• Title/Summary/Keyword: 국방 인공지능

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The AI Promotion Strategy of Korea Defense for the AI Expansion in Defense Domain (국방분야 인공지능 저변화를 위한 대한민국 국방 인공지능 추진전략)

  • Lee, Seung-Mok;Kim, Young-Gon;An, Kyung-Soo
    • Journal of Software Assessment and Valuation
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    • v.17 no.2
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    • pp.59-73
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    • 2021
  • Recently, artificial intelligence has spread rapidly and popularized and expanded to the voice recognition personal service sector, and major countries have established artificial intelligence promotion strategies, but in the case of South Korea's defense domain, its influence is low with a geopolitical location with North Korea. This paper presents a total of six strategies for promoting South Korea's defense artificial intelligence, including establishing roadmaps, securing manpower, installing the artificial intelligence base, and strengthening cooperation among stakeholders in order to increase the impact of South Korea's defense artificial intelligence and successfully promote artificial intelligence. These suggestions are expected to establish the foundation for expanding the base of artificial intelligence.

A study on improvement of policy of artificial intelligence for national defense considering the US third offset strategy (미국의 제3차 상쇄전략을 고려한 국방 인공지능 정책 발전방안)

  • Se Hoon Lee;Seunghoon Lee
    • Industry Promotion Research
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    • v.8 no.1
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    • pp.35-45
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    • 2023
  • This paper addressed the analysis of the trend and direction of the US defense strategy based on their third offset strategy and presented the practical policy implication of ensuring the security of South Korea appropriately in the future national defense environment. The countermeasures for the development ability of advanced weapon systems and secure core technologies for Korea were presented in consideration of the US third offset strategy for the future national defense environment. First, to carry out the innovation of national defense in Korea based on artificial intelligence(AI), the long-term basis strategy for the operation of the unmanned robot and autonomous weapon system should be suggested. Second, the platform for AI has to be developed to obtain the development of algorithms and computing abilities for securing the collection/storage/management of national defense data. Lastly, advanced components and core technologies are identified, which the Korean government can join to develop with the US on a basis of the Korea-US alliance, and the technical cooperation with the US should be stronger.

국방지휘통제체계 AI 적용을 위한 고찰

  • Kim, Yeong-Do;Gwon, Hyeok-Jin
    • Korea Information Processing Society Review
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    • v.24 no.1
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    • pp.13-18
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    • 2017
  • 국방지휘통제체계는 다양한 감시정찰 자산으로부터 수집된 많은 양의 정보를 융합하고 분석하여 지휘관이 최적의 의사결정을 내릴 수 있도록 지원하는 시스템이다. 하지만 현재 운영 중인 지휘 통제체계는 단순히 정보를 보여주고 유통하는 체계로 대량의 정보를 분석하고, 최적의 방책을 제공하는 등과 같은 지휘관의 의사결정을 지원하기에는 미흡한 수준이다. 지휘통제체계의 지능화 수준을 높이기 위해서 최근 이슈가 되고 있는 인공지능을 지휘 통제체계에 적용해 보고자 한다. 인공지능은 다양한 분야와의 융합을 통해 새로운 가치를 창출하고 사회 전반의 변혁을 이끌고 있다. 이러한 특성으로 4차 산업혁명의 핵심으로 주목받고 있다. 본 논문은 주요 선진국들의 인공지능 관련 추진동향과 인공지능의 국방적용을 위한 군사적 활용의 필요성, 그리고 지휘통제체계의 적용을 위한 고려요인들에 중점을 두었다. 지휘관의 의사결정을 보다 효과적으로 지원할 수 있도록 지능화된 지휘통제체계로 발전하는 데 기여할 수 있다고 생각한다.

SAR Recognition of Target Variants Using Channel Attention Network without Dimensionality Reduction (차원축소 없는 채널집중 네트워크를 이용한 SAR 변형표적 식별)

  • Park, Ji-Hoon;Choi, Yeo-Reum;Chae, Dae-Young;Lim, Ho
    • Journal of the Korea Institute of Military Science and Technology
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    • v.25 no.3
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    • pp.219-230
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    • 2022
  • In implementing a robust automatic target recognition(ATR) system with synthetic aperture radar(SAR) imagery, one of the most important issues is accurate classification of target variants, which are the same targets with different serial numbers, configurations and versions, etc. In this paper, a deep learning network with channel attention modules is proposed to cope with the recognition problem for target variants based on the previous research findings that the channel attention mechanism selectively emphasizes the useful features for target recognition. Different from other existing attention methods, this paper employs the channel attention modules without dimensionality reduction along the channel direction from which direct correspondence between feature map channels can be preserved and the features valuable for recognizing SAR target variants can be effectively derived. Experiments with the public benchmark dataset demonstrate that the proposed scheme is superior to the network with other existing channel attention modules.

