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Person Identification Using Text and Image Data

机译:使用文本和图像数据的人员识别

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摘要

This paper presents a bimodal identification system using text based term vectors and EBGM face recognition. Identification was tested on a database of 118 celebrities downloaded from the internet. The dataset contained multiple images and two biographies for each person. Text based identification had a 100% identification rate for the full biographies. When the text data was artificially restricted to six sentences per subject, rank one identification rates were similar to face recognition (approx. 22%). In this restricted case, combining text identification and face identification showed a significant improvement in the identification rate over either method alone.
机译:本文介绍了使用基于文本的术语向量和EBGM面部识别的双峰识别系统。在从互联网下载的118名名人的数据库上进行了测试。数据集包含多个图像和每个人的两种传记。基于文本的识别有100%的全传记识别率。当文本数据被人为地限制在每个受试者的六个句子上时,一个识别率等级识别(约22%)。在该局限性的情况下,组合文本识别和面部识别在任何一种方法上都显示出显着改善。

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