• Title/Summary/Keyword: 스마트 러닝 사용

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Development of deep learning base trajectory classification technology for multilog platform (다중로그 플랫폼을 위한 딥러닝 기반 경로 분류 기술 개발)

  • Shin, Won-Jae;Kwon, Eunjung;Park, Hyunho;Jung, Eui-Suk;Byon, Sungwon;Jang, Dong-Man;Lee, Yong-Tae
    • Proceedings of the Korean Society of Broadcast Engineers Conference
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    • 2019.11a
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    • pp.71-72
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    • 2019
  • 최근 공공안전 분야에서는 국민의 위험상황을 분석하여 선제적으로 예측을 하여 국민의 안전을 보장하기 위한 요구사항이 대두대고 있다. 또한 스마트폰 및 스마트워치와 같은 고성능 모바일 단말 기기들의 대중화로 인해 해당 기기들에 부착된 다양한 센서 데이터들을 융복합하여 분석할 경우, 수집한 센서 데이터의 잠재적 가치를 안전보장 측면에서 사용할 수 있는 장점이 있다. 본 논문에서는 대인, 대물, 장소에 해당하는 로그 데이터들을 융복합 분석하여 보호대상자의 안전을 지원하는 다중로그 플랫폼 기반 이동경로 분석 기법을 제안한다. 다중로그 플랫폼에서 수집하는 보호대상자의 이동 경로 궤적을 활용하여 과거에 축적된 이동경로 패턴과 비교를 통해 현재 경로가 평소에 이용하던 경로와의 유사도를 추천하게 된다. 해당 이동 경로 분석 시스템은 위치기반 멀티모달 센서 데이터를 융복합 하여 보호대상자의 안전을 보장하는데 기여 할 것으로 예상된다.

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Alzheimer progression classification using fMRI data (fMRI 데이터를 이용한 알츠하이머 진행상태 분류)

  • Ju Hyeon-Noh;Hee-Deok Yang
    • Smart Media Journal
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    • v.13 no.4
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    • pp.86-93
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    • 2024
  • The development of functional magnetic resonance imaging (fMRI) has significantly contributed to mapping brain functions and understanding brain networks during rest. This paper proposes a CNN-LSTM-based classification model to classify the progression stages of Alzheimer's disease. Firstly, four preprocessing steps are performed to remove noise from the fMRI data before feature extraction. Secondly, the U-Net architecture is utilized to extract spatial features once preprocessing is completed. Thirdly, the extracted spatial features undergo LSTM processing to extract temporal features, ultimately leading to classification. Experiments were conducted by adjusting the temporal dimension of the data. Using 5-fold cross-validation, an average accuracy of 96.4% was achieved, indicating that the proposed method has high potential for identifying the progression of Alzheimer's disease by analyzing fMRI data.

Multi-Tasking U-net Based Paprika Disease Diagnosis (Multi-Tasking U-net 기반 파프리카 병해충 진단)

  • Kim, Seo Jeong;Kim, Hyong Suk
    • Smart Media Journal
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    • v.9 no.1
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    • pp.16-22
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    • 2020
  • In this study, a neural network method performing both Detection and Classification of diseases and insects in paprika is proposed with Multi-Tasking U-net. Paprika on farms does not have a wide variety of diseases in this study, only two classes such as powdery mildew and mite, which occur relatively frequently are made as the targets. Aiming to this, a U-net is used as a backbone network, and the last layers of the encoder and the decoder of the U-net are utilized for classification and segmentation, respectively. As the result, the encoder of the U-net is shared for both of detection and classification. The training data are composed of 680 normal leaves, 450 mite-damaged leaves, and 370 powdery mildews. The test data are 130 normal leaves, 100 mite-damaged leaves, and 90 powdery mildews. Its test results shows 89% of recognition accuracy.

A Morpheme Analyzer based on Transformer using Morpheme Tokens and User Dictionary (사용자 사전과 형태소 토큰을 사용한 트랜스포머 기반 형태소 분석기)

  • DongHyun Kim;Do-Guk Kim;ChulHui Kim;MyungSun Shin;Young-Duk Seo
    • Smart Media Journal
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    • v.12 no.9
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    • pp.19-27
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    • 2023
  • Since morphemes are the smallest unit of meaning in Korean, it is necessary to develop an accurate morphemes analyzer to improve the performance of the Korean language model. However, most existing analyzers present morpheme analysis results by learning word unit tokens as input values. However, since Korean words are consist of postpositions and affixes that are attached to the root, even if they have the same root, the meaning tends to change due to the postpositions or affixes. Therefore, learning morphemes using word unit tokens can lead to misclassification of postposition or affixes. In this paper, we use morpheme-level tokens to grasp the inherent meaning in Korean sentences and propose a morpheme analyzer based on a sequence generation method using Transformer. In addition, a user dictionary is constructed based on corpus data to solve the out - of-vocabulary problem. During the experiment, the morpheme and morpheme tags printed by each morpheme analyzer were compared with the correct answer data, and the experiment proved that the morpheme analyzer presented in this paper performed better than the existing morpheme analyzer.

