• 제목/요약/키워드: Supervised Classification

검색결과 421건 처리시간 0.034초

Emerging Machine Learning in Wearable Healthcare Sensors

  • Gandha Satria Adi;Inkyu Park
    • 센서학회지
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    • 제32권6호
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    • pp.378-385
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    • 2023
  • Human biosignals provide essential information for diagnosing diseases such as dementia and Parkinson's disease. Owing to the shortcomings of current clinical assessments, noninvasive solutions are required. Machine learning (ML) on wearable sensor data is a promising method for the real-time monitoring and early detection of abnormalities. ML facilitates disease identification, severity measurement, and remote rehabilitation by providing continuous feedback. In the context of wearable sensor technology, ML involves training on observed data for tasks such as classification and regression with applications in clinical metrics. Although supervised ML presents challenges in clinical settings, unsupervised learning, which focuses on tasks such as cluster identification and anomaly detection, has emerged as a useful alternative. This review examines and discusses a variety of ML algorithms such as Support Vector Machines (SVM), Random Forests (RF), Decision Trees (DT), Neural Networks (NN), and Deep Learning for the analysis of complex clinical data.

자료 전송 데이터 분석을 통한 이상 행위 탐지 모델의 관한 연구 (A Study on the Abnormal Behavior Detection Model through Data Transfer Data Analysis)

  • 손인재;김휘강
    • 정보보호학회논문지
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    • 제30권4호
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    • pp.647-656
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    • 2020
  • 최근 국가·공공기관 등 중요자료(개인정보, 기술 등)가 외부로 유출되는 사례가 증가하고 있으며, 조사에 따르면 정보유출 사고의 주체로 가장 많은 부분을 차지하고 있는 것이 대부분 권한이 있는 내부자로써 조직의 주요 자산에 비교적 손쉽게 접근할 수 있다는 내부자의 특성으로 외부에서의 공격에 의한 기술유출에 비해 보다 더 큰 피해를 일으킬 수 있다. 이번 연구에서는 업무망과 인터넷망의 분리된 서로 다른 영역(보안영역과 비(非)-보안영역 등)간의 자료를 안전하게 전송해주는 망간 자료전송시스템 전송 로그, 이메일 전송 로그, 인사정보 등 실제 데이터를 이용하여 기계학습 기법 중 지도 학습 알고리즘을 통한 이상 행위 탐지를 위한 최적화된 속성 모델을 제시하고자 한다.

Novel Intent based Dimension Reduction and Visual Features Semi-Supervised Learning for Automatic Visual Media Retrieval

  • kunisetti, Subramanyam;Ravichandran, Suban
    • International Journal of Computer Science & Network Security
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    • 제22권6호
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    • pp.230-240
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    • 2022
  • Sharing of online videos via internet is an emerging and important concept in different types of applications like surveillance and video mobile search in different web related applications. So there is need to manage personalized web video retrieval system necessary to explore relevant videos and it helps to peoples who are searching for efficient video relates to specific big data content. To evaluate this process, attributes/features with reduction of dimensionality are computed from videos to explore discriminative aspects of scene in video based on shape, histogram, and texture, annotation of object, co-ordination, color and contour data. Dimensionality reduction is mainly depends on extraction of feature and selection of feature in multi labeled data retrieval from multimedia related data. Many of the researchers are implemented different techniques/approaches to reduce dimensionality based on visual features of video data. But all the techniques have disadvantages and advantages in reduction of dimensionality with advanced features in video retrieval. In this research, we present a Novel Intent based Dimension Reduction Semi-Supervised Learning Approach (NIDRSLA) that examine the reduction of dimensionality with explore exact and fast video retrieval based on different visual features. For dimensionality reduction, NIDRSLA learns the matrix of projection by increasing the dependence between enlarged data and projected space features. Proposed approach also addressed the aforementioned issue (i.e. Segmentation of video with frame selection using low level features and high level features) with efficient object annotation for video representation. Experiments performed on synthetic data set, it demonstrate the efficiency of proposed approach with traditional state-of-the-art video retrieval methodologies.

제초로봇 개발을 위한 2차원 콩 작물 위치 자동검출 (Estimation of two-dimensional position of soybean crop for developing weeding robot)

  • 조수현;이충열;정희종;강승우;이대현
    • 드라이브 ㆍ 컨트롤
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    • 제20권2호
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    • pp.15-23
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    • 2023
  • In this study, two-dimensional location of crops for auto weeding was detected using deep learning. To construct a dataset for soybean detection, an image-capturing system was developed using a mono camera and single-board computer and the system was mounted on a weeding robot to collect soybean images. A dataset was constructed by extracting RoI (region of interest) from the raw image and each sample was labeled with soybean and the background for classification learning. The deep learning model consisted of four convolutional layers and was trained with a weakly supervised learning method that can provide object localization only using image-level labeling. Localization of the soybean area can be visualized via CAM and the two-dimensional position of the soybean was estimated by clustering the pixels associated with the soybean area and transforming the pixel coordinates to world coordinates. The actual position, which is determined manually as pixel coordinates in the image was evaluated and performances were 6.6(X-axis), 5.1(Y-axis) and 1.2(X-axis), 2.2(Y-axis) for MSE and RMSE about world coordinates, respectively. From the results, we confirmed that the center position of the soybean area derived through deep learning was sufficient for use in automatic weeding systems.

