• Title/Summary/Keyword: 유넷

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인터뷰-심종현 유넷시스템 사장

  • Korean Associaton of Information & Telecommunication
    • 정보화사회
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    • s.189
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    • pp.16-17
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    • 2007
  • '정보보호 사업 2기 시대'를 선언하면서 야심차게 차세대 보안 솔루션을 주력으로 사업에 진출한 유넷시스템. 삼성그룹 계열사인 시큐아이닷컴에서 분사해 지난 2003년 법인 설립 5년 만에 가장 떠오르는 분야로 지목되고 있는 네트워크접근제어(NAC),유.무선 통합인증 시장에서 외산 제품과 경쟁하며 국산 솔루션으로는 보기 드물게 두각을 나타내고 있다. 특히, 유넷시스템의 NAC제품인 '애니클릭 NAC'은 금호생명, 롯데그룹, 보라매병원, 신한은행 등 16군데에 공급되면서 이 시장에서 선두를 달리고 있는 상황이다. 또, 최근 무선랜 보안 시장이 확산될 분위기가 한창 조성되고 있어 유.무선 통합인증 시장 공략에도 박차를 가하고 있다 뿐만 아니라 내년에는 홈네트워크 보안 시장에도 진출할 계획이어서, 무선 네트워크 관련 사업 범위를 크게 확장할 예정이다.

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Development of Statistical Prediction Engine for Integrated Log Analysis Systems (통합 로그 분석 시스템을 위한 통계학적 예측 엔진 개발)

  • KO, Kwang-Man;Kwon, Beom-Chul;Kim, Sung-Chul;Lee, Sang-Jun
    • Proceedings of the Korea Information Processing Society Conference
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    • 2013.11a
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    • pp.638-639
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    • 2013
  • Anymon Plus(ver 3.0)은 통합 로그 분석 시스템으로 대용량 로그 및 빅데이터의 실시간 수집 저장 분석할 수 있는 제품(초당 40,000 이벤트 처리)으로서, 방화벽 로그 분석을 통한 비정상 네트워크 행위 탐지, 웹 로그 분석을 통한 사용 패턴 분석, 인터넷 쇼핑몰 사기 주문 분석 및 탐지, 내부 정부 유출 분석 및 탐지 등과 같은 다양한 분야로 응용이 확대되고 있다. 본 논문에서는 보안관련 인프라 로그를 분석하고 예측하여 예상 보안사고 시기에 집중적 경계를 통한 선제적 대응을 모색하기 위해 통계적 이론에 기반한 통합 로그 분석 시스템을 개발하기 위해, 회귀분석 및 시계열 분석이 가능한 예측 엔진 시스템을 설계하고 구현한다.

Image-to-Image Translation Based on U-Net with R2 and Attention (R2와 어텐션을 적용한 유넷 기반의 영상 간 변환에 관한 연구)

  • Lim, So-hyun;Chun, Jun-chul
    • Journal of Internet Computing and Services
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    • v.21 no.4
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    • pp.9-16
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    • 2020
  • In the Image processing and computer vision, the problem of reconstructing from one image to another or generating a new image has been steadily drawing attention as hardware advances. However, the problem of computer-generated images also continues to emerge when viewed with human eyes because it is not natural. Due to the recent active research in deep learning, image generating and improvement problem using it are also actively being studied, and among them, the network called Generative Adversarial Network(GAN) is doing well in the image generating. Various models of GAN have been presented since the proposed GAN, allowing for the generation of more natural images compared to the results of research in the image generating. Among them, pix2pix is a conditional GAN model, which is a general-purpose network that shows good performance in various datasets. pix2pix is based on U-Net, but there are many networks that show better performance among U-Net based networks. Therefore, in this study, images are generated by applying various networks to U-Net of pix2pix, and the results are compared and evaluated. The images generated through each network confirm that the pix2pix model with Attention, R2, and Attention-R2 networks shows better performance than the existing pix2pix model using U-Net, and check the limitations of the most powerful network. It is suggested as a future study.

