Yanhan Sun , Jiangtao Qi , Zhenfang Zhu , Kefeng Li , Liang Zhao , Lei Lv
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引用次数: 0
Abstract
Visual Question Answering (VQA) suffers from language prior issue, where models tend to rely on dataset biases to answer the questions while ignoring the image information. Existing studies have been devoted to mitigating language bias by using extra question-only models or balancing the dataset. However, these works fail to comprehensively identify the bias, despite the fact that some methods utilizing margin loss to separate the biased answer embeddings. In this paper, we propose a bias-guided debiasing architecture with margin loss named as BGML, which utilizes a bias model to guide the margin loss for explicitly locating biases of different question types in the answer space. This distinction of bias prompts the model to avoid the adverse effects of language priors. Additionally, we encourage the bias model to comprehensively learn biases by integrating the adversarial training, knowledge distillation, and contrastive learning. The experimental results show that BGML achieved the state-of-the-art results with 62.28% on VQA-CP v2, while retaining competitive results with 60.84% on VQA v2.
期刊介绍:
Information Processing and Management is dedicated to publishing cutting-edge original research at the convergence of computing and information science. Our scope encompasses theory, methods, and applications across various domains, including advertising, business, health, information science, information technology marketing, and social computing.
We aim to cater to the interests of both primary researchers and practitioners by offering an effective platform for the timely dissemination of advanced and topical issues in this interdisciplinary field. The journal places particular emphasis on original research articles, research survey articles, research method articles, and articles addressing critical applications of research. Join us in advancing knowledge and innovation at the intersection of computing and information science.