Jinmeng Wu, Lei Ma, Fulin Ge, Y. Hao, Pengcheng Shu
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引用次数: 0
摘要
视觉问答(Visual Question and Answer, VQA)是计算机视觉和自然语言处理领域中典型的多模态问题,其目的是针对图像给出一个可以准确回答的开放式问题。现有的视觉问答模型在探索复杂图像目标与文本之间的丰富交互时,不可避免地引入了冗余和不准确的视觉信息,也不能有效地关注场景中的目标。为了解决这一问题,提出了问题驱动的多重注意模型(QDMA)。首先,利用Faster R-CNN和LSTM提取图像的视觉特征和问题的文本特征。然后设计一个问题驱动的关注网络,获取图像中感兴趣的问题区域,使模型能够准确地定位复杂场景中的相关目标。为了在图像感兴趣区域和问题词之间建立紧密的交互关系,引入了由自关注单元和引导关注单元组成的共关注网络。最后,将问题特征和图像特征输入到由两层多层感知机组成的答案预测模块中,得到正确答案。在VQA2.0数据集上,与其他方法进行了实证比较。结果表明,该模型优于其他方法,证明了该框架的有效性。
Question-Driven Multiple Attention(DQMA) Model for Visual Question Answer
Visual Question and Answer (VQA) refers to a typical multimodal problem in the fields of computer vision and natural language processing, which aims to give an open-ended question about an image that can be answered accurately. The currently existing visual question answer models inevitably introduce redundant and inaccurate visual information when exploring the rich interaction between complex image targets and texts, and they also fail to focus effectively on the targets in the scene. To address this problem, the Question-Driven Multiple Attention Model (QDMA) is proposed. Firstly, Faster R-CNN and LSTM are used to extract visual features of images and textual features of questions. Then we design a question-driven attention network to obtain question regions of interest in images so that the model can accurately target relevant targets in complex scenes. To establish intensive interaction between the image region of interest and the question word, the co-attentive network consisting of self-attentive and guided-attentive units is introduced. Finally, the correct answer is obtained by inputting question features and image features into an answer prediction module consisting of two-layer Multi-Layer Perceptron. On the VQA2.0 dataset, the suggested method is empirically compared with other methods. The results reveal that the model outperforms other methods, demonstrating the usefulness of the framework.