• 제목/요약/키워드: Aerial application

검색결과 428건 처리시간 0.032초

재난 지역의 물체를 탐지하기 위한 소형 무인기 설계와 제작을 통한 공학 교육의 실천에 관한 연구 (A Study on the Practice of Engineering Education through the Design and Production of Drones for Detecting Objects in Disaster Area)

  • 강병주;이대희;장은영
    • 실천공학교육논문지
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    • 제9권1호
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    • pp.15-21
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    • 2017
  • 졸업 조건 만족을 위한 졸업 작품 제작과 제작된 작품의 공학 논문 체계로 서술해야 하는 졸업 논문 제출 규정에 따라 전공단위에서 이루어진 절차의 개요를 제시하고, 개선에 필요한 사항을 제안한다. 설계 내용은 재난 지역의 인원이나 물체를 탐지하기 위한 소형 무인기 구성에 관한 것이다. 적외선 센서와 GPS를 소형 무인기인 드론에 탑재하고, 블루투스 통신을 이용하여 드론을 조종한다. 조종되는 드론이 구조 대상물을 탐지하고, 드론에 탑재된 GPS를 이용하여 실시간으로 탐지한 대상물의 위치를 수신하는 대상물 탐지용 드론을 설계하고 제작한다. 실험결과로 3~4 m 범위의 구조 대상물 탐지가 가능했고, 위치값을 실시간으로 전송하는 것을 확인했으며, RF 통신을 이용하여 통신 거리를 증가시킬 계획이다.

지상기준점 선점 위치에 따른 DSM 높이 정확도 분석 (Quality Assessment of Digital Surface Model Vertical Position Accuracies by Ground Control Point Location)

  • 이종필
    • 지적과 국토정보
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    • 제51권1호
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    • pp.125-136
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    • 2021
  • 최근 초경량무인비행장치(UAV)의 활용과 영상처리 기술 발달로 인해 정사영상과 수치모형 등을 활용한 응용 분야가 다양해지고 있다. 특히 토지측량분야에서도 이러한 결과물을 활용하여 위험지역분석과 같은 공간정보 활용이 활발해지고 있다. 본 연구에서는 UAV 고해상도 영상을 활용하여 고저차가 심한 경사지에서 정사영상의 위치정확도와 수치표면모델의 수직위치 정확도를 분석하고자 하였다. 연구 결과 대상지역 전역에 고르게 분포한 지상기준점(GCP)인 경우 2차원 정사영상에서 평면위치 오차는 크지 않았다. DSM의 수직위치의 경우 GCP의 선점위치를 점 간 고도차를 약 10m, 20m, 30m, 40m로 구분하여 전체를 포괄하는 각 8점의 GCP와 검사점을 대상으로 분석한 결과 비행코스별 고르게 분포되고 GCP 점 간 높이차가 30m일 경우(RMSEZ=0.07m) 가장 높은 정확도를 보였다. 본 연구지역과 유사한 대상지역을 UAV를 활용하여 수치모형을 제작할 경우 GCP 위치선정과 수직위치 정확도 향상에 도움이 될 수 있기를 기대한다.

Bioimage Analyses Using Artificial Intelligence and Future Ecological Research and Education Prospects: A Case Study of the Cichlid Fishes from Lake Malawi Using Deep Learning

  • Joo, Deokjin;You, Jungmin;Won, Yong-Jin
    • Proceedings of the National Institute of Ecology of the Republic of Korea
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    • 제3권2호
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    • pp.67-72
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    • 2022
  • Ecological research relies on the interpretation of large amounts of visual data obtained from extensive wildlife surveys, but such large-scale image interpretation is costly and time-consuming. Using an artificial intelligence (AI) machine learning model, especially convolution neural networks (CNN), it is possible to streamline these manual tasks on image information and to protect wildlife and record and predict behavior. Ecological research using deep-learning-based object recognition technology includes various research purposes such as identifying, detecting, and identifying species of wild animals, and identification of the location of poachers in real-time. These advances in the application of AI technology can enable efficient management of endangered wildlife, animal detection in various environments, and real-time analysis of image information collected by unmanned aerial vehicles. Furthermore, the need for school education and social use on biodiversity and environmental issues using AI is raised. School education and citizen science related to ecological activities using AI technology can enhance environmental awareness, and strengthen more knowledge and problem-solving skills in science and research processes. Under these prospects, in this paper, we compare the results of our early 2013 study, which automatically identified African cichlid fish species using photographic data of them, with the results of reanalysis by CNN deep learning method. By using PyTorch and PyTorch Lightning frameworks, we achieve an accuracy of 82.54% and an F1-score of 0.77 with minimal programming and data preprocessing effort. This is a significant improvement over the previous our machine learning methods, which required heavy feature engineering costs and had 78% accuracy.