Improving prediction performance of network traffic using dense sampling technique (밀집 샘플링 기법을 이용한 네트워크 트래픽 예측 성능 향상)

  • Jin-Seon Lee;Il-Seok Oh
    • Smart Media Journal
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    • v.13 no.6
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    • pp.24-34
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    • 2024
  • If the future can be predicted from network traffic data, which is a time series, it can achieve effects such as efficient resource allocation, prevention of malicious attacks, and energy saving. Many models based on statistical and deep learning techniques have been proposed, and most of these studies have focused on improving model structures and learning algorithms. Another approach to improving the prediction performance of the model is to obtain a good-quality data. With the aim of obtaining a good-quality data, this paper applies a dense sampling technique that augments time series data to the application of network traffic prediction and analyzes the performance improvement. As a dataset, UNSW-NB15, which is widely used for network traffic analysis, is used. Performance is analyzed using RMSE, MAE, and MAPE. To increase the objectivity of performance measurement, experiment is performed independently 10 times and the performance of existing sparse sampling and dense sampling is compared as a box plot. As a result of comparing the performance by changing the window size and the horizon factor, dense sampling consistently showed a better performance.

Automatic Text Summarization based on Selective Copy mechanism against for Addressing OOV (미등록 어휘에 대한 선택적 복사를 적용한 문서 자동요약)

  • Lee, Tae-Seok;Seon, Choong-Nyoung;Jung, Youngim;Kang, Seung-Shik
    • Smart Media Journal
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    • v.8 no.2
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    • pp.58-65
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    • 2019
  • Automatic text summarization is a process of shortening a text document by either extraction or abstraction. The abstraction approach inspired by deep learning methods scaling to a large amount of document is applied in recent work. Abstractive text summarization involves utilizing pre-generated word embedding information. Low-frequent but salient words such as terminologies are seldom included to dictionaries, that are so called, out-of-vocabulary(OOV) problems. OOV deteriorates the performance of Encoder-Decoder model in neural network. In order to address OOV words in abstractive text summarization, we propose a copy mechanism to facilitate copying new words in the target document and generating summary sentences. Different from the previous studies, the proposed approach combines accurate pointing information and selective copy mechanism based on bidirectional RNN and bidirectional LSTM. In addition, neural network gate model to estimate the generation probability and the loss function to optimize the entire abstraction model has been applied. The dataset has been constructed from the collection of abstractions and titles of journal articles. Experimental results demonstrate that both ROUGE-1 (based on word recall) and ROUGE-L (employed longest common subsequence) of the proposed Encoding-Decoding model have been improved to 47.01 and 29.55, respectively.

Comparison of Machine Learning-Based Greenhouse VPD Prediction Models (머신러닝 기반의 온실 VPD 예측 모델 비교)

  • Jang Kyeong Min;Lee Myeong Bae;Lim Jong Hyun;Oh Han Byeol;Shin Chang Sun;Park Jang Woo
    • KIPS Transactions on Software and Data Engineering
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    • v.12 no.3
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    • pp.125-132
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    • 2023
  • In this study, we compared the performance of machine learning models for predicting Vapor Pressure Deficits (VPD) in greenhouses that affect pore function and photosynthesis as well as plant growth due to nutrient absorption of plants. For VPD prediction, the correlation between the environmental elements in and outside the greenhouse and the temporal elements of the time series data was confirmed, and how the highly correlated elements affect VPD was confirmed. Before analyzing the performance of the prediction model, the amount and interval of analysis time series data (1 day, 3 days, 7 days) and interval (20 minutes, 1 hour) were checked to adjust the amount and interval of data. Finally, four machine learning prediction models (XGB Regressor, LGBM Regressor, Random Forest Regressor, etc.) were applied to compare the prediction performance by model. As a result of the prediction of the model, when data of 1 day at 20 minute intervals were used, the highest prediction performance was 0.008 for MAE and 0.011 for RMSE in LGBM. In addition, it was confirmed that the factor that most influences VPD prediction after 20 minutes was VPD (VPD_y__71) from the past 20 minutes rather than environmental factors. Using the results of this study, it is possible to increase crop productivity through VPD prediction, condensation of greenhouses, and prevention of disease occurrence. In the future, it can be used not only in predicting environmental data of greenhouses, but also in various fields such as production prediction and smart farm control models.

