• 제목/요약/키워드: Training based on internet

검색결과 418건 처리시간 0.028초

어지럼증 재활을 위한 증강현실 기반 보행훈련 콘텐츠 (Walking training contents based on Augmented Reality for dizziness rehabilitation)

  • 마준;이성진;성낙준;민세동;홍민
    • 인터넷정보학회논문지
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    • 제20권4호
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    • pp.47-53
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    • 2019
  • 일반적으로 어지럼증은 여러 가지 복합적인 원인에 의해서 발생하지만 그 중에서 신경계에 속하는 전정계통의 기능 장애에 의한 증상이 가장 환자에게 심한 증상으로 다가오며, 구역질과 구토를 동반하게 된다. 이러한 어지럼증에 대한 치료는 약물요법, 수술요법, 재활치료 등이 있으며, 약물요법이나 수술요법은 대체적으로 후유증의 위험 때문에 재활치료요법인 전정재활훈련을 많이 시행하고 있다. 전정재활훈련은 안구훈련, 자세안정훈련, 보행훈련 등이 있는데 그 중 보행훈련은 의사 또는 전문치료사의 감독하에 일정한 공간에서 진행되므로 시간적, 공간적 부담이 가중되어 환자들이 훈련을 진행기 불편한 단점을 가진다. 이를 해결하고자 본 논문에서는 증강현실 기술을 활용해 사용자가 직접 보행재활훈련을 진행 할 수 있는 보행훈련 콘텐츠를 구현하였다. 추후 어지럼증 환자를 대상으로 한 임상시험을 통해 의료 환경에서 사용 가능한 어지럼증 재활 콘텐츠로 활용 가능할 것으로 기대한다.

Collaborative Modeling of Medical Image Segmentation Based on Blockchain Network

  • Yang Luo;Jing Peng;Hong Su;Tao Wu;Xi Wu
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권3호
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    • pp.958-979
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    • 2023
  • Due to laws, regulations, privacy, etc., between 70-90 percent of providers do not share medical data, forming a "data island". It is essential to collaborate across multiple institutions without sharing patient data. Most existing methods adopt distributed learning and centralized federal architecture to solve this problem, but there are problems of resource heterogeneity and data heterogeneity in the practical application process. This paper proposes a collaborative deep learning modelling method based on the blockchain network. The training process uses encryption parameters to replace the original remote source data transmission to protect privacy. Hyperledger Fabric blockchain is adopted to realize that the parties are not restricted by the third-party authoritative verification end. To a certain extent, the distrust and single point of failure caused by the centralized system are avoided. The aggregation algorithm uses the FedProx algorithm to solve the problem of device heterogeneity and data heterogeneity. The experiments show that the maximum improvement of segmentation accuracy in the collaborative training mode proposed in this paper is 11.179% compared to local training. In the sequential training mode, the average accuracy improvement is greater than 7%. In the parallel training mode, the average accuracy improvement is greater than 8%. The experimental results show that the model proposed in this paper can solve the current problem of centralized modelling of multicenter data. In particular, it provides ideas to solve privacy protection and break "data silos", and protects all data.

A Novel Multi-view Face Detection Method Based on Improved Real Adaboost Algorithm

  • Xu, Wenkai;Lee, Eung-Joo
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제7권11호
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    • pp.2720-2736
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    • 2013
  • Multi-view face detection has become an active area for research in the last few years. In this paper, a novel multi-view human face detection algorithm based on improved real Adaboost is presented. Real Adaboost algorithm is improved by weighted combination of weak classifiers and the approximately best combination coefficients are obtained. After that, we proved that the function of sample weight adjusting method and weak classifier training method is to guarantee the independence of weak classifiers. A coarse-to-fine hierarchical face detector combining the high efficiency of Haar feature with pose estimation phase based on our real Adaboost algorithm is proposed. This algorithm reduces training time cost greatly compared with classical real Adaboost algorithm. In addition, it speeds up strong classifier converging and reduces the number of weak classifiers. For frontal face detection, the experiments on MIT+CMU frontal face test set result a 96.4% correct rate with 528 false alarms; for multi-view face in real time test set result a 94.7 % correct rate. The experimental results verified the effectiveness of the proposed approach.

윈도우 PE 포맷 바이너리 데이터를 활용한 Bidirectional LSTM 기반 경량 악성코드 탐지모델 (Bidirectional LSTM based light-weighted malware detection model using Windows PE format binary data)

