• 제목/요약/키워드: Image Crop

검색결과 217건 처리시간 0.022초

딥러닝 기반 옥수수 포장의 잡초 면적 평가 (Deep Learning Approaches for Accurate Weed Area Assessment in Maize Fields)

  • 박혁진;권동원;상완규;반호영;장성율;백재경;이윤호;임우진;서명철;조정일
    • 한국농림기상학회지
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    • 제25권1호
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    • pp.17-27
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    • 2023
  • 포장에서 잡초의 발생은 농작물의 생산량을 크게 떨어트리는 원인 중 하나이고 SSWM을 기반으로 잡초를 변량 방제하기 위해서 잡초의 발생 위치, 밀도 그리고 이를 정량화하는 것은 필수적이다. 본 연구에서는 2020년의 국립식량과학원에서 잡초 피해를 입은 옥수수 포장의 영상데이터를 무인항공기를 활용해서 수집하였고 이를 배경과 옥수수로 분리하여 딥러닝 기반 영상 분할 모델 제작을 위한 학습데이터를 획득하였다. DeepLabV3+, U-Net, Linknet, FPN의 4가지의 영상 분할 네트워크들의 옥수수의 검출 정확도를 평가하기 위해 픽셀정확도, mIOU, 정밀도, 재현성의 지표를 활용해서 정확도를 검증하였다. 검증 결과 DeepLabV3+ 모델이 0.76으로 가장 높은 mIOU를 나타냈고, 해당 모델과 식물체의 녹색 영역과 배경을 분리하는 지수인 ExGR을 활용해서 잡초의 면적을 정량화, 시각화하였다. 이러한 연구의 결과는 무인항공기로 촬영된 영상을 활용해서 넓은 면적의 옥수수 포장에서 빠르게 잡초의 위치와 밀도를 특정하고 정량화하는 것으로 잡초의 밀도에 따른 제초제의 변량 방제를 위한 의사결정에 도움이 될 것으로 기대한다.

ANALYSIS OF WATER STRESS OF GREENHOUSE PLANTS USING THERMAL IMAGING

  • K. H. Ryu;Kim, G. Y.;H. Y. Chae
    • 한국농업기계학회:학술대회논문집
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    • 한국농업기계학회 2000년도 THE THIRD INTERNATIONAL CONFERENCE ON AGRICULTURAL MACHINERY ENGINEERING. V.III
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    • pp.593-599
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    • 2000
  • Accurate quantification of plant physiological properties is often necessary for optimal control of an automated greenhouse production system. Conventional crop growth monitoring systems are usually burdensome, inaccurate, and harmful to crops. A thermal image analysis system was used to accomplish rapid and accurate measurements of physiological-property changes of water-stressed crops. Thermal images were obtained from several species of plants that were placed in a growth chamber. Analyzing the images provided the pattern of temperature changes in a leaf and the amount of differences in the temperature of stressed plants and non-stressed plants.

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Mapping Within-field Variability Using Airborne Imaging Systems: A Case Study from Missouri Precision Agriculture

  • Hong, S.Y.;Sudduth, K.A.;Kitchen, N.R.;Palm, H.L.;Wiebold, W.J.
    • 대한원격탐사학회:학술대회논문집
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    • 대한원격탐사학회 2003년도 Proceedings of ACRS 2003 ISRS
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    • pp.1049-1051
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    • 2003
  • This study investigated the use of airborne image data to provide estimates of within -field variability in soil properties and crop growth as an alternative to extensive field data collection. Hyperspectral and multispectral images were acquired in 2000, 2001, and 2002 for central Missouri experimental fields. Data were converted to reflectance using chemically-treated reference tarps with known reflectance levels. Geometric distortion of the hyperspectral pushbroom sensor images was corrected with a rubber sheeting transformation. Statistical analyses were used to relate image data to field-measured soil properties and crop characteristics. Results showed that this approach has potential; however, it is important to address a number of implementation issues to insure quality data and accurate interpretations.

