用于视觉问答的广义Hadamard-Product融合算子

Brendan Duke, Graham W. Taylor
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引用次数: 6

摘要

针对视觉问答任务,提出了一类广义的多模态融合算子。我们基于Hadamard积确定了现有多模态融合算子的泛化,并表明该广义融合算子的具体非平凡实例在VQA任务的开放式精度方面表现出优越的性能。特别是,我们引入了非线性集成、特征门控和融合后神经网络层作为融合算子组件,最终在VQA 2.0测试开发集上比基线融合算子提高了1.1%的绝对百分比,后者使用相同的特征作为输入。我们使用我们的发现作为证据,证明我们的广义类融合算子可以在融合算子的架构搜索中用作搜索空间时,发现甚至更优越的任务特定算子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Hadamard-Product Fusion Operators for Visual Question Answering
We propose a generalized class of multimodal fusion operators for the task of visual question answering (VQA). We identify generalizations of existing multimodal fusion operators based on the Hadamard product, and show that specific non-trivial instantiations of this generalized fusion operator exhibit superior performance in terms of OpenEnded accuracy on the VQA task. In particular, we introduce Nonlinearity Ensembling, Feature Gating, and post-fusion neural network layers as fusion operator components, culminating in an absolute percentage point improvement of 1.1% on the VQA 2.0 test-dev set over baseline fusion operators, which use the same features as input. We use our findings as evidence that our generalized class of fusion operators could lead to the discovery of even superior task-specific operators when used as a search space in an architecture search over fusion operators.
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