• 제목/요약/키워드: AI Space

검색결과 198건 처리시간 0.025초

Development of Dataset Items for Commercial Space Design Applying AI

  • Jung Hwa SEO;Segeun CHUN;Ki-Pyeong, KIM
    • 한국인공지능학회지
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    • 제11권1호
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    • pp.25-29
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    • 2023
  • In this paper, the purpose is to create a standard of AI training dataset type for commercial space design. As the market size of the field of space design continues to increase and the time spent increases indoors after COVID-19, interest in space is expanding throughout society. In addition, more and more consumers are getting used to the digital environment. Therefore, If you identify trends and preemptively propose the atmosphere and specifications that customers require quickly and easily, you can increase customer trust and conduct effective sales. As for the data set type, commercial districts were divided into a total of 8 categories, and images that could be processed were derived by refining 4,009,30MB JPG format images collected through web crawling. Then, by performing bounding and labeling operations, we developed a 'Dataset for AI Training' of 3,356 commercial space image data in CSV format with a size of 2.08MB. Through this study, elements of spatial images such as place type, space classification, and furniture can be extracted and used when developing AI algorithms, and it is expected that images requested by clients can be easily and quickly collected through spatial image input information.

Can AI-generated EUV images be used for determining DEMs of solar corona?

  • 박은수;이진이;문용재;이경선;이하림;조일현;임다예
    • 천문학회보
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    • 제46권1호
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    • pp.60.2-60.2
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    • 2021
  • In this study, we determinate the differential emission measure(DEM) of solar corona using three SDO/AIA EUV channel images and three AI-generated ones. To generate the AI-generated images, we apply a deep learning model based on multi-layer perceptrons by assuming that all pixels in solar EUV images are independent of one another. For the input data, we use three SDO/AIA EUV channels (171, 193, and 211). For the target data, we use other three SDO/AIA EUV channels (94, 131, and 335). We train the model using 358 pairs of SDO/AIA EUV images at every 00:00 UT in 2011. We use SDO/AIA pixels within 1.2 solar radii to consider not only the solar disk but also above the limb. We apply our model to several brightening patches and loops in SDO/AIA images for the determination of DEMs. Our main results from this study are as follows. First, our model successfully generates three solar EUV channel images using the other three channel images. Second, the noises in the AI-generated EUV channel images are greatly reduced compared to the original target ones. Third, the estimated DEMs using three SDO/AIA images and three AI-generated ones are similar to those using three SDO/AIA images and three stacked (50 frames) ones. These results imply that our deep learning model is able to analyze temperature response functions of SDO/AIA channel images, showing a sufficient possibility that AI-generated data can be used for multi-wavelength studies of various scientific fields. SDO: Solar Dynamics Observatory AIA: Atmospheric Imaging Assembly EUV: Extreme Ultra Violet DEM: Diffrential Emission Measure

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Application of Deep Learning to Solar Data: 3. Generation of Solar images from Galileo sunspot drawings

  • Lee, Harim;Moon, Yong-Jae;Park, Eunsu;Jeong, Hyunjin;Kim, Taeyoung;Shin, Gyungin
    • 천문학회보
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    • 제44권1호
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    • pp.81.2-81.2
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    • 2019
  • We develop an image-to-image translation model, which is a popular deep learning method based on conditional Generative Adversarial Networks (cGANs), to generate solar magnetograms and EUV images from sunspot drawings. For this, we train the model using pairs of sunspot drawings from Mount Wilson Observatory (MWO) and their corresponding SDO/HMI magnetograms and SDO/AIA EUV images (512 by 512) from January 2012 to September 2014. We test the model by comparing pairs of actual SDO images (magnetogram and EUV images) and the corresponding AI-generated ones from October to December in 2014. Our results show that bipolar structures and coronal loop structures of AI-generated images are consistent with those of the original ones. We find that their unsigned magnetic fluxes well correlate with those of the original ones with a good correlation coefficient of 0.86. We also obtain pixel-to-pixel correlations EUV images and AI-generated ones. The average correlations of 92 test samples for several SDO lines are very good: 0.88 for AIA 211, 0.87 for AIA 1600 and 0.93 for AIA 1700. These facts imply that AI-generated EUV images quite similar to AIA ones. Applying this model to the Galileo sunspot drawings in 1612, we generate HMI-like magnetograms and AIA-like EUV images of the sunspots. This application will be used to generate solar images using historical sunspot drawings.

