神经双胞胎谈话和替代计算

Zanyar Zohourianshahzadi, J. Kalita
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引用次数: 0

摘要

受人类大脑在增加对主题的关注时如何使用更多神经通路的启发,我们引入了一种新的双级联注意力模型,该模型优于最先进的图像字幕模型,该模型最初使用一个注意力通道来实现视觉基础任务。视觉接地确保标题句子中的单词存在于输入图像的特定区域。在视觉基础任务上训练深度学习模型后,该模型在生成标题时使用学习到的关于视觉基础和标题句子中对象顺序的模式。我们报告了我们在COCO数据集上的三个图像字幕任务的实验结果。使用标准图像字幕度量来报告结果,以显示我们的模型相对于以前的图像字幕模型所取得的改进。从我们的实验中收集的结果表明,在深度神经网络中使用更多的平行注意力路径会导致更高的性能。我们的NTT实现可以在:https://github.com/zanyarz/NeuralTwinsTalk上公开获得。
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Neural Twins Talk and Alternative Calculations
Inspired by how the human brain employs more neural pathways when increasing the focus on a subject, we introduce a novel twin cascaded attention model that outperforms a state-of-the-art image captioning model that was originally implemented using one channel of attention for the visual grounding task. Visual grounding ensures the existence of words in the caption sentence that are grounded into a particular region in the input image. After a deep learning model is trained on visual grounding task, the model employs the learned patterns regarding the visual grounding and the order of objects in the caption sentences, when generating captions. We report the results of our experiments in three image captioning tasks on the COCO dataset. The results are reported using standard image captioning metrics to show the improvements achieved by our model over the previous image captioning model. The results gathered from our experiments suggest that employing more parallel attention pathways in a deep neural network leads to higher performance. Our implementation of NTT is publicly available at: https://github.com/zanyarz/NeuralTwinsTalk.
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