• Title/Summary/Keyword: darknet

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A Preemptive Detection Method for Unknown IoT Botnet Based on Darknet Traffic (다크넷 트래픽 기반의 알려지지 않은 IoT 봇넷 선제탐지 방안)

  • Gunyang Park;Jungsuk Song;Heejun Roh
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.33 no.2
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    • pp.267-280
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    • 2023
  • With development of computing and communications technologies, IoT environments based on high-speed networks have been extending rapidly. Especially, from home to an office or a factory, applications of IoT devices with sensing environment and performing computations are increasing. Unfortunately, IoT devices which have limited hardware resources can be vulnerable to cyber attacks. Hence, there is a concern that an IoT botnet can give rise to information leakage as a national cyber security crisis arising from abuse as a malicious waypoint or propagation through connected networks. In order to response in advance from unknown cyber threats in IoT networks, in this paper, We firstly define four types of We firstly define four types of characteristics by analyzing darknet traffic accessed from an IoT botnet. Using the characteristic, a suspicious IP address is filtered quickly. Secondly, the filtered address is identified by Cyber Threat Intelligence (CTI) or Open Source INTelligence (OSINT) in terms of an unknown suspicious host. The identified IP address is finally fingerprinted to determine whether the IP is a malicious host or not. To verify a validation of the proposed method, we apply to a Darknet on real-world SOC. As a result, about 1,000 hosts who are detected and blocked preemptively by the proposed method are confirmed as real IoT botnets.

Study on Detection Technique for Coastal Debris by using Unmanned Aerial Vehicle Remote Sensing and Object Detection Algorithm based on Deep Learning (무인항공기 영상 및 딥러닝 기반 객체인식 알고리즘을 활용한 해안표착 폐기물 탐지 기법 연구)

  • Bak, Su-Ho;Kim, Na-Kyeong;Jeong, Min-Ji;Hwang, Do-Hyun;Enkhjargal, Unuzaya;Kim, Bo-Ram;Park, Mi-So;Yoon, Hong-Joo;Seo, Won-Chan
    • The Journal of the Korea institute of electronic communication sciences
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    • v.15 no.6
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    • pp.1209-1216
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    • 2020
  • In this study, we propose a method for detecting coastal surface wastes using an UAV(Unmanned Aerial Vehicle) remote sensing method and an object detection algorithm based on deep learning. An object detection algorithm based on deep neural networks was proposed to detect coastal debris in aerial images. A deep neural network model was trained with image datasets of three classes: PET, Styrofoam, and plastics. And the detection accuracy of each class was compared with Darknet-53. Through this, it was possible to monitor the wastes landing on the shore by type through unmanned aerial vehicles. In the future, if the method proposed in this study is applied, a complete enumeration of the whole beach will be possible. It is believed that it can contribute to increase the efficiency of the marine environment monitoring field.

Shipping Container Load State and Accident Risk Detection Techniques Based Deep Learning (딥러닝 기반 컨테이너 적재 정렬 상태 및 사고 위험도 검출 기법)

  • Yeon, Jeong Hum;Seo, Yong Uk;Kim, Sang Woo;Oh, Se Yeong;Jeong, Jun Ho;Park, Jin Hyo;Kim, Sung-Hee;Youn, Joosang
    • KIPS Transactions on Computer and Communication Systems
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    • v.11 no.11
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    • pp.411-418
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    • 2022
  • Incorrectly loaded containers can easily knock down by strong winds. Container collapse accidents can lead to material damage and paralysis of the port system. In this paper, We propose a deep learning-based container loading state and accident risk detection technique. Using Darknet-based YOLO, the container load status identifies in real-time through corner casting on the top and bottom of the container, and the risk of accidents notifies the manager. We present criteria for classifying container alignment states and select efficient learning algorithms based on inference speed, classification accuracy, detection accuracy, and FPS in real embedded devices in the same environment. The study found that YOLOv4 had a weaker inference speed and performance of FPS than YOLOv3, but showed strong performance in classification accuracy and detection accuracy.

The Study of Car Detection on the Highway using YOLOv2 and UAVs (YOLOv2와 무인항공기를 이용한 자동차 탐지에 관한 연구)

  • Seo, Chang-Jin
    • The Transactions of the Korean Institute of Electrical Engineers P
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    • v.67 no.1
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    • pp.42-46
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    • 2018
  • In this paper, we propose fast object detection method of the cars by applying YOLOv2(You Only Look Once version 2) and UAVs (Unmanned Aerial Vehicles) while on the highway. We operated Darknet, OpenCV, CUDA and Deep Learning Server(SDX-4185) for our simulation environment. YOLOv2 is recently developed fast object detection algorithm that can detect various scale objects as fast speed. YOLOv2 convolution network algorithm allows to calculate probability by one pass evaluation and predicts location of each cars, because object detection process has simple single network. In our result, we could find cars on the highway area as fast speed and we could apply to the real time.

PCB Defect Inspection using Deep Learning (딥러닝을 이용한 PCB 불량 검출)

  • Baek, Yeong-Tae;Sim, Jae-Gyu;Pak, Chan-Young;Lee, Se-Hoon
    • Proceedings of the Korean Society of Computer Information Conference
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    • 2018.07a
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    • pp.325-326
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    • 2018
  • 본 논문에서는 PCB 공정상의 육안검사를 통한 불량 분류 방식에서 CNN을 이용한 PCB 불량 분류 방식을 제안한다. 이 방식은 육안검사의 문제점인 작업자의 숙련도에 따른 검사 효율을 자동화 검사 시스템에 의해 해결하며, 불량 위치와 종류를 결과 이미지에 표시한다. 또한 이미지 분류 결과를 모니터링할 수 있도록 시리얼 통신을 통하여 Darknet 프레임워크와 LCD를 연동하였다. 적은 량의 데이터 셋으로도 좋은 결과를 냈으며, 다양한 데이터 셋을 이용해 훈련할 시 전반적인 PCB 불량의 분류가 가능할 것으로 예상된다.