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인공지능 공간상의 다중객체 구분을 위한 컬러 패턴 인식과 추적 (Color Pattern Recognition and Tracking for Multi-Object Tracking in Artificial Intelligence Space)

  • 진태석
    • 한국산업융합학회 논문집
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    • 제27권2_2호
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    • pp.319-324
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    • 2024
  • In this paper, the Artificial Intelligence Space(AI-Space) for human-robot interface is presented, which can enable human-computer interfacing, networked camera conferencing, industrial monitoring, service and training applications. We present a method for representing, tracking, and objects(human, robot, chair) following by fusing distributed multiple vision systems in AI-Space. The article presents the integration of color distributions into particle filtering. Particle filters provide a robust tracking framework under ambiguous conditions. We propose to track the moving objects(human, robot, chair) by generating hypotheses not in the image plane but on the top-view reconstruction of the scene.

Toward accurate synchronic magnetic field maps using solar frontside and AI-generated farside data

  • Jeong, Hyun-Jin;Moon, Yong-Jae;Park, Eunsu
    • 천문학회보
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    • 제46권1호
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    • pp.41.3-42
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    • 2021
  • Conventional global magnetic field maps, such as daily updated synoptic maps, have been constructed by merging together a series of observations from the Earth's viewing direction taken over a 27-day solar rotation period to represent the full surface of the Sun. It has limitations to predict real-time farside magnetic fields, especially for rapid changes in magnetic fields by flux emergence or disappearance. Here, we construct accurate synchronic magnetic field maps using frontside and AI-generated farside data. To generate the farside data, we train and evaluate our deep learning model with frontside SDO observations. We use an improved version of Pix2PixHD with a new objective function and a new configuration of the model input data. We compute correlation coefficients between real magnetograms and AI-generated ones for test data sets. Then we demonstrate that our model better generate magnetic field distributions than before. We compare AI-generated farside data with those predicted by the magnetic flux transport model. Finally, we assimilate our AI-generated farside magnetograms into the flux transport model and show several successive global magnetic field data from our new methodology.

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Voice Command-based Prediction and Follow of Human Path of Mobile Robots in AI Space

  • Tae-Seok Jin
    • 한국산업융합학회 논문집
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    • 제26권2_1호
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    • pp.225-230
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    • 2023
  • This research addresses sound command based human tracking problems for autonomous cleaning mobile robot in a networked AI space. To solve the problem, the difference among the traveling times of the sound command to each of three microphones has been used to calculate the distance and orientation of the sound from the cleaning mobile robot, which carries the microphone array. The cross-correlation between two signals has been applied for detecting the time difference between two signals, which provides reliable and precise value of the time difference compared to the conventional methods. To generate the tracking direction to the sound command, fuzzy rules are applied and the results are used to control the cleaning mobile robot in a real-time. Finally the experiment results show that the proposed algorithm works well, even though the mobile robot knows little about the environment.

AI시대, 메타버스를 아우르는 새로운 공감개념 필요성에 대한 담론 (Necessity of Establishing New Concept of Empathy Across Metaverse for AI Era)

  • 이현정
    • 한국게임학회 논문지
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    • 제21권3호
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    • pp.79-90
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    • 2021
  • 현재 10대들을 중심으로 메타버스는 소통과 경험의 공간이 되고 있다. AI기술의 발달은 메타버스 공간에서의 체험을 다양화함으로써, 가상세계에서의 경험이 현실의 자아에까지도 영향을 줄 수 있다. 이에 본 연구에서는 AI시대, 메타버스를 아우르는 새로운 공감개념 정립의 필요성을 살펴보고자 하였다. 본 연구에서는 공감관련 문헌연구를 통해 공감의 개념이 시대가 추구하는 바에 따라 변화해왔음을 확인하며, 공감의 개념이란 필요에 의해 새롭게 정의될 수 있다는 근거를 얻었다. 또한 최근 국내외 연구 동향분석을 통해 현재 공감은 대체로 올바른 사회성에 대한 하나의 척도로써 바라보는 관점을 취하고 있음을 확인하였다. 마지막으로 연구내용을 종합하며, 올바른 사회성 함양을 위한 해결책으로써 의미를 가진 공감이 메타버스 속에서 일어나는 사회적 관계를 아우르는 시각아래 새롭게 정의될 필요성을 강조하였다.