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Detection of Rice Disease Using Bayes' Classifier and Minimum Distance Classifier

  • Sharma, Vikas;Mir, Aftab Ahmad;Sarwr, Abid
    • Journal of Multimedia Information System
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    • 제7권1호
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    • pp.17-24
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    • 2020
  • Rice (Oryza Sativa) is an important source of food for the people of our country, even though of world also .It is also considered as the staple food of our country and we know agriculture is the main source country's economy, hence the crop of Rice plays a vital role over it. For increasing the growth and production of rice crop, ground-breaking technique for the detection of any type of disease occurring in rice can be detected and categorization of rice crop diseases has been proposed in this paper. In this research paper, we perform comparison between two classifiers namely MDC and Bayes' classifiers Survey over different digital image processing techniques has been done for the detection of disease in rice crops. The proposed technique involves the samples of 200 digital images of diseased rice leaf images of five different types of rice crop diseases. The overall accuracy that we achieved by using Bayes' Classifiers and MDC are 69.358 percent and 81.06 percent respectively.

Study on the Size Reduction Characteristics of Miscanthus sacchariflorus via Image Processing

  • Lee, Hyoung-Woo;Lee, Jae-Won;Gong, Sung-Ho;Song, Yeon-Sang
    • Journal of the Korean Wood Science and Technology
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    • 제46권4호
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    • pp.309-314
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    • 2018
  • Size reduction is an important pre-processing operation for utilizing biomass as a sustainable resource in industrial-scale energy production and as a raw material for other industries. This work investigates the size reduction characteristics of air-dried Miscanthus sacchariflorus Goedae-Uksae 1 (Amur silver grass) via image processing and identifies the morphological characteristics of comminuted and screened M. sacchariflorus. At chopping lengths of 18, 40, 80, and 160 mm, 81%, 77%, 78%, and 76% of the particles, respectively, passed through a 4-mm sieve. Even a knife mill with a very small screen aperture (>1 mm) admitted over 10% of the particles. The average circularity and aspect ratio of the particles were <0.30 and >10, respectively. These results confirm that in all preparation modes, most M. sacchariflorus particles were needle-like in shape, irrespective of the type of preparation.

멀티스펙트랄 이미지 센서를 이용한 전자 지도 기반 변량 질소 살포 (Map-based Variable Rate Application of Nitrogen Using a Multi-Spectral Image Sensor)

  • 노현권
    • Journal of Biosystems Engineering
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    • 제35권2호
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    • pp.132-137
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    • 2010
  • Site-specific N application for corn is one of the precision crop management. To implement the site-specific N application, various nitrogen stress sensing methods, including aerial image, tissue analysis, soil sampling analysis, and SPAD meter readings, have been used. Use of side-dressing, an efficient nitrogen application method than a uniform application in either late fall or early spring, relies mainly on the capability of nitrogen deficiency detection. This paper presents map-based variable rate nitrogen application based using a multi-spectral corn nitrogen deficiency(CND) sensor. This sensor assess the nitrogen stress by means of the estimated SPAD reading calculated from the corn leave reflectance. The estimated SPAD value from the CND sensor system and location information form DGPS of each field block was combined into the field map using a ArcView program. Then this map was converted into a raster file for a map-based variable rate application software. The relative SPAD (RSPAD = SPAD over reference SPAD) was investigated 2 weeks after the treatments. The results showed that the map-based variable rate application system was feasible.

Development of a real-time crop recognition system using a stereo camera

  • Baek, Seung-Min;Kim, Wan-Soo;Kim, Yong-Joo;Chung, Sun-Ok;Nam, Kyu-Chul;Lee, Dae Hyun
    • 농업과학연구
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    • 제47권2호
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    • pp.315-326
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    • 2020
  • In this study, a real-time crop recognition system was developed for an unmanned farm machine for upland farming. The crop recognition system was developed based on a stereo camera, and an image processing framework was proposed that consists of disparity matching, localization of crop area, and estimation of crop height with coordinate transformations. The performance was evaluated by attaching the crop recognition system to a tractor for five representative crops (cabbage, potato, sesame, radish, and soybean). The test condition was set at 3 levels of distances to the crop (100, 150, and 200 cm) and 5 levels of camera height (42, 44, 46, 48, and 50 cm). The mean relative error (MRE) was used to compare the height between the measured and estimated results. As a result, the MRE of Chinese cabbage was the lowest at 1.70%, and the MRE of soybean was the highest at 4.97%. It is considered that the MRE of the crop which has more similar distribution lower. the results showed that all crop height was estimated with less than 5% MRE. The developed crop recognition system can be applied to various agricultural machinery which enhances the accuracy of crop detection and its performance in various illumination conditions.

