The Higher-quality High-level Semantics based on Improved Visual Model for VQA

Xinguang Xiao, Guangcun Wei, Wansheng Rong, Xiang Liu
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Abstract

Visual question answering is a new research direction that combines computer vision and natural language processing. Some recent research uses image interpretation to reason about answers. However, the accuracy of the answers is not satisfactory due to insufficient understanding of image content. This paper proposes an improved VQA method which applies higher-quality image high-level semantics based an improved visual model, thereby optimizing the performance of answer prediction. Firstly, we use the improved Faster-RCNN model to extract more precise attended objects from images. Then, the corresponding visual features are used to obtain high-level semantic knowledge (refined image captions and attended high-level attributes) in images. Finally, the reasoning module uses the joint features of two semantic knowledge and questions to predict the final answers. We conducted extensive experiments on the public datasets and the results of experiments were analyzed to illustrate effectiveness of the method.
基于改进可视化模型的VQA高质量高级语义
视觉问答是计算机视觉与自然语言处理相结合的一个新的研究方向。最近的一些研究使用图像解释来推理答案。然而,由于对图像内容的理解不足,答案的准确性并不令人满意。本文提出了一种改进的VQA方法,该方法基于改进的视觉模型,应用更高质量的图像高级语义,从而优化了答案预测的性能。首先,我们使用改进的Faster-RCNN模型从图像中提取更精确的关注对象。然后,利用相应的视觉特征获得图像中的高级语义知识(精炼的图像标题和出席的高级属性)。最后,推理模块利用两个语义知识和问题的联合特征来预测最终答案。我们在公共数据集上进行了大量的实验,并对实验结果进行了分析,以说明该方法的有效性。
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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