通过注意力积累的视觉基础

Chaorui Deng, Qi Wu, Qingyao Wu, Fuyuan Hu, Fan Lyu, Mingkui Tan
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引用次数: 173

摘要

基于自然语言查询的视觉定位(VG)旨在定位图像中最相关的对象或区域。查询可以是一个短语、一个句子,甚至是一个多轮对话。在VG中有三个主要的挑战:1)查询的主要焦点是什么;2)如何理解图像;3)如何定位目标。现有的方法大多是将所有信息简单地组合在一起,存在信息冗余的问题(如查询不明确、图像复杂、对象多)。在本文中,我们将这些挑战归纳为三个关注问题,并提出了一个累积关注(A-ATT)机制来共同对它们进行推理。我们的A-ATT机制可以循环地积累对图像、查询和对象中有用信息的关注,而逐渐忽略噪声。我们在四个流行的数据集(即ReferCOCO - coco、ReferCOCO+、ReferCOCO和Guesswhat?!)上评估了A-ATT的性能,实验结果表明了所提方法在准确率方面的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Grounding via Accumulated Attention
Visual Grounding (VG) aims to locate the most relevant object or region in an image, based on a natural language query. The query can be a phrase, a sentence or even a multi-round dialogue. There are three main challenges in VG: 1) what is the main focus in a query; 2) how to understand an image; 3) how to locate an object. Most existing methods combine all the information curtly, which may suffer from the problem of information redundancy (i.e. ambiguous query, complicated image and a large number of objects). In this paper, we formulate these challenges as three attention problems and propose an accumulated attention (A-ATT) mechanism to reason among them jointly. Our A-ATT mechanism can circularly accumulate the attention for useful information in image, query, and objects, while the noises are ignored gradually. We evaluate the performance of A-ATT on four popular datasets (namely Refer-COCO, ReferCOCO+, ReferCOCOg, and Guesswhat?!), and the experimental results show the superiority of the proposed method in term of accuracy.
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