Research Trend analysis for Seismic Data Interpolation Methods using Machine Learning (머신러닝을 사용한 탄성파 자료 보간법 기술 연구 동향 분석)

  • Bae, Wooram;Kwon, Yeji;Ha, Wansoo
    • Geophysics and Geophysical Exploration
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    • v.23 no.3
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    • pp.192-207
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    • 2020
  • We acquire seismic data with regularly or irregularly missing traces, due to economic, environmental, and mechanical problems. Since these missing data adversely affect the results of seismic data processing and analysis, we need to reconstruct the missing data before subsequent processing. However, there are economic and temporal burdens to conducting further exploration and reconstructing missing parts. Many researchers have been studying interpolation methods to accurately reconstruct missing data. Recently, various machine learning technologies such as support vector regression, autoencoder, U-Net, ResNet, and generative adversarial network (GAN) have been applied in seismic data interpolation. In this study, by reviewing these studies, we found that not only neural network models, but also support vector regression models that have relatively simple structures can interpolate missing parts of seismic data effectively. We expect that future research can improve the interpolation performance of these machine learning models by using open-source field data, data augmentation, transfer learning, and regularization based on conventional interpolation technologies.

Implementation of Photovoltaic Panel failure detection system using semantic segmentation (시멘틱세그멘테이션을 활용한 태양광 패널 고장 감지 시스템 구현)

  • Shin, Kwang-Seong;Shin, Seong-Yoon
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.25 no.12
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    • pp.1777-1783
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    • 2021
  • The use of drones is gradually increasing for the efficient maintenance of large-scale renewable energy power generation complexes. For a long time, photovoltaic panels have been photographed with drones to manage panel loss and contamination. Various approaches using artificial intelligence are being tried for efficient maintenance of large-scale photovoltaic complexes. Recently, semantic segmentation-based application techniques have been developed to solve the image classification problem. In this paper, we propose a classification model using semantic segmentation to determine the presence or absence of failures such as arcs, disconnections, and cracks in solar panel images obtained using a drone equipped with a thermal imaging camera. In addition, an efficient classification model was implemented by tuning several factors such as data size and type and loss function customization in U-Net, which shows robust classification performance even with a small dataset.

An Effective Control Method for Improving Integrity of Mobile Phone Forensics (모바일 포렌식의 무결성 보장을 위한 효과적인 통제방법)

  • Kim, Dong-Guk;Jang, Seong-Yong;Lee, Won-Young;Kim, Yong-Ho;Park, Chang-Hyun
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.19 no.5
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    • pp.151-166
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    • 2009
  • To prove the integrity of digital evidence on the investigation procedure, the data which is using the MD 5(Message Digest 5) hash-function algorithm has to be discarded, if the integrity was damaged on the investigation. Even though a proof restoration of the deleted area is essential for securing the proof regarding a main phase of a case, it was difficult to secure the decisive evidence because of the damaged evidence data due to the difference between the overall hash value and the first value. From this viewpoint, this paper proposes the novel model for the mobile forensic procedure, named as "E-Finder(Evidence Finder)", to ,solve the existing problem. The E-Finder has 5 main phases and 15 procedures. We compared E-Finder with NIST(National Institute of Standards and Technology) and Tata Elxsi Security Group. This paper thus achieved the development and standardization of the investigation methodology for the mobile forensics.

A Study on the Performance of Enhanced Deep Fully Convolutional Neural Network Algorithm for Image Object Segmentation in Autonomous Driving Environment (자율주행 환경에서 이미지 객체 분할을 위한 강화된 DFCN 알고리즘 성능연구)

  • Kim, Yeonggwang;Kim, Jinsul
    • Smart Media Journal
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    • v.9 no.4
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    • pp.9-16
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    • 2020
  • Recently, various studies are being conducted to integrate Image Segmentation into smart factory industries and autonomous driving fields. In particular, Image Segmentation systems using deep learning algorithms have been researched and developed enough to learn from large volumes of data with higher accuracy. In order to use image segmentation in the autonomous driving sector, sufficient amount of learning is needed with large amounts of data and the streaming environment that processes drivers' data in real time is important for the accuracy of safe operation through highways and child protection zones. Therefore, we proposed a novel DFCN algorithm that enhanced existing FCN algorithms that could be applied to various road environments, demonstrated that the performance of the DFCN algorithm improved 1.3% in terms of "loss" value compared to the previous FCN algorithms. Moreover, the proposed DFCN algorithm was applied to the existing U-Net algorithm to maintain the information of frequencies in the image to produce better results, resulting in a better performance than the classical FCN algorithm in the autonomous environment.

