隐藏字幕
计算机科学
序列(生物学)
培训(气象学)
图像(数学)
端到端原则
人工智能
算法
计算机视觉
遗传学
物理
气象学
生物
作者
Jia Cheng Hu,Roberto Cavicchioli,Alessandro Capotondi
标识
DOI:10.1109/bigdata59044.2023.10386812
摘要
We introduce a method called the Expansion mechanism that processes the input unconstrained by the number of elements in the sequence. By doing so, the model can learn more effectively compared to traditional attention-based approaches. To support this claim, we design a novel architecture ExpansionNet v2 that achieved strong results on the MS COCO 2014 Image Captioning challenge and the State of the Art in its respective category, with a score of 143.7 CIDErD in the offline test split, 140.8 CIDErD in the online evaluation server and 72.9 AllCIDEr on the nocaps validation set. Additionally, we introduce an End to End training algorithm up to 2.8 times faster than established alternatives.
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