UNITOR @ DANKMEME: Combining Convolutional Models and Transformer-based architectures for accurate MEME management

Claudia Breazzano, E. Rubino, D. Croce, R. Basili
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引用次数: 1

Abstract

This paper describes the UNITOR system that participated to the “multimoDal Artefacts recogNition Knowledge for MEMES” (DANKMEMES) task within the context of EVALITA 2020. UNITOR implements a neural model which combines a Deep Convolutional Neural Network to encode visual information of input images and a Transformerbased architecture to encode the meaning of the attached texts. UNITOR ranked first in all subtasks, clearly confirming the robustness of the investigated neural architectures and suggesting the beneficial impact of the proposed combination strategy.
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unit @ DANKMEME:结合卷积模型和基于变压器的架构,实现准确的MEME管理
本文描述了在EVALITA 2020的背景下参与“MEMES的多模态人工制品识别知识”(DANKMEMES)任务的UNITOR系统。UNITOR实现了一个神经模型,该模型结合了深度卷积神经网络来编码输入图像的视觉信息,以及基于transform的架构来编码附加文本的含义。UNITOR在所有子任务中排名第一,清楚地证实了所研究的神经结构的鲁棒性,并表明所提出的组合策略的有益影响。
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