多模态世界中的量词:语言和声音的幻觉视觉

Alberto Testoni, Sandro Pezzelle, R. Bernardi
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引用次数: 6

摘要

受多感觉整合文献的启发,我们开发了一个计算模型来确定知觉中的量词。该模型学会从9个量词(“少数”、“许多”、“所有”等)中选择一个更有可能描述包含动物和人工制品的视觉-听觉输入中动物的百分比。我们表明,依赖于并发的感官输入增加了模型在量化任务上的性能。此外,我们在只给出听觉模态的情况下评估模型,而视觉模态要么来自听觉输入本身,要么来自描述听觉输入中实体数量的语言标题。通过这种方式,模型利用了模式之间的先验关联。我们表明,该模型从先验知识中获益,并且优于纯听觉设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifiers in a Multimodal World: Hallucinating Vision with Language and Sound
Inspired by the literature on multisensory integration, we develop a computational model to ground quantifiers in perception. The model learns to pick, out of nine quantifiers (‘few’, ‘many’, ‘all’, etc.), the one that is more likely to describe the percent of animals in a visual-auditory input containing both animals and artifacts. We show that relying on concurrent sensory inputs increases model performance on the quantification task. Moreover, we evaluate the model in a situation in which only the auditory modality is given, while the visual one is ‘hallucinanted’ either from the auditory input itself or from a linguistic caption describing the quantity of entities in the auditory input. This way, the model exploits prior associations between modalities. We show that the model profits from the prior knowledge and outperforms the auditory-only setting.
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