使用预训练的视觉-文本属性对齐模型的越南语自然语言描述的人物搜索

Thi Thanh Thuy Pham, Van-Thanh Nguyen, Hong-Quan Nguyen, Minh-Quan Le, Hoai Phan, T. Do, Thuy-Binh Nguyen, Thanh-Hai Tran, Thi-Lan Le
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引用次数: 1

摘要

基于自然语言描述的人物搜索是一项具有挑战性的任务,因为它需要建模和学习视觉文本语义嵌入。虽然有几部作品致力于通过英语描述进行人物搜索,但很少有人尝试为其他语言进行搜索。因此,在这些语言中缺乏可用的人员搜索资源。为此,首先,本文采用了ViTAA发布的网络架构,该架构可以有效地学习视觉属性和文本属性之间的对齐。然后,我们建议应用不同的越南语语言处理技术,从越南语描述中分析和提取相关元素,并提供给网络。最后,为了利用从大规模数据集中学习到的信息,我们将从大规模数据集中训练的模型权值用于通过越南语自然语言描述的专门用于人物搜索的数据集- VnPersonSearch。VnPersonSearch在Top-1、Top-5和Top-10的准确率分别为61.57%、83.93%和90.67%。这意味着该方法可以在前10个结果中以很高的准确率返回相关人员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person search by natural language description in Vietnamese using pre-trained visual-textual attributes alignment model
Person search by natural language description is a challenging task as it has to model and learn visual-text semantic embedding. While several works have been dedicated to person search by English descriptions, few attempts have been made for other languages. As a result, it lacks of available resource for person search in these languages. Inspired by transfer learning idea in image classification, in this paper, we propose a method for person search by natural language description in Vietnamese using a model whose weights are trained on a large scale dataset for person search in English. To this end, first, the published network architecture of ViTAA that allows to learn effectively the alignment between visual and textual attributes is employed in this work. Then, we propose to apply different techniques for Vietnamese language processing to analyze and extract relevant elements from descriptions in Vietnamese to feed to the network. Finally, to leverage the information learnt from a large scale dataset, we employ model weights trained from a large scale dataset to a dataset dedicated to person search by natural language description in Vietnamese - VnPersonSearch. The obtained accuracies at Top-1, Top-5 and Top-10 for VnPersonSearch are 61.57%, 83.93% and 90.67% respectively. This means that the proposed method can return relevant persons with very high accuracy in first ten results.
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