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Deep Learning Based Drone Detection and Classification (딥러닝 기반 드론 검출 및 분류)

  • Yi, Keon Young;Kyeong, Deokhwan;Seo, Kisung
    • The Transactions of The Korean Institute of Electrical Engineers
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    • v.68 no.2
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    • pp.359-363
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    • 2019
  • As commercial drones have been widely used, concerns for collision accidents with people and invading secured properties are emerging. The detection of drone is a challenging problem. The deep learning based object detection techniques for detecting drones have been applied, but limited to the specific cases such as detection of drones from bird and/or background. We have tried not only detection of drones, but classification of different drones with an end-to-end model. YOLOv2 is used as an object detection model. In order to supplement insufficient data by shooting drones, data augmentation from collected images is executed. Also transfer learning from ImageNet for YOLOv2 darknet framework is performed. The experimental results for drone detection with average IoU and recall are compared and analysed.

Shrimp Quality Detection Method Based on YOLOv4

  • Tao, Xingyi;Feng, Yiran;Lee, Eung-Joo;Tao, Xueheng
    • Journal of Korea Multimedia Society
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    • v.25 no.7
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    • pp.903-911
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    • 2022
  • A shrimp quality detection model using YOLOv4 deep learning algorithm is designed, which is superior in terms of network architecture, data processing and feature extraction. The shrimp images were taken and data expanded on their own, the LableImage platform was used for data annotation, and the network model was trained under the Darknet framework. Through comparison, the final performance of the model was all higher than other common target detection models, and its detection accuracy reached 93.7% with an average detection time of 47 ms, indicating that the method can effectively detect the quality of shrimp in the production process.

Effective Application of PYNQ for FPGA-Based AI Acceleration: A Comparative Research with Petalinux (FPGA 기반 AI 가속에서 PYNQ의 효과적인 활용: Petalinux와의 비교)

  • Yu-min Kang;Han-yul Min;Chae-bin Lee
    • Annual Conference of KIPS
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    • 2024.10a
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    • pp.936-937
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    • 2024
  • 본 논문은 FPGA 기반의 Petalinux SDK와 PYNQ 프레임워크의 이미지 처리 속도를 비교한다. 연구에서는 YOLO v3 Tiny와 Darknet-19 알고리즘을 사용하여 FPGA에서 자체 제작한 CNN 가속기로 실험을 진행하였다. Petalinux SDK는 이미지 처리에 약 233.13ms가 소요된 반면, PYNQ 프레임워크는 약 2.55ms가 소요되어 더 빠른 속도를 보였다. 이를 통해 PYNQ의 잠재력과 활용 가능성을 강조하며, 추가 연구의 필요성을 제기한다.

Accelerating Neural Network Inference using SIMD in Resource-Constrained Environments (자원 제약 환경에서 SIMD 를 활용한 신경망 연산 가속)

  • Se-Hyeon Jeong;Gi-won Kang;Yun-Seo Lee;Bon-Wook Gu;Jeong-Min Hwang;Hyunyoung Oh
    • Annual Conference of KIPS
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    • 2024.10a
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    • pp.50-51
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    • 2024
  • 본 연구는 자원 제약적 임베디드 시스템에서 신경망 연산의 효율성을 극대화하기 위해 SIMD(Single Instruction Multiple Data) 기술을 활용한 최적화 기법을 제안한다. 기존 연구들이 주로 합성곱 연산에 집중된 것과 달리, 본 연구는 신경망의 전체 연산 구간에 SIMD 최적화를 적용하고, 범용 DNN 프레임워크인 Darknet 을 기반으로 다양한 모델에 적용 가능한 방법론을 적용하였다. Raspberry Pi 3B+를 테스트베드로 활용하여 다양한 CNN 모델에 대한 성능 평가를 수행하였으며, 최대 55.2%의 성능 향상을 달성하였다. 또한, SIMD 레지스터 활용도와 연산 속도 간의 상관관계를 분석하여 최적의 구현 전략을 도출하였다.

Implementation of Smart Shopping Cart using Object Detection Method based on Deep Learning (딥러닝 객체 탐지 기술을 사용한 스마트 쇼핑카트의 구현)

  • Oh, Jin-Seon;Chun, In-Gook
    • Journal of the Korea Academia-Industrial cooperation Society
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    • v.21 no.7
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    • pp.262-269
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    • 2020
  • Recently, many attempts have been made to reduce the time required for payment in various shopping environments. In addition, for the Fourth Industrial Revolution era, artificial intelligence is advancing, and Internet of Things (IoT) devices are becoming more compact and cheaper. So, by integrating these two technologies, access to building an unmanned environment to save people time has become easier. In this paper, we propose a smart shopping cart system based on low-cost IoT equipment and deep-learning object-detection technology. The proposed smart cart system consists of a camera for real-time product detection, an ultrasonic sensor that acts as a trigger, a weight sensor to determine whether a product is put into or taken out of the shopping cart, an application for smartphones that provides a user interface for a virtual shopping cart, and a deep learning server where learned product data are stored. Communication between each module is through Transmission Control Protocol/Internet Protocol, a Hypertext Transmission Protocol network, a You Only Look Once darknet library, and an object detection system used by the server to recognize products. The user can check a list of items put into the smart cart via the smartphone app, and can automatically pay for them. The smart cart system proposed in this paper can be applied to unmanned stores with high cost-effectiveness.