Visual Question Answering Model Based on CAM and GCN

Ping Wen, Matthew Li, Zhang Zhen, Wang Ze
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Abstract

Visual Question Answering (VQA) is a challenging problem that needs to combine concepts from computer vision and natural language processing. In recent years, researchers have proposed many methods for this typical multimodal problem. Most existing methods use a two-stream strategy, i.e., compute image and question features separately and fuse them using various techniques, rarely relying on higher-level image representations, to capture semantic and spatial relationships. Based on the above problems, a visual question answering model (CAM-GCN) based on Cooperative Attention Mechanism (CAM) and Graph Convolutional Network (GCN) is proposed. First, the graph learning module and the concept of graph convolution are combined to learn the problem-specific graph representation of the input image and capture the interactive image representation of the specific problem. Image region dependence, and finally, continue to optimize the fused features through feature enhancement. The test results on the VQA v2 dataset show that the CAM-GCN model achieves better classification results than the current representative models.
基于CAM和GCN的可视化问答模型
视觉问答(VQA)是一个具有挑战性的问题,需要将计算机视觉和自然语言处理的概念结合起来。近年来,研究人员针对这一典型的多模态问题提出了许多方法。大多数现有方法使用两流策略,即分别计算图像和问题特征,并使用各种技术将它们融合在一起,很少依赖于更高级的图像表示,以捕获语义和空间关系。针对上述问题,提出了一种基于协同注意机制(CAM)和图卷积网络(GCN)的可视化问答模型(CAM-GCN)。首先,将图学习模块与图卷积概念相结合,学习输入图像的特定问题图表示,并捕获特定问题的交互式图像表示。图像区域依赖,最后通过特征增强继续优化融合特征。在VQA v2数据集上的测试结果表明,CAM-GCN模型比目前的代表性模型取得了更好的分类效果。
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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