Generation and Validation of Finite Element Models of Computed Tomography for Unidirectional Composites Using Supervised Learning-based Segmentation Techniques (지도학습 기반 분할기법을 이용한 단층 촬영된 단방향 복합재료의 유한요소모델 생성 및 검증)

  • Taeyi Kim;Seong-Won Jin;Yeong-Bae Kim;Jae Hyuk Lim;YunHo Kim
    • Composites Research
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    • v.36 no.6
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    • pp.395-401
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    • 2023
  • In this study, finite element modeling of unidirectional composite materials of the computed tomography (CT) was conducted using a supervised learning-based segmentation technique. Firstly, Micro-CT scan was performed to obtain the raw volume of unidirectional composite materials, providing microstructure information. From the CT volume images, actual microstructure of the cross-section of unidirectional composite materials was extracted by the labeling process. Then, a U-net deep learning model was trained with a small number of raw images as inputs and their labeled images as outputs to generate a segmentation model. Subsequently, most of remaining images were input to the trained U-net deep learning model to segment all raw volume for identifying complex microstructure, which was used for the generation of finite element model. Finally, the fiber volume fraction of the finite element model was compared with that of experimentally measured volume to validate the appropriateness of the proposed method.

Application and Evaluation of the Attention U-Net Using UAV Imagery for Corn Cultivation Field Extraction (무인기 영상 기반 옥수수 재배필지 추출을 위한 Attention U-NET 적용 및 평가)

  • Shin, Hyoung Sub;Song, Seok Ho;Lee, Dong Ho;Park, Jong Hwa
    • Ecology and Resilient Infrastructure
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    • v.8 no.4
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    • pp.253-265
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    • 2021
  • In this study, crop cultivation filed was extracted by using Unmanned Aerial Vehicle (UAV) imagery and deep learning models to overcome the limitations of satellite imagery and to contribute to the technological development of understanding the status of crop cultivation field. The study area was set around Chungbuk Goesan-gun Gammul-myeon Yidam-li and orthogonal images of the area were acquired by using UAV images. In addition, study data for deep learning models was collected by using Farm Map that modified by fieldwork. The Attention U-Net was used as a deep learning model to extract feature of UAV in this study. After the model learning process, the performance evaluation of the model for corn cultivation extraction was performed using non-learning data. We present the model's performance using precision, recall, and F1-score; the metrics show 0.94, 0.96, and 0.92, respectively. This study proved that the method is an effective methodology of extracting corn cultivation field, also presented the potential applicability for other crops.

Contactless User Identification System using Multi-channel Palm Images Facilitated by Triple Attention U-Net and CNN Classifier Ensemble Models

  • Kim, Inki;Kim, Beomjun;Woo, Sunghee;Gwak, Jeonghwan
    • Journal of the Korea Society of Computer and Information
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    • v.27 no.3
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    • pp.33-43
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    • 2022
  • In this paper, we propose an ensemble model facilitated by multi-channel palm images with attention U-Net models and pretrained convolutional neural networks (CNNs) for establishing a contactless palm-based user identification system using conventional inexpensive camera sensors. Attention U-Net models are used to extract the areas of interest including hands (i.e., with fingers), palms (i.e., without fingers) and palm lines, which are combined to generate three channels being ped into the ensemble classifier. Then, the proposed palm information-based user identification system predicts the class using the classifier ensemble with three outperforming pre-trained CNN models. The proposed model demonstrates that the proposed model could achieve the classification accuracy, precision, recall, F1-score of 98.60%, 98.61%, 98.61%, 98.61% respectively, which indicate that the proposed model is effective even though we are using very cheap and inexpensive image sensors. We believe that in this COVID-19 pandemic circumstances, the proposed palm-based contactless user identification system can be an alternative, with high safety and reliability, compared with currently overwhelming contact-based systems.