리테일 마케팅 고도화를 위한 CCTV 영상 데이터 기반의 AI 융합 응용 서비스 활용 모델 연구 (A Study on the Application Model of AI Convergence Services Using CCTV Video for the Advancement of Retail Marketing)

  • 김종율;김혁중
    • 디지털융복합연구
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    • 제19권5호
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    • pp.197-205
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    • 2021
  • 최근 리테일 산업계에서는 COVID-19 등의 다양한 외부 환경 위협으로부터의 대응과 AI 기술을 활용한 경쟁력을 갖추기 위한 정보기술 융합 및 활용 요구가 증가하고 있으나 리테일 산업에서의 데이터를 활용하기 위한 연구와 응용 서비스의 활용사례가 매우 부족하다. 본 연구는 CCTV 영상 데이터 기반의 AI 활용 응용 서비스 활용 사례연구로 리테일 공간에서의 CCTV 영상 데이터 수집, 객체 탐지 및 추적 AI 모델 활용, 실시간 추적된 객체와 트래킹 데이터를 저장하기 위한 시계열 데이터베이스 활용, 시계열 데이터를 활용한 모니터링, 리테일 공간의 혼잡도와 관심도를 분석하기 위한 히트맵, 리테일 공간에서의 실시간 상황 모니터링, COVID-19와 같은 사회적 위협으로부터의 접촉자 분석과 추적을 위한 사회적 거리 두기 현황, 비인가자의 보안 구역의 접근 모니터링 애플리케이션을 설계하고 이를 실제 구현하여 리테일 공간에서의 CCTV 영상 데이터를 활용한 애플리케이션 설계를 통해 CCTV 영상 데이터 기반의 AI 융합 응용 서비스 활용 모델을 제시하였으며, 실제 구현을 통해 설계된 활용 모델을 검증하였다.

Investigation of AI-based dual-model strategy for monitoring cyanobacterial blooms from Sentinel-3 in Korean inland waters

  • Hoang Hai Nguyen;Dalgeun Lee;Sunghwa Choi;Daeyun Shin
    • 한국수자원학회:학술대회논문집
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    • 한국수자원학회 2023년도 학술발표회
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    • pp.168-168
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    • 2023
  • The frequent occurrence of cyanobacterial harmful algal blooms (CHABs) in inland waters under climate change seriously damages the ecosystem and human health and is becoming a big problem in South Korea. Satellite remote sensing is suggested for effective monitoring CHABs at a larger scale of water bodies since the traditional method based on sparse in-situ networks is limited in space. However, utilizing a standalone variable of satellite reflectances in common CHABs dual-models, which relies on both chlorophyll-a (Chl-a) and phycocyanin or cyanobacteria cells (Cyano-cell), is not fully beneficial because their seasonal variation is highly impacted by surrounding meteorological and bio-environmental factors. Along with the development of Artificial Intelligence (AI), monitoring CHABs from space with analyzing the effects of environmental factors is accessible. This study aimed to investigate the potential application of AI in the dual-model strategy (Chl-a and Cyano-cell are output parameters) for monitoring seasonal dynamics of CHABs from satellites over Korean inland waters. The Sentinel-3 satellite was selected in this study due to the variety of spectral bands and its unique band (620 nm), which is sensitive to cyanobacteria. Via the AI-based feature selection, we analyzed the relationships between two output parameters and major parameters (satellite water-leaving reflectances at different spectral bands), together with auxiliary (meteorological and bio-environmental) parameters, to select the most important ones. Several AI models were then employed for modelling Chl-a and Cyano-cell concentration from those selected important parameters. Performance evaluation of the AI models and their comparison to traditional semi-analytical models were conducted to demonstrate whether AI models (using water-leaving reflectances and environmental variables) outperform traditional models (using water-leaving reflectances only) and which AI models are superior for monitoring CHABs from Sentinel-3 satellite over a Korean inland water body.

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