• Title/Summary/Keyword: text generation

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Psalm Text Generator Comparison Between English and Korean Using LSTM Blocks in a Recurrent Neural Network (순환 신경망에서 LSTM 블록을 사용한 영어와 한국어의 시편 생성기 비교)

  • Snowberger, Aaron Daniel;Lee, Choong Ho
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2022.10a
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    • pp.269-271
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    • 2022
  • In recent years, RNN networks with LSTM blocks have been used extensively in machine learning tasks that process sequential data. These networks have proven to be particularly good at sequential language processing tasks by being more able to accurately predict the next most likely word in a given sequence than traditional neural networks. This study trained an RNN / LSTM neural network on three different translations of 150 biblical Psalms - in both English and Korean. The resulting model is then fed an input word and a length number from which it automatically generates a new Psalm of the desired length based on the patterns it recognized while training. The results of training the network on both English text and Korean text are compared and discussed.

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Hangout Font Generation by using Structural Coding (한글 폰트의 구조적 코딩 설계)

  • Kim, Me-Lan;Cho, Dong-Sub
    • Proceedings of the KIEE Conference
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    • 1989.07a
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    • pp.461-464
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    • 1989
  • This paper deals with the computer generation of Korean characters by the structural coding which results in higher flexibility and compactness. Our method by which Korean characters are designed is characterized as follows : The list of primitives for Korean text is extracted by structural coding rule, and the knowledge-base is used for handling various primitives.

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Detecting spam mails using Text Mining Techniques (광고성 메일을 자동으로 구별해내는 Text Mining 기법 연구)

  • 이종호
    • Proceedings of the Korean Society for Cognitive Science Conference
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    • 2002.05a
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    • pp.35-39
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    • 2002
  • 광고성 메일이 개인 당 하루 평균 10통 내외로 오며, 그 제목만으로는 광고메일을 효율적으로 제거하기 어려운 현실이다. 이러한 어려움은 주로 광고 제목을 교묘히 인사말이나 답신처럼 변경하는 데에서 오는 것이며, 이처럼 제목으로 광고를 삭제할 수 없도록 은폐하는 노력은 계속될 추세이다. 그래서 제목을 통한 변화에 적응하면서, 제목뿐만 아니라 내용에 대한 의미 파악을 자동으로 수행하여 스팸 메일을 차단하는 방법이 필요하다. 본 연구에서는 정상 메일과 스팸 메일의 범주화(classification) 방식으로 접근하였다. 이러한 범주화 방식에 대한 기준을 자동으로 알기 위해서는 사람처럼 문장 해독을 통한 의미파악이 필요하지만, 기계가 문장 해독을 통해서 의미파악을 하는 비용이 막대하므로, 의미파악을 단어수준 등에서 효율적으로 대신하는 text mining과 web contents mining 기법들에 대한 적용 및 비교 연구를 수행하였다. 약 500 통에 달하는 광고메일을 표본으로 하였으며, 정상적인 편지군(500 통)에 대해서 동일한 기법을 적용시켜 false alarm도 측정하였다. 비교 연구 결과에 의하면, 메일 패턴의 가변성이 너무 커서 wrapper generation 방법으로는 해결하기 힘들었고, association rule analysis와 link analysis 기법이 보다 우수한 것으로 평가되었다.

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Generative Linguistic Steganography: A Comprehensive Review

  • Xiang, Lingyun;Wang, Rong;Yang, Zhongliang;Liu, Yuling
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.16 no.3
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    • pp.986-1005
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    • 2022
  • Text steganography is one of the most imminent and promising research interests in the information security field. With the unprecedented success of the neural network and natural language processing (NLP), the last years have seen a surge of research on generative linguistic steganography (GLS). This paper provides a thorough and comprehensive review to summarize the existing key contributions, and creates a novel taxonomy for GLS according to NLP techniques and steganographic encoding algorithm, then summarizes the characteristics of generative linguistic steganographic methods properly to analyze the relationship and difference between each type of them. Meanwhile, this paper also comprehensively introduces and analyzes several evaluation metrics to evaluate the performance of GLS from diverse perspective. Finally, this paper concludes the future research work, which is more conducive to the follow-up research and innovation of researchers.