Efficient Forest Fire Detection using Rule-Based Multi-color Space and Correlation Coefficient for Application in Unmanned Aerial Vehicles

  • Anh, Nguyen Duc;Van Thanh, Pham;Lap, Doan Tu;Khai, Nguyen Tuan;Van An, Tran;Tan, Tran Duc;An, Nguyen Huu;Dinh, Dang Nhu
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권2호
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    • pp.381-404
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    • 2022
  • Forest fires inflict great losses of human lives and serious damages to ecological systems. Hence, numerous fire detection methods have been proposed, one of which is fire detection based on sensors. However, these methods reveal several limitations when applied in large spaces like forests such as high cost, high level of false alarm, limited battery capacity, and other problems. In this research, we propose a novel forest fire detection method based on image processing and correlation coefficient. Firstly, two fire detection conditions are applied in RGB color space to distinguish between fire pixels and the background. Secondly, the image is converted from RGB to YCbCr color space with two fire detection conditions being applied in this color space. Finally, the correlation coefficient is used to distinguish between fires and objects with fire-like colors. Our proposed algorithm is tested and evaluated on eleven fire and non-fire videos collected from the internet and achieves up to 95.87% and 97.89% of F-score and accuracy respectively in performance evaluation.

무인 라스트마일 배송 기술 수준 분석 (Unmanned Last Mile Delivery Technology Level Analysis)

  • 유우연;김은혜;김도현;양재경
    • 산업경영시스템학회지
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    • 제45권4호
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    • pp.225-232
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    • 2022
  • Recently, unmanned logistics delivery systems, such as UAV (Unmanned Aerial Vehicle, written as drone below) and autonomous robot delivery systems, have been implemented in many countries due to the rapid development of autonomous driving technology. The development of these new types of advanced unmanned logistics delivery systems is essential not only to become a leading logistics company but also to secure national competitiveness. In this paper, the application of the unmanned logistics delivery system was investigated in terms of market trends, overall technology level of last mile delivery drone and autonomous delivery robot. The direction of response to changes in the last mile delivery service market was checked through a comparison of the technological level between domestic companies that produce last mile devices and advanced foreign companies. As a result of this technology level analysis, the difference between domestic companies and advanced companies was shown using tables and figures to show their relative levels. The results of this analysis reflect the opinions of experts in the field of last-mile delivery technology. In addition, the technology level of unmanned logistics delivery systems for each country was analyzed based on the number of related technology patents. Lastly, insights for the technology level analysis of unmanned last mile delivery systems were proposed as a conclusion.

Application of advanced spectral-ratio radon background correction in the UAV-borne gamma-ray spectrometry

  • Jigen Xia;Baolin Song;Yi Gu;Zhiqiang Li;Jie Xu;Liangquan Ge;Qingxian Zhang;Guoqiang Zeng;Qiushi Liu;Xiaofeng Yang
    • Nuclear Engineering and Technology
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    • 제55권8호
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    • pp.2927-2934
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    • 2023
  • The influence of the atmospheric radon background on the airborne gamma spectrum can seriously affect researchers' judgement of ground radiation information. However, due to load and endurance, unmanned aerial vehicle (UAV)-borne gamma-ray spectrometry is difficulty installing upward-looking detectors to monitor atmospheric radon background. In this paper, an advanced spectral-ratio method was used to correct the atmospheric radon background for a UAV-borne gamma-ray spectrometry in Inner Mongolia, China. By correcting atmospheric radon background, the ratio of the average count rate of U window in the anomalous radon zone (S5) to that in other survey zone decreased from 1.91 to 1.03, and the average uranium content in S5 decreased from 4.65 mg/kg to 3.37 mg/kg. The results show that the advanced spectral-ratio method efficiently eliminated the influence of the atmospheric radon background on the UAV-borne gamma-ray spectrometry to accurately obtain ground radiation information in uranium exploration. It can also be used for uranium tailings monitoring, and environmental radiation background surveys.

