首页> 外文会议>AAAI Conference on Artificial Intelligence;Innovative Applications of Artificial Intelligence Conference;Symposium on Educational Advances in Artificial Intelligence >Co-Attending Free-Form Regions and Detections with Multi-Modal Multiplicative Feature Embedding for Visual Question Answering
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Co-Attending Free-Form Regions and Detections with Multi-Modal Multiplicative Feature Embedding for Visual Question Answering

机译:共同参加自由形状区域和具有多模态乘法特征的检测,用于嵌入视觉问题的应答

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Recently, the Visual Question Answering (VQA) task has gained increasing attention in artificial intelligence. Existing VQA methods mainly adopt the visual attention mechanism to associate the input question with corresponding image regions for effective question answering. The free-form region based and the detection-based visual attention mechanisms are mostly investigated, with the former ones attending free-form image regions and the latter ones attending pre-specified detection-box regions. We argue that the two attention mechanisms are able to provide complementary information and should be effectively integrated to better solve the VQA problem. In this paper, we propose a novel deep neural network for VQA that integrates both attention mechanisms. Our proposed framework effectively fuses features from free-form image regions, detection boxes, and question representations via a multi-modal multiplicative feature embedding scheme to jointly attend question-related free-form image regions and detection boxes for more accurate question answering. The proposed method is extensively evaluated on two publicly available datasets, COCO-QA and VQA, and outperforms state-of-the-art approaches. Source code is available at https://github.com/lupantech/dual-mfa-vqa.
机译:最近,视觉问题的回答(VQA)任务在人工智能中取得了越来越关注。现有的VQA方法主要采用可视注意机制,将输入问题与相应的图像区域相关联,以便有效的问题应答。基于自由形式区域和基于检测的视觉注意机制主要研究,前者参加自由形象区域和参加预先指定的检测箱区域的后者。我们认为,两个注意机制能够提供互补信息,应该有效地集成以更好地解决VQA问题。在本文中,我们为VQA提出了一种新的深度神经网络,其集成了关注机制。我们提出的框架通过多模态乘法特征嵌入方案有效地融合了从自由形式图像区域,检测框和问题表示的功能,以共同参加与问题相关的自由形式图像区域和检测框以进行更准确的问题。所提出的方法在两个公共数据集,Coco-QA和VQA上进行广泛评估,优于最先进的方法。源代码可在https://github.com/lupantech/dual-mfa-vqa获得。

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