• Title/Summary/Keyword: Custom Dataset

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Distributed Denial of Service Defense on Cloud Computing Based on Network Intrusion Detection System: Survey

  • Samkari, Esraa;Alsuwat, Hatim
    • International Journal of Computer Science & Network Security
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    • v.22 no.6
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    • pp.67-74
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    • 2022
  • One type of network security breach is the availability breach, which deprives legitimate users of their right to access services. The Denial of Service (DoS) attack is one way to have this breach, whereas using the Intrusion Detection System (IDS) is the trending way to detect a DoS attack. However, building IDS has two challenges: reducing the false alert and picking up the right dataset to train the IDS model. The survey concluded, in the end, that using a real dataset such as MAWILab or some tools like ID2T that give the researcher the ability to create a custom dataset may enhance the IDS model to handle the network threats, including DoS attacks. In addition to minimizing the rate of the false alert.

Auto Labelling System using Object Segmentation Technology (객체 분할 기법을 활용한 자동 라벨링 구축)

  • Moon, Jun-hwi;Park, Seong-hyeon;Choi, Jiyoung;Shin, Wonsun;Jung, Heokyung
    • Proceedings of the Korean Institute of Information and Commucation Sciences Conference
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    • 2022.10a
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    • pp.222-224
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    • 2022
  • Deep learning-based computer vision applications in the field of object segmentation take a transfer learning method using hyperparameters and models pretrained and distributed by STOA techniques to improve performance. Custom datasets used in this process require a lot of resources, such as time and labeling, in labeling tasks to generate Ground Truth information. In this paper, we present an automatic labeling construction method using object segmentation techniques so that resources such as time and labeling can be used less to build custom datasets used in deep learning neural networks.

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Construction of Database for Deep Learning-based Occlusion Area Detection in the Virtual Environment (가상 환경에서의 딥러닝 기반 폐색영역 검출을 위한 데이터베이스 구축)

  • Kim, Kyeong Su;Lee, Jae In;Gwak, Seok Woo;Kang, Won Yul;Shin, Dae Young;Hwang, Sung Ho
    • Journal of Drive and Control
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    • v.19 no.3
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    • pp.9-15
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    • 2022
  • This paper proposes a method for constructing and verifying datasets used in deep learning technology, to prevent safety accidents in automated construction machinery or autonomous vehicles. Although open datasets for developing image recognition technologies are challenging to meet requirements desired by users, this study proposes the interface of virtual simulators to facilitate the creation of training datasets desired by users. The pixel-level training image dataset was verified by creating scenarios, including various road types and objects in a virtual environment. Detecting an object from an image may interfere with the accurate path determination due to occlusion areas covered by another object. Thus, we construct a database, for developing an occlusion area detection algorithm in a virtual environment. Additionally, we present the possibility of its use as a deep learning dataset to calculate a grid map, that enables path search considering occlusion areas. Custom datasets are built using the RDBMS system.

EMOS: Enhanced moving object detection and classification via sensor fusion and noise filtering

  • Dongjin Lee;Seung-Jun Han;Kyoung-Wook Min;Jungdan Choi;Cheong Hee Park
    • ETRI Journal
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    • v.45 no.5
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    • pp.847-861
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    • 2023
  • Dynamic object detection is essential for ensuring safe and reliable autonomous driving. Recently, light detection and ranging (LiDAR)-based object detection has been introduced and shown excellent performance on various benchmarks. Although LiDAR sensors have excellent accuracy in estimating distance, they lack texture or color information and have a lower resolution than conventional cameras. In addition, performance degradation occurs when a LiDAR-based object detection model is applied to different driving environments or when sensors from different LiDAR manufacturers are utilized owing to the domain gap phenomenon. To address these issues, a sensor-fusion-based object detection and classification method is proposed. The proposed method operates in real time, making it suitable for integration into autonomous vehicles. It performs well on our custom dataset and on publicly available datasets, demonstrating its effectiveness in real-world road environments. In addition, we will make available a novel three-dimensional moving object detection dataset called ETRI 3D MOD.