드론 영상으로부터 월동 작물 분류를 위한 의미론적 분할 딥러닝 모델 학습 최적 공간 해상도와 영상 크기 선정 (The Optimal GSD and Image Size for Deep Learning Semantic Segmentation Training of Drone Images of Winter Vegetables)

  • 정동기;이임평
    • 대한원격탐사학회지
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    • 제37권6_1호
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    • pp.1573-1587
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    • 2021
  • 드론 영상은 위성이나 항공 영상보다 공간 해상도가 수배 혹은 수십 배가 높은 초고해상도 영상이다. 따라서 드론 영상 기반의 원격탐사는 영상에서 추출하고자 하는 객체의 수준과 처리해야 하는 데이터의 양이 전통적인 원격탐사와 다른 양상을 보인다. 또한, 적용되는 딥러닝(deep learning) 모델의 특성에 따라 모델 훈련에 사용되는 최적의 데이터의 축척과 크기가 달라질 수밖에 없다. 하지만 대부분 연구가 찾고자 하는 객체의 크기, 축척을 반영하는 영상의 공간 해상도, 영상의 크기 등을 고려하지 않고, 관성적으로 적용하고자 하는 모델에서 기존에 사용했던 데이터 명세를 그대로 적용하는 경우가 많다. 본 연구에서는 드론 영상의 공간 해상도, 영상 크기가 6가지 월동채소의 의미론적 분할(semantic segmentation) 딥러닝 모델의 정확도와 훈련 시간에 미치는 영향을 실험 통해 정량적으로 분석하였다. 실험 결과 6가지 월동채소 분할의 평균 정확도는 공간 해상도가 증가함에 따라 증가하지만, 개별 작물에 따라 증가율과 수렴하는 구간이 다르고, 동일 해상도에서 영상의 크기에 따라 정확도와 시간에 큰 차이가 있음을 발견하였다. 특히 각 작물에 따라 최적의 해상도와 영상의 크기가 다름을 알 수 있었다. 연구성과는 향후 드론 영상 데이터를 이용한 월동채소 분할 모델을 개발할 때, 드론 영상의 촬영과 학습 데이터의 제작 효율성 확보를 위한 자료로 활용할 수 있을 것이다.

열영상을 이용한 작물 생장 감시 -영양분 스트레스 분석- (Plant Growth Monitoring Using Thermography -Analysis of nutrient stress-)

  • 류관희;김기영;채희연
    • Journal of Biosystems Engineering
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    • 제25권4호
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    • pp.293-300
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    • 2000
  • Automated greenhouse production system often require crop growth monitoring involving accurate quantification of plant physiological properties. Conventional methods are usually burdensome, inaccurate, and harmful to crops. A thermal image analysis system can accomplish rapid and accurate measurements of physiological-property changes of stressed crops. In this research a thermal imaging system was used to measure the leaf-temperature changes of several crops according to nutrient stresses. Thermal images were obtained from lettuce, cucumber, and pepper plants. Plants were placed in growth chamber to provide relatively constant growth environment. Results showed that there were significant differences in the temperature of stressed plants and non-stressed plants. In a case of the both N deficiency and excess, the leaf temperatures of cucumber were $2^{\circ}C$ lower than controlled temperature. The leaf temperature of cucumber was $2^{\circ}C$ lower than controlled temperature only when it was under N excess stress. For the potassium deficiency or excess stress, the leaf temperaures of cucumber and hot pepper were $2^{\circ}C$ lower than controls, respectively. The phosphorous deficiency stress dropped the leaf temperatures of cucumber and hot pepper $2^{\circ}C$ and $1.5^{\circ}C$ below than controls. However, the leaf temperature of lettuce did not change. It was possible to detect the changes in leaf temperature by infrared thermography when subjected to nutrition stress. Since the changes in leaf temperatures were different each other for plants and kinds of stresses, however, it is necessary to add a nutrient measurement system to a plant-growth monitoring system using thermography.

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