Efficient Task-Resource Matchmaking Technique for Multiple/Heterogeneous Unmanned Combat Systems (다중/이종 무인전투체계를 위한 효율적 과업-자원 할당 기법)

  • Young-il Lee;Hee-young Kim;Wonik Park;Chonghui Kim
    • Journal of the Korea Institute of Military Science and Technology
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    • v.26 no.2
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    • pp.188-196
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    • 2023
  • In the future battlefield centered on the concept of mosaic warfare, the need for an unmanned combat system will increase to value human life. It is necessary for Multiple/Heterogeneous Unmanned Combat Systems to have suitable mission planning method in order to perform various mission. In this paper, we propose the MTSR model for mission planning of the unmanned combat system, and introduce a method of identifying a task by a combination of services using a request operator and a method of allocating resources to perform a task using the requested service. In order to verify the performance of the proposed task-resource matchmaking algorithm, simulation using occupation scenarios is performed and the results are analyzed.

A Dataset of Ground Vehicle Targets from Satellite SAR Images and Its Application to Detection and Instance Segmentation (위성 SAR 영상의 지상차량 표적 데이터 셋 및 탐지와 객체분할로의 적용)

  • Park, Ji-Hoon;Choi, Yeo-Reum;Chae, Dae-Young;Lim, Ho;Yoo, Ji Hee
    • Journal of the Korea Institute of Military Science and Technology
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    • v.25 no.1
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    • pp.30-44
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    • 2022
  • The advent of deep learning-based algorithms has facilitated researches on target detection from synthetic aperture radar(SAR) imagery. While most of them concentrate on detection tasks for ships with open SAR ship datasets and for aircraft from SAR scenes of airports, there is relatively scarce researches on the detection of SAR ground vehicle targets where several adverse factors such as high false alarm rates, low signal-to-clutter ratios, and multiple targets in close proximity are predicted to degrade the performances. In this paper, a dataset of ground vehicle targets acquired from TerraSAR-X(TSX) satellite SAR images is presented. Then, both detection and instance segmentation are simultaneously carried out on this dataset based on the deep learning-based Mask R-CNN. Finally, this paper shows the future research directions to further improve the performances of detecting the SAR ground vehicle targets.

Object Detection Accuracy Improvements of Mobility Equipments through Substitution Augmentation of Similar Objects (유사물체 치환증강을 통한 기동장비 물체 인식 성능 향상)

  • Heo, Jiseong;Park, Jihun
    • Journal of the Korea Institute of Military Science and Technology
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    • v.25 no.3
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    • pp.300-310
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    • 2022
  • A vast amount of labeled data is required for deep neural network training. A typical strategy to improve the performance of a neural network given a training data set is to use data augmentation technique. The goal of this work is to offer a novel image augmentation method for improving object detection accuracy. An object in an image is removed, and a similar object from the training data set is placed in its area. An in-painting algorithm fills the space that is eliminated but not filled by a similar object. Our technique shows at most 2.32 percent improvements on mAP in our testing on a military vehicle dataset using the YOLOv4 object detector.

An Empirical Study on Defense Future Technology in Artificial Intelligence (인공지능 분야 국방 미래기술에 관한 실증연구)

  • Ahn, Jin-Woo;Noh, Sang-Woo;Kim, Tae-Hwan;Yun, Il-Woong
    • Journal of the Korea Academia-Industrial cooperation Society
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    • v.21 no.5
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    • pp.409-416
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    • 2020
  • Artificial intelligence, which is in the spotlight as the core driving force of the 4th industrial revolution, is expanding its scope to various industrial fields such as smart factories and autonomous driving with the development of high-performance hardware, big data, data processing technology, learning methods and algorithms. In the field of defense, as the security environment has changed due to decreasing defense budget, reducing military service resources, and universalizing unmanned combat systems, advanced countries are also conducting technical and policy research to incorporate artificial intelligence into their work by including recognition systems, decision support, simplification of the work processes, and efficient resource utilization. For this reason, the importance of technology-driven planning and investigation is also increasing to discover and research potential defense future technologies. In this study, based on the research data that was collected to derive future defense technologies, we analyzed the characteristic evaluation indicators for future technologies in the field of artificial intelligence and conducted empirical studies. The study results confirmed that in the future technologies of the defense AI field, the applicability of the weapon system and the economic ripple effect will show a significant relationship with the prospect.

FAST Design for Large-Scale Satellite Image Processing (대용량 위성영상 처리를 위한 FAST 시스템 설계)

  • Lee, Youngrim;Park, Wanyong;Park, Hyunchun;Shin, Daesik
    • Journal of the Korea Institute of Military Science and Technology
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    • v.25 no.4
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    • pp.372-380
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    • 2022
  • This study proposes a distributed parallel processing system, called the Fast Analysis System for remote sensing daTa(FAST), for large-scale satellite image processing and analysis. FAST is a system that designs jobs in vertices and sequences, and distributes and processes them simultaneously. FAST manages data based on the Hadoop Distributed File System, controls entire jobs based on Apache Spark, and performs tasks in parallel in multiple slave nodes based on a docker container design. FAST enables the high-performance processing of progressively accumulated large-volume satellite images. Because the unit task is performed based on Docker, it is possible to reuse existing source codes for designing and implementing unit tasks. Additionally, the system is robust against software/hardware faults. To prove the capability of the proposed system, we performed an experiment to generate the original satellite images as ortho-images, which is a pre-processing step for all image analyses. In the experiment, when FAST was configured with eight slave nodes, it was found that the processing of a satellite image took less than 30 sec. Through these results, we proved the suitability and practical applicability of the FAST design.