Application and Potential of Artificial Intelligence in Heart Failure: Past, Present, and Future

  • Minjae Yoon;Jin Joo Park;Taeho Hur;Cam-Hao Hua;Musarrat Hussain;Sungyoung Lee;Dong-Ju Choi
    • International Journal of Heart Failure
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    • 제6권1호
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    • pp.11-19
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    • 2024
  • The prevalence of heart failure (HF) is increasing, necessitating accurate diagnosis and tailored treatment. The accumulation of clinical information from patients with HF generates big data, which poses challenges for traditional analytical methods. To address this, big data approaches and artificial intelligence (AI) have been developed that can effectively predict future observations and outcomes, enabling precise diagnoses and personalized treatments of patients with HF. Machine learning (ML) is a subfield of AI that allows computers to analyze data, find patterns, and make predictions without explicit instructions. ML can be supervised, unsupervised, or semi-supervised. Deep learning is a branch of ML that uses artificial neural networks with multiple layers to find complex patterns. These AI technologies have shown significant potential in various aspects of HF research, including diagnosis, outcome prediction, classification of HF phenotypes, and optimization of treatment strategies. In addition, integrating multiple data sources, such as electrocardiography, electronic health records, and imaging data, can enhance the diagnostic accuracy of AI algorithms. Currently, wearable devices and remote monitoring aided by AI enable the earlier detection of HF and improved patient care. This review focuses on the rationale behind utilizing AI in HF and explores its various applications.

위성영상을 활용한 환경 요인에 따른 고군산 군도 간석지의 시공간적 변화 탐지 (Monitoring Spatiotemporal Changes of Tidal Flats in Go-Gunsan Islands by Environmental Factors using Satellite Images)

  • 이홍로;이재봉
    • 한국지리정보학회지
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    • 제8권3호
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    • pp.34-43
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    • 2005
  • Landsat TM 위성영상을 이용하여 전라북도 고군산 군도 미지형을 무감독 분류의 ISODATA 기법과 감독 분류의 최근린법으로 분석한 시공간 변화를 파악하고자 한다. 각각의 퇴적물 지형은 새만금 방조제 공사 진행에 따라 지리적 요인과 기후 환경적 영향에 대하여 상이한 특성을 갖는다. 본 연구 지역의 지형적 특성을 구체적으로 구분한 결과는 간척 계획수립과 간척된 이후의 퇴적 및 침식 지형 예측에 유용할 것으로 사료된다. 아울러 Landsat TM 7개의 band 중에서 밴드 4는 조간대와 해변의 구분, 그리고 밴드 5는 조간대에 대한 세부적인 미지형의 분류에 이용하며, 위성영상이 미지형 변화의 탐지에 효율적임을 밝히고자 한다. 따라서 위성영상을 이용한 지형지물의 분류 및 변화에 대한 탐지는 제방 축조공사가 완료된 후 방조제 외측에 위치한 고군산 군도에서 갯벌이 형성되는지의 여부를 밝히는데 매우 유용할 것으로 기대된다.

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도농도시의 효율적 개발을 위한 토지이용변화예측 (Forecast of Land use Change for Efficient Development of Urban-Agricultural city)

  • 김세근;한승희
    • 대한공간정보학회지
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    • 제20권2호
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    • pp.73-79
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    • 2012
  • 본 연구는 LANDSAT TM영상을 이용하여 도농중심도시인 김제시의 토지이용변화를 분석하고 미래 변화예측을 시도한 것이다. 감독분류 시 새로운 시도로 훈련영역 선정 시 HSB(Hue, Saturation, Brightness) 변환영상을 이용함으로써 약 5% 이상의 분류정확도 향상을 가져왔다. 분류결과와 해당지역의 구역 별 인구, DEM, 도로망, 수계 등 GIS데이터를 고려하여 셀룰라오토마타 알고리즘을 발전시킨 Markov Chain 기법으로 토지이용변화예측을 실시하였다. 토지변화비율을 비교 분석한 결과 지형적인 특성이 토지이용의 변화에 가장 크게 영향을 미치는 것으로 판단되었다. 또한 2030년 후의 토지이용변화 예측 결과 김제시 전체에서 산악지의 21.67%가 농경지로 13.11%는 시가지로 변화될 것으로 예측되었다. 주된 변화는 도심 중심부에 위치한 규모가 작은 산악지인 것으로 예측 되었다. 연구결과 미래의 토지이용변화를 예측함으로써 식량자원의 확보를 위한 도농도시의 토지이용계획에 도움이 될 것으로 확신한다.

