• Title/Summary/Keyword: Arena Fragmentation Test

검색결과 2건 처리시간 0.017초

Arena 시험을 위한 영상처리 기반 탄두 파편 검출 기법 (A New Image Processing-Based Fragment Detection Approach for Arena Fragmentation Test)

  • 이혁재;정찬호;박용찬;박웅;손지홍
    • 한국군사과학기술학회지
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    • 제22권5호
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    • pp.599-606
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    • 2019
  • The Arena Fragmentation Test(AFT) is one of the important tasks for designing a high-explosive warhead. In order to measure the statistics of a warhead in the test, fragments of a warhead that penetrate steel plates are detected by using complex and expensive measuring equipment. In this paper, instead of using specific hardware to measure the statistics of a warhead, we propose to use an image processing based object detection algorithm to detect fragments in AFT. To this end, we use a hard-thresholding method with a brightness feature and apply a morphology filter to remove noise components. We also propose a simple yet effective temporal filtering method to detect only the first penetrating fragments. We show that the performance of the proposed method is comparable to that of a hardware system under the same experimental conditions. Furthermore, the proposed method can produce better results in terms of finding exact positions of fragments.

파편 탐지 성능 향상을 위한 딥러닝 초해상도화 효과 분석 (Analysis of the Effect of Deep-learning Super-resolution for Fragments Detection Performance Enhancement)

  • 이유석
    • 한국군사과학기술학회지
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    • 제26권3호
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    • pp.234-245
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    • 2023
  • The Arena Fragmentation Test(AFT) is designed to analyze warhead performance by measuring fragmentation data. In order to evaluate the results of the AFT, a set of AFT images are captured by high-speed cameras. To detect objects in the AFT image set, ResNet-50 based Faster R-CNN is used as a detection model. However, because of the low resolution of the AFT image set, a detection model has shown low performance. To enhance the performance of the detection model, Super-resolution(SR) methods are used to increase the AFT image set resolution. To this end, The Bicubic method and three SR models: ZSSR, EDSR, and SwinIR are used. The use of SR images results in an increase in the performance of the detection model. While the increase in the number of pixels representing a fragment flame in the AFT images improves the Recall performance of the detection model, the number of pixels representing noise also increases, leading to a slight decreases in Precision performance. Consequently, the F1 score is increased by up to 9 %, demonstrating the effectiveness of SR in enhancing the performance of the detection model.