Performance Evaluation of Object Detection Deep Learning Model for Paralichthys olivaceus Disease Symptoms Classification (넙치 질병 증상 분류를 위한 객체 탐지 딥러닝 모델 성능 평가)

  • Kyung won Cho;Ran Baik;Jong Ho Jeong;Chan Jin Kim;Han Suk Choi;Seok Won Jung;Hvun Seung Son
    • Smart Media Journal
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    • v.12 no.10
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    • pp.71-84
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    • 2023
  • Paralichthys olivaceus accounts for a large proportion, accounting for more than half of Korea's aquaculture industry. However, about 25-30% of the total breeding volume throughout the year occurs due to diseases, which has a very bad impact on the economic feasibility of fish farms. For the economic growth of Paralichthys olivaceus farms, it is necessary to quickly and accurately diagnose disease symptoms by automating the diagnosis of Paralichthys olivaceus diseases. In this study, we create training data using innovative data collection methods, refining data algorithms, and techniques for partitioning dataset, and compare the Paralichthys olivaceus disease symptom detection performance of four object detection deep learning models(such as YOLOv8, Swin, Vitdet, MvitV2). The experimental findings indicate that the YOLOv8 model demonstrates superiority in terms of average detection rate (mAP) and Estimated Time of Arrival (ETA). If the performance of the AI model proposed in this study is verified, Paralichthys olivaceus farms can diagnose disease symptoms in real time, and it is expected that the productivity of the farm will be greatly improved by rapid preventive measures according to the diagnosis results.

Multimodal Cough Detection Model Using Audio and Acceleration Data (소리와 가속도 데이터를 이용한 멀티모달 기침 감지 모델)

  • Kang, Jae-Sik;Back, Moon-Ki;Choi, Hyung-Tak;Won, Yoon-Seung;Lee, Kyu-Chul
    • Proceedings of the Korea Information Processing Society Conference
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    • 2018.10a
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    • pp.746-748
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    • 2018
  • 전 세계적으로 인플루엔자에 의해 매년 29~64만의 사망자가 발생하며 사회, 경제적 피해를 일으키고 있다. 기침에 의해 생성된 비말은 인플루엔자의 주요 전파 방법으로, 기침 감지 기술을 통해 확산 방지가 가능하다. 이전의 기침 감지에 대한 연구는 기침 소리와 전통적인 기계학습기법을 사용하였다. 본 논문은 기침 소리와 더불어 기침 시 발생하는 신체의 움직임 정보를 동시에 학습하는 멀티모달 딥러닝 기반의 기침 감지 모델을 제안한다. 도출된 모델과 기존의 모델과의 성능 비교를 통해 제안한 모델이 이전의 기침 감지 모델보다 정확한 기침 인식이 가능함을 보였다. 본 논문이 제안하는 모델은 스마트 워치와 같은 웨어러블 기기에 적용되면 인플루엔자의 확산 방지에 크게 기여할 수 있을 것이다.

Individually optimized smart home system that combines deep learning and IoT technology (딥러닝과 IoT를 활용한 개인 최적화 스마트 홈 시스템)

  • Kim, Bumsu;Kim, Wookchan;Ra, Chanyeop;Moon, Jae Hyun
    • Proceedings of the Korea Information Processing Society Conference
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    • 2019.10a
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    • pp.238-241
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    • 2019
  • 본 연구에서는 사회인들의 정해진 패턴을 IoT를 기반으로 AI 기술을 활용하여 Deep Learning 기술을 적용하여 행동패턴을 자동으로 시스템에 업로드 한다. 업로드된 데이터는 Deep Learnig 기술을 통해 유의미한 데이터를 추출하고 이를 각종 가전제품에 제공한다. 데이터의 정합도를 높이기 위해서 초기 데이터는 사용자가 입력한 정해진 생활 패턴을 바탕으로 하며 가우시안 분포를 따르는 난수를 생성하여 training data set으로 사용하여 실제 학습에 적용시켰다. 실생활에서 자동으로 데이터를 활용하기 위해서 IoT기기를 연결하여 AI 학습을 진행하였다. 사회인들은 이 시스템을 통해 집에 들어올 때와 집 밖에 외출할 때 댁내에 있는 편리한 서비스를 제공받을 수 있다.