Estimating vegetation index for outdoor free-range pig production using YOLO

  • Sang-Hyon Oh;Hee-Mun Park;Jin-Hyun Park
    • Journal of Animal Science and Technology
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    • 제65권3호
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    • pp.638-651
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    • 2023
  • The objective of this study was to quantitatively estimate the level of grazing area damage in outdoor free-range pig production using a Unmanned Aerial Vehicles (UAV) with an RGB image sensor. Ten corn field images were captured by a UAV over approximately two weeks, during which gestating sows were allowed to graze freely on the corn field measuring 100 × 50 m2. The images were corrected to a bird's-eye view, and then divided into 32 segments and sequentially inputted into the YOLOv4 detector to detect the corn images according to their condition. The 43 raw training images selected randomly out of 320 segmented images were flipped to create 86 images, and then these images were further augmented by rotating them in 5-degree increments to create a total of 6,192 images. The increased 6,192 images are further augmented by applying three random color transformations to each image, resulting in 24,768 datasets. The occupancy rate of corn in the field was estimated efficiently using You Only Look Once (YOLO). As of the first day of observation (day 2), it was evident that almost all the corn had disappeared by the ninth day. When grazing 20 sows in a 50 × 100 m2 cornfield (250 m2/sow), it appears that the animals should be rotated to other grazing areas to protect the cover crop after at least five days. In agricultural technology, most of the research using machine and deep learning is related to the detection of fruits and pests, and research on other application fields is needed. In addition, large-scale image data collected by experts in the field are required as training data to apply deep learning. If the data required for deep learning is insufficient, a large number of data augmentation is required.

연안지형 변화 탐지를 위한 UAV 활용기술 (UAV Application Technology for Detection of Coastal Topography)

  • 이근상;김영주;최연웅
    • 한국수자원학회:학술대회논문집
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    • 한국수자원학회 2022년도 학술발표회
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    • pp.445-445
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    • 2022
  • 최근 새만금 방조제 건설이 완료됨에 따라 주변 연안지역의 지형에 많은 변화가 감지되었다. 본 연구대상지는 격포해수욕장으로서 새만금 사업 준공 후 연안침식에 따른 모래 유실 등으로 인해 양빈사업 등이 검토되고 있는 상황이다. 본 연구에서는 연안지형 변화 탐지를 위한 UAV (Unmanned Aerial Vehicle) 활용기술을 제시하는 것으로서 총 3회에 걸쳐 UAV 영상을 촬영하였다. 영상촬영은 DJI Inspire 2 UAV를 활용하였으며 VRS(Virtual Reference Service) 측량성과와 연계하여 Pix4D Mapper SW를 통해 정사영상과 수치표면모델(DSM; Digital Surface Model)을 제작하였다. 먼저 2018. 6. 29 ~ 2018. 12. 10 사이의 지형변화 탐지를 수행한 결과 침식과 퇴적의 최대값은 각각 2.56m와 2.24m로 나타났으며 평균적으로는 0.01m의 퇴적이 발생하였다. 그리고 2018. 6. 29 ~ 2019. 6. 14 동안의 침식과 퇴적의 최대값은 각각 2.31m와 2.28m로 나타났으며 평균값은 0.02m의 침식이 발생하였다. 또한 2018. 12. 10 ~ 2019. 6. 14 사이에는 침식과 퇴적의 최대값이 각각 2.28m와 2.55m로 나타났으며 평균값은 0.03m의 침식이 발생하였다. 지형변화를 보다 상세히 모니터링하고자 퇴적과 침식구간을 나누어 분석을 수행한 결과, 2018. 6. 29 ~ 2018. 12. 10 사이에는 0.5m 이내의 침식과 퇴적구간 면적이 각각 13,324.4m2와 14,667.3m2로 퇴적구간의 면적이 1,342.9m2 만큼 높게 나타났으며, 2018. 12. 10 ~ 2019. 6. 14 사이에는 0.5m 이내의 침식과 퇴적구간 면적이 각각 16,176.6m2와 11,723.0m2로 침식구간의 면적이 4,453m2 만큼 높게 나타났다. 또한 2018. 12. 10 ~ 2019. 6. 14 사이에는 0.5m 이내의 침식과 퇴적구간 면적이 각각 16,821.6m2와 11,126.4m2로 침식구간의 면적이 5,695.2m2 만큼 크게 분석되었다. 이와 같이 UAV 영상 기반의 연안지형 모니터링을 수행할 경우 시계열 지형변화를 효과적으로 모니터링할 수 있으며, 이러한 업무는 새만금 방조제 건설에 따른 지형변화의 영향평가 등 다양한 연안업무에 활용될 수 있을 것이다.