리모트센싱 데이터의 분류향상을 위한 IHS 변환기법 적용 (A Study on the Application of IHS Transformation Technique for the Enhancement of Remotely Sensed Data Classification)

  • 연상호
    • 한국지리정보학회지
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    • 제1권1호
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    • pp.109-117
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    • 1998
  • 하나의 원격탐사자료를 이용하여 얻고자하는 정보를 추출하는 것은 한계가 있다. 현재 원격탐사분야의 세계적인 추세는 광학위성자료와 레이다 위성자료, 항공사진, 항공 스캐닝 데이터, 지상의 분광스캐너 데이터 등을 모두 통합하여, 정보를 추출하고 있다. 그러나 국내에서는 이들 자료의 연구가 따로 행하여지고 있다. 본 연구에서는 광학위성자료와 레이다 위성 자료의 통합기법을 소개하고 이렇게 통합하여 얻어진 자료를 기존연구방식을 이용하여 추출된 결과와 비교하여 고찰해 보고자 하였다. 이를 위하여 서로 다른 여러 가지 디지털 영상의 혼합결과물을 이용하여 분류를 수행하는데 있어서 독자적인 RGB 가법혼합의 밴드별 상관관계의 방식보다는 각기 다른 해상력의 영상들을 IHS 변환 후 다시 RGB 변환하여 얻어진 결과물의 시각적 특성치를 조사하고, 영상을 혼합하는 것이 정확도 및 해상도의 향상을 기대할 수 있다는 비교결과를 얻을 수 있었다.

비지도학습의 딥 컨벌루셔널 자동 인코더를 이용한 셀 이미지 분류 (Cell Images Classification using Deep Convolutional Autoencoder of Unsupervised Learning)

  • 칼렙;박진혁;권오준;이석환;권기룡
    • 한국정보처리학회:학술대회논문집
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    • 한국정보처리학회 2021년도 추계학술발표대회
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    • pp.942-943
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    • 2021
  • The present work proposes a classification system for the HEp-2 cell images using an unsupervised deep feature learning method. Unlike most of the state-of-the-art methods in the literature that utilize deep learning in a strictly supervised way, we propose here the use of the deep convolutional autoencoder (DCAE) as the principal feature extractor for classifying the different types of the HEp-2 cell images. The network takes the original cell images as the inputs and learns to reconstruct them in order to capture the features related to the global shape of the cells. A final feature vector is constructed by using the latent representations extracted from the DCAE, giving a highly discriminative feature representation. The created features will be fed to a nonlinear classifier whose output will represent the final type of the cell image. We have tested the discriminability of the proposed features on one of the most popular HEp-2 cell classification datasets, the SNPHEp-2 dataset and the results show that the proposed features manage to capture the distinctive characteristics of the different cell types while performing at least as well as the actual deep learning based state-of-the-art methods.

Enhancing Alzheimer's Disease Classification using 3D Convolutional Neural Network and Multilayer Perceptron Model with Attention Network

  • Enoch A. Frimpong;Zhiguang Qin;Regina E. Turkson;Bernard M. Cobbinah;Edward Y. Baagyere;Edwin K. Tenagyei
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권11호
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    • pp.2924-2944
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    • 2023
  • Alzheimer's disease (AD) is a neurological condition that is recognized as one of the primary causes of memory loss. AD currently has no cure. Therefore, the need to develop an efficient model with high precision for timely detection of the disease is very essential. When AD is detected early, treatment would be most likely successful. The most often utilized indicators for AD identification are the Mini-mental state examination (MMSE), and the clinical dementia. However, the use of these indicators as ground truth marking could be imprecise for AD detection. Researchers have proposed several computer-aided frameworks and lately, the supervised model is mostly used. In this study, we propose a novel 3D Convolutional Neural Network Multilayer Perceptron (3D CNN-MLP) based model for AD classification. The model uses Attention Mechanism to automatically extract relevant features from Magnetic Resonance Images (MRI) to generate probability maps which serves as input for the MLP classifier. Three MRI scan categories were considered, thus AD dementia patients, Mild Cognitive Impairment patients (MCI), and Normal Control (NC) or healthy patients. The performance of the model is assessed by comparing basic CNN, VGG16, DenseNet models, and other state of the art works. The models were adjusted to fit the 3D images before the comparison was done. Our model exhibited excellent classification performance, with an accuracy of 91.27% for AD and NC, 80.85% for MCI and NC, and 87.34% for AD and MCI.