Bottleneck-based Siam-CNN Algorithm for Object Tracking (객체 추적을 위한 보틀넥 기반 Siam-CNN 알고리즘)

  • Lim, Su-Chang;Kim, Jong-Chan
    • Journal of Korea Multimedia Society
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    • v.25 no.1
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    • pp.72-81
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    • 2022
  • Visual Object Tracking is known as the most fundamental problem in the field of computer vision. Object tracking localize the region of target object with bounding box in the video. In this paper, a custom CNN is created to extract object feature that has strong and various information. This network was constructed as a Siamese network for use as a feature extractor. The input images are passed convolution block composed of a bottleneck layers, and features are emphasized. The feature map of the target object and the search area, extracted from the Siamese network, was input as a local proposal network. Estimate the object area using the feature map. The performance of the tracking algorithm was evaluated using the OTB2013 dataset. Success Plot and Precision Plot were used as evaluation matrix. As a result of the experiment, 0.611 in Success Plot and 0.831 in Precision Plot were achieved.

Object Feature Tracking Algorithm based on Siame-FPN (Siame-FPN기반 객체 특징 추적 알고리즘)

  • Kim, Jong-Chan;Lim, Su-Chang
    • Journal of Korea Multimedia Society
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    • v.25 no.2
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    • pp.247-256
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    • 2022
  • Visual tracking of selected target objects is fundamental challenging problems in computer vision. Object tracking localize the region of target object with bounding box in the video. We propose a Siam-FPN based custom fully CNN to solve visual tracking problems by regressing the target area in an end-to-end manner. A method of preserving the feature information flow using a feature map connection structure was applied. In this way, information is preserved and emphasized across the network. To regress object region and to classify object, the region proposal network was connected with the Siamese network. The performance of the tracking algorithm was evaluated using the OTB-100 dataset. Success Plot and Precision Plot were used as evaluation matrix. As a result of the experiment, 0.621 in Success Plot and 0.838 in Precision Plot were achieved.

A Study on the Design and Implementation of AI-based Waste Recycling Automation System (AI 기반 쓰레기 분리수거 자동화 시스템 설계 및 구현에 관한 연구)

  • Kwon, Jun-Hyuk;Kim, Seung-Hyun
    • Proceedings of the Korea Information Processing Society Conference
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    • 2022.11a
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    • pp.869-871
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    • 2022
  • 현재 사회적 문제로 잘못된 자원 재활용 방법 및 경비 노동자 근로 환경 개선 필요성이 지속해서 대두되고 있으며, 최근 발생한 코로나바이러스로 인하여 배달 음식의 수요가 증가하여 각 가정에서 배출되는 쓰레기의 양이 매우 증가하였다. 이러한 사회적 문제를 효율적으로 대처하기 위하여 본 논문에서는 분리수거가 가능한 사물을 인식하여 AI 모듈로 객체 정보를 전송하고 전송된 정보에 따라 적절한 분리수거를 수행하는 스마트 분리수거 자동화 시스템을 개발하였다. 본 연구에서는 잘못된 객체 정보 전송을 최소화하고, 객체 인식률의 정확도를 높이기 위하여 많은 종류의 Custom dataset을 Yolo_Mark, Scaling Annoter Tool을 이용하여 직접 라벨링 하였으며 K-means Clustering 알고리즘을 적용하여 더욱 정확한 분리수거 자동화 시스템을 구현하였다. 본 연구를 바탕으로 불필요한 자원과 인력 낭비를 줄일 수 있으며, 인간이 아닌 시스템에 의해 통제되므로 더욱 정확한 분리수거가 가능하다.

