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Visual question answering via Attention-based syntactic structure tree-LSTM

机译:通过基于关注的句法结构树-LSTM的视觉问题回答

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摘要

Due to the various patterns of the image and free-form language of the question, the performance of Visual Question Answering (VQA) still lags behind satisfaction. Existing approaches mainly infer answers from the low-level features and sequential question words, which neglects the syntactic structure information of the question sentence and its correlation with the spatial structure of the image. To address these problems, we propose a novel VQA model, i.e., Attention-based Syntactic Structure Tree-LSTM (ASST-LSTM). Specifically, a tree-structured LSTM is used to encode the syntactic structure of the question sentence. A spatial-semantic attention model is proposed to learn the visual-textual correlation and the alignment between image regions and question words. In the attention model, Siamese network is employed to explore the alignment between visual and textual contents. Then, the tree-structured LSTM and the spatial-semantic attention model are integrated with a joint deep model, in which the multi-task learning method is used to train the model for answer inferring. Experiments conducted on three widely used VQA benchmark datasets demonstrate the superiority of the proposed model compared with state-of-the-art approaches. (C) 2019 Elsevier B.V. All rights reserved.
机译:由于图像的图像和自由形式的模式,视觉问题的表现(VQA)仍然滞后于满意度。现有方法主要从低级特征和顺序问题单词推断出答案,这忽略了问题句子的句法结构信息及其与图像的空间结构的相关性。为了解决这些问题,我们提出了一种新颖的VQA模型,即基于注意的句法结构树-LSTM(asst-lstm)。具体地,树结构的LSTM用于编码问题句子的句法结构。提出了一种空间 - 语义关注模型来学习图像区域和问题词之间的视觉文本相关性和对齐。在注意模型中,暹罗网络被用来探索视觉和文本内容之间的对齐。然后,树结构LSTM和空间语义注意模型与联合深度模型集成,其中使用多任务学习方法培训答案推断的模型。在三个广泛使用的VQA基准数据集中进行的实验证明了与最先进的方法相比拟议模型的优越性。 (c)2019年Elsevier B.V.保留所有权利。

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