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장예모의 영화 ≪영≫의 중국문화상징과 현대문화상징의 응용에 관한 내용 (On the Application of Traditional Chinese Cultural Symbols and Modern Literary Symbols in Zhang Yimou's Film)

  • 두안타오
    • 한국엔터테인먼트산업학회논문지
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    • 제13권5호
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    • pp.83-89
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    • 2019
  • 장예모 감독의 영화 ≪영≫은 중국전통문화상징을 다양하게 인용하여 시각적 효과를 높이는 반면, 스토리구성에 있어서는 대량의 현대문화상징의 내용을 인용하였다. 그러므로 그의 작품은 전통시각적인 느낌과 현대스토리내용을 모두 구비하였다. 의상과 장신구에서는 전통을 추구하였고 역사를 숭상하는데 충실하였으며 스토리구성에 있어서는 객관성 및 엄숙성을 담보하는 역사소설과 차별을 두었다고 할 수 있다. 가공문학해소로 역사를 새로 쓰고 더 나아가 역사에 대해 풀이함으로써 의도적으로 역사와 일정한 거리감 혹은 잘못된 관계를 유지하고 있다. 장예모 감독의≪영≫영화는 이러한 가공문학의 언사실천을 구사하였다. 영화는 역사를 시적으로 표현하는 한편 한 사람의 마음을 서사하였다. 예전의 영화제작과정에서 원작스토리에 충실하고자 했던 것에 반해 장예모의 ≪영≫은 (2018)제작 당시 원작 ≪삼국·정주≫의 작가 주수진의 동의하에 소설에 큰 변화를 주었다. 그 중에서도 제일 눈에 띄는 부분은 영화에서 원작의 설정을 과감하게 버리고 스토리의 시대배경을 허구적으로 구상해 냄으로써 가공문학을 완성시킨 것이다. 이는 결코 역사 문학의 언사실천은 아니다. 동시에 시각효과에 있어서 중국전통문화인 수묵 등 문화원소를 대량으로 인용하여 새로운 시각효과와 문화체험을 안겨주었다.

Utilization of UAV Remote Sensing in Small-scale Field Experiment : Case Study in Evaluation of Plat-based LAI for Sweetcorn Production

  • Hyunjin Jung;Rongling Ye;Yang Yi;Naoyuki Hashimoto;Shuhei Yamamoto;Koki Homma
    • 한국작물학회:학술대회논문집
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    • 한국작물학회 2022년도 추계학술대회
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    • pp.75-75
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    • 2022
  • Traditional agriculture mostly focused on activity in the field, but current agriculture faces problems such as reduction of agricultural inputs, labor shortage and so on. Accordingly, traditional agricultural experiments generally considered the simple treatment effects, but current agricultural experiments need to consider the several and complicate treatment effects. To analyze such several and complicate treatment effects, data collection has the first priority. Remote sensing is a quite effective tool to collect information in agriculture, and recent easier availability of UAVs (Unmanned Aerial Vehicles) enhances the effectiveness. LAI (Leaf Area Index) is one of the most important information for evaluating the condition of crop growth. In this study, we utilized UAV with multispectral camera to evaluate plant-based LAI of sweetcorn in a small-scale field experiment and discussed the feasibility of a new experimental design to analyze the several and complicate treatment effects. The plant-based SR measured by UAV showed the highest correlation coefficient with LAI measured by a canopy analyzer in 2018 and 2019. Application of linear mix model showed that plant-based SR data had higher detection power due to its huge number of data although SR was inferior to evaluate LAI than the canopy analyzer. The distribution of plant-based data also statistically revealed the border effect in treatment plots in the traditional experimental design. These results suggest that remote sensing with UAVs has the advantage even in a small-scale experimental plot and has a possibility to provide a new experimental design if combined with various analytical applications such as plant size, shape, and color.

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