由未观察到的混杂因素引起的虚假相关性。当在MSCOCO上进行测试时,我们的建议在Karpathy分裂和在线测试分裂上明显优于最先进的编码器-解码器模型。代码发布在https://github.com/CUMTGG/CIIC。
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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