Graph-to-Text Generation Using Relation Extraction Datasets (관계 추출 데이터를 이용한 그래프-투-텍스트 생성)

  • Yang, Kisu;Jang, Yoonna;Lee, Chanhee;Seo, Jaehyung;Jang, Hwanseok;Lim, Heuiseok
    • Annual Conference on Human and Language Technology
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    • 2021.10a
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    • pp.597-601
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    • 2021
  • 주어진 정보를 자연어로 변환하는 작업은 대화 시스템의 핵심 모듈임에도 불구하고 학습 데이터의 제작 비용이 높아 공개된 데이터가 언어에 따라 부족하거나 없다. 이에 본 연구에서는 텍스트-투-그래프(text-to-graph) 작업인 관계 추출에 쓰이는 데이터의 입출력을 반대로 지정하여 그래프-투-텍스트(graph-to-text) 생성 작업에 이용하는 역 관계 추출(reverse relation extraction, RevRE) 기법을 소개한다. 이 기법은 학습 데이터의 양을 늘려 영어 그래프-투-텍스트 작업의 성능을 높이고 지식 묘사 데이터가 부재한 한국어에선 데이터를 재생성한다.

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Development of a Software PLC for PC Based on IEC 61131-3 Standard (IEC 61131-3 표준을 따른 PC용 소프트웨어 PLC의 개발)

  • Lee, Cheol-Soo;Jeong, Gu;Lee, Je-Phil;Sim, Ju-Hyun
    • Transactions of the Korean Society of Machine Tool Engineers
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    • v.11 no.1
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    • pp.61-69
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    • 2002
  • This paper describes a converting algorithm between programmable languages of a software PLU. It is based on IEC 61131-3 standard and PC. The proposed control logic is designed by the software model and common element with data type, variables, POUs(program organization unit) and execution control unit commonly used within programmable languages of IEC 61131-3 Standard. The generation method of object file is proposed on five programmable language based on IEC 61131-3. It is represented as fo11ows; 1) the generation method using conversion algorithm from LD to IL with FBD(function block diagram), 2) the generation method using f code generation algorithm from SFC using the SFC execution sequence with FBD and ST(structured text). The proposed control logic generator was implemented by Visual C++ 6.0 and MFC on MS-windows NT 4.0.

Research on Generative AI for Korean Multi-Modal Montage App (한국형 멀티모달 몽타주 앱을 위한 생성형 AI 연구)

  • Lim, Jeounghyun;Cha, Kyung-Ae;Koh, Jaepil;Hong, Won-Kee
    • Journal of Service Research and Studies
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    • v.14 no.1
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    • pp.13-26
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    • 2024
  • Multi-modal generation is the process of generating results based on a variety of information, such as text, images, and audio. With the rapid development of AI technology, there is a growing number of multi-modal based systems that synthesize different types of data to produce results. In this paper, we present an AI system that uses speech and text recognition to describe a person and generate a montage image. While the existing montage generation technology is based on the appearance of Westerners, the montage generation system developed in this paper learns a model based on Korean facial features. Therefore, it is possible to create more accurate and effective Korean montage images based on multi-modal voice and text specific to Korean. Since the developed montage generation app can be utilized as a draft montage, it can dramatically reduce the manual labor of existing montage production personnel. For this purpose, we utilized persona-based virtual person montage data provided by the AI-Hub of the National Information Society Agency. AI-Hub is an AI integration platform aimed at providing a one-stop service by building artificial intelligence learning data necessary for the development of AI technology and services. The image generation system was implemented using VQGAN, a deep learning model used to generate high-resolution images, and the KoDALLE model, a Korean-based image generation model. It can be confirmed that the learned AI model creates a montage image of a face that is very similar to what was described using voice and text. To verify the practicality of the developed montage generation app, 10 testers used it and more than 70% responded that they were satisfied. The montage generator can be used in various fields, such as criminal detection, to describe and image facial features.

Text Region Extraction from Videos using the Harris Corner Detector (해리스 코너 검출기를 이용한 비디오 자막 영역 추출)

  • Kim, Won-Jun;Kim, Chang-Ick
    • Journal of KIISE:Software and Applications
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    • v.34 no.7
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    • pp.646-654
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    • 2007
  • In recent years, the use of text inserted into TV contents has grown to provide viewers with better visual understanding. In this paper, video text is defined as superimposed text region located of the bottom of video. Video text extraction is the first step for video information retrieval and video indexing. Most of video text detection and extraction methods in the previous work are based on text color, contrast between text and background, edge, character filter, and so on. However, the video text extraction has big problems due to low resolution of video and complex background. To solve these problems, we propose a method to extract text from videos using the Harris corner detector. The proposed algorithm consists of four steps: corer map generation using the Harris corner detector, extraction of text candidates considering density of comers, text region determination using labeling, and post-processing. The proposed algorithm is language independent and can be applied to texts with various colors. Text region update between frames is also exploited to reduce the processing time. Experiments are performed on diverse videos to confirm the efficiency of the proposed method.