Implementation of a Deep Learning based Realtime Fire Alarm System using a Data Augmentation (데이터 증강 학습 이용한 딥러닝 기반 실시간 화재경보 시스템 구현)

  • Kim, Chi-young;Lee, Hyeon-Su;Lee, Kwang-yeob
    • Journal of IKEEE
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    • v.26 no.3
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    • pp.468-474
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    • 2022
  • In this paper, we propose a method to implement a real-time fire alarm system using deep learning. The deep learning image dataset for fire alarms acquired 1,500 sheets through the Internet. If various images acquired in a daily environment are learned as they are, there is a disadvantage that the learning accuracy is not high. In this paper, we propose a fire image data expansion method to improve learning accuracy. The data augmentation method learned a total of 2,100 sheets by adding 600 pieces of learning data using brightness control, blurring, and flame photo synthesis. The expanded data using the flame image synthesis method had a great influence on the accuracy improvement. A real-time fire detection system is a system that detects fires by applying deep learning to image data and transmits notifications to users. An app was developed to detect fires by analyzing images in real time using a model custom-learned from the YOLO V4 TINY model suitable for the Edge AI system and to inform users of the results. Approximately 10% accuracy improvement can be obtained compared to conventional methods when using the proposed data.

A Bibliometric Approach for Department-Level Disciplinary Analysis and Science Mapping of Research Output Using Multiple Classification Schemes

  • Gautam, Pitambar
    • Journal of Contemporary Eastern Asia
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    • v.18 no.1
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    • pp.7-29
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    • 2019
  • This study describes an approach for comparative bibliometric analysis of scientific publications related to (i) individual or several departments comprising a university, and (ii) broader integrated subject areas using multiple disciplinary schemes. It uses a custom dataset of scientific publications (ca. 15,000 articles and reviews, published during 2009-2013, and recorded in the Web of Science Core Collections) with author affiliations to the research departments, dedicated to science, technology, engineering, mathematics, and medicine (STEMM), of a comprehensive university. The dataset was subjected, at first, to the department level and discipline level analyses using the newly available KAKEN-L3 classification (based on MEXT/JSPS Grants-in-Aid system), hierarchical clustering, correspondence analysis to decipher the major departmental and disciplinary clusters, and visualization of the department-discipline relationships using two-dimensional stacked bar diagrams. The next step involved the creation of subsets covering integrated subject areas and a comparative analysis of departmental contributions to a specific area (medical, health and life science) using several disciplinary schemes: Essential Science Indicators (ESI) 22 research fields, SCOPUS 27 subject areas, OECD Frascati 38 subordinate research fields, and KAKEN-L3 66 subject categories. To illustrate the effective use of the science mapping techniques, the same subset for medical, health and life science area was subjected to network analyses for co-occurrences of keywords, bibliographic coupling of the publication sources, and co-citation of sources in the reference lists. The science mapping approach demonstrates the ways to extract information on the prolific research themes, the most frequently used journals for publishing research findings, and the knowledge base underlying the research activities covered by the publications concerned.

Three-Dimensional Visualization of Medical Image using Image Segmentation Algorithm based on Deep Learning (딥 러닝 기반의 영상분할 알고리즘을 이용한 의료영상 3차원 시각화에 관한 연구)

  • Lim, SangHeon;Kim, YoungJae;Kim, Kwang Gi
    • Journal of Korea Multimedia Society
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    • v.23 no.3
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    • pp.468-475
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    • 2020
  • In this paper, we proposed a three-dimensional visualization system for medical images in augmented reality based on deep learning. In the proposed system, the artificial neural network model performed fully automatic segmentation of the region of lung and pulmonary nodule from chest CT images. After applying the three-dimensional volume rendering method to the segmented images, it was visualized in augmented reality devices. As a result of the experiment, when nodules were present in the region of lung, it could be easily distinguished with the naked eye. Also, the location and shape of the lesions were intuitively confirmed. The evaluation was accomplished by comparing automated segmentation results of the test dataset to the manual segmented image. Through the evaluation of the segmentation model, we obtained the region of lung DSC (Dice Similarity Coefficient) of 98.77%, precision of 98.45%, recall of 99.10%. And the region of pulmonary nodule DSC of 91.88%, precision of 93.05%, recall of 90.94%. If this proposed system will be applied in medical fields such as medical practice and medical education, it is expected that it can contribute to custom organ modeling, lesion analysis, and surgical education and training of patients.