A Course-Focused Dual Curriculum For Image Captioning.

Mohammad Alsharid, Rasheed El-Bouri, Harshita Sharma, Lior Drukker, Aris T Papageorghiou, J Alison Noble
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引用次数: 4

Abstract

We propose a curriculum learning captioning method to caption fetal ultrasound images by training a model to dynamically transition between two different modalities (image and text) as training progresses. Specifically, we propose a course-focused dual curriculum method, where a course is training with a curriculum based on only one of the two modalities involved in image captioning. We compare two configurations of the course-focused dual curriculum; an image-first course-focused dual curriculum which prepares the early training batches primarily on the complexity of the image information before slowly introducing an order of batches for training based on the complexity of the text information, and a text-first course-focused dual curriculum which operates in reverse. The evaluation results show that dynamically transitioning between text and images over epochs of training improves results when compared to the scenario where both modalities are considered in equal measure in every epoch.

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以课程为中心的图像字幕双课程。
我们提出了一种课程学习字幕方法,通过训练一个模型在两种不同的模式(图像和文本)之间动态转换来为胎儿超声图像进行字幕。具体来说,我们提出了一种以课程为中心的双课程方法,其中一门课程是使用基于图像字幕所涉及的两种模式之一的课程进行培训。我们比较了以课程为中心的双重课程的两种配置;一种以图像优先的课程为重点的双课程,其主要根据图像信息的复杂性准备早期训练批次,然后根据文本信息的复杂性慢慢引入批次的训练顺序,以及一种以文本优先的课程为重点的双课程,其反向操作。评估结果表明,与在每个epoch中同等程度地考虑两种模式的场景相比,在文本和图像之间进行动态转换可以改善训练结果。
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