  • 박광연;이수진
    • 인터넷정보학회논문지
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    • 제23권1호
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    • pp.87-93
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    • 2022
  • 군(軍) PC의 99%는 윈도우 운영체제를 사용하고 있어 안전한 국방사이버공간을 유지하기 위해서는 윈도우 기반 악성코드의 탐지 및 대응이 상당히 중요하다. 본 연구에서는 윈도우 PE(Portable Executable) 포맷의 악성코드를 탐지할 수 있는 모델을 제안한다. 탐지모델을 구축함에 있어서는 탐지의 정확도보다는 급증하는 악성코드에 효율적으로 대처하기 위한 탐지모델의 신속한 업데이트에 중점을 두었다. 이에 학습 속도를 향상시키기 위해 복잡한 전처리 과정 없이 최소한의 시퀀스 데이터만으로도 악성코드 탐지가 가능한 Bidirectional LSTM(Long Short Term Memory) 네트워크를 기반으로 탐지모델을 설계하였다. 실험은 EMBER2018 데이터셋을 활용하여 진행하였으며, 3가지의 시퀀스 데이터(Byte-Entropy Histogram, Byte Histogram, String Distribution)로 구성된 특성 집합을 모델에 학습시킨 결과 90.79%의 Accuracy를 달성하였다. 한편, 학습 소요시간은 기존 탐지모델 대비 1/4로 단축되어 급증하는 신종 악성코드에 대응하기 위한 탐지모델의 신속한 업데이트가 가능함을 확인하였다.

Breast Cancer Classification in Ultrasound Images using Semi-supervised method based on Pseudo-labeling

  • Seokmin Han
    • International Journal of Internet, Broadcasting and Communication
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    • 제16권1호
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    • pp.124-131
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    • 2024
  • Breast cancer classification using ultrasound, while widely employed, faces challenges due to its relatively low predictive value arising from significant overlap in characteristics between benign and malignant lesions, as well as operator-dependency. To alleviate these challenges and reduce dependency on radiologist interpretation, the implementation of automatic breast cancer classification in ultrasound image can be helpful. To deal with this problem, we propose a semi-supervised deep learning framework for breast cancer classification. In the proposed method, we could achieve reasonable performance utilizing less than 50% of the training data for supervised learning in comparison to when we utilized a 100% labeled dataset for training. Though it requires more modification, this methodology may be able to alleviate the time-consuming annotation burden on radiologists by reducing the number of annotation, contributing to a more efficient and effective breast cancer detection process in ultrasound images.

의미적 연관태그와 이미지 내용정보를 이용한 웹 이미지 분류 (Web Image Classification using Semantically Related Tags and Image Content)

  • 조수선
    • 인터넷정보학회논문지
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    • 제11권3호
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    • pp.15-24
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    • 2010
  • 본 논문에서는 대용량 온라인 이미지 공유 사이트를 적용 도메인으로 하여 이미지 검색의 만족도를 높이고자 태그의 의미적 연관성과 이미지 자체의 내용 정보를 결합하는 이미지 분류 방법을 제안한다. 이미지 검색 및 분류 알고리즘이 플리커와 같은 대용량 이미지 공유 사이트에서 활용될 수 있으려면 실제 웹상의 태깅된 이미지를 대상으로 한 적용이 가능해야 한다. 제안된 알고리즘은 'bag of visual word'기반의 이미지 내용으로 웹 이미지를 분류하기 위한 것으로서, 의미적 연관태그를 이용해 일차 검색된 이미지들을 훈련 데이터로 사용하여 카테고리 모델을 훈련하고, PLSA를 적용하여 평가 이미지들을 분류하는 것이다. 제안된 방법으로 플리커의 웹 이미지들을 대상으로 실험한 결과, 태그 정보를 이용한 기존의 방법에 비해 우수한 검색 정확도 및 재현율을 확인할 수 있었다.

Hierarchical Regression for Single Image Super Resolution via Clustering and Sparse Representation

  • Qiu, Kang;Yi, Benshun;Li, Weizhong;Huang, Taiqi
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제11권5호
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    • pp.2539-2554
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    • 2017
  • Regression-based image super resolution (SR) methods have shown great advantage in time consumption while maintaining similar or improved quality performance compared to other learning-based methods. In this paper, we propose a novel single image SR method based on hierarchical regression to further improve the quality performance. As an improvement to other regression-based methods, we introduce a hierarchical scheme into the process of learning multiple regressors. First, training samples are grouped into different clusters according to their geometry similarity, which generates the structure layer. Then in each cluster, a compact dictionary can be learned by Sparse Coding (SC) method and the training samples can be further grouped by dictionary atoms to form the detail layer. Last, a series of projection matrixes, which anchored to dictionary atoms, can be learned by linear regression. Experiment results show that hierarchical scheme can lead to regression that is more precise. Our method achieves superior high quality results compared with several state-of-the-art methods.

A Case Study on Digital Interactive Training Content <Tamagotchi> and <Peridot>

  • DongHee Choi;Jeanhun Chung
    • International journal of advanced smart convergence
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    • 제12권4호
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    • pp.306-313
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    • 2023
  • Having pet is one of the activities people living in modern society do to relieve stress and find peace of mind. Currently, the object of companion animals has moved beyond being a real 'living entity' and has developed to a stage where the animal's upbringing process can be enjoyed in a virtual space by being programmed in digital content. This paper studies detailed elements such as character design, interaction, and realism of 'Tamagotchi (1996)', which can be said to be the beginning of digital training content, and 'Peridot (2023)', a recently introduced augmented reality-based training content. The point was that it was training content using portable electronic devices. However, while the environment in the electronic device in which Tamagotchi's character exists was a simple black and white screen, the environment in which Peridot's character operates has been changed to the real world projected on the screen based on augmented reality. Mutual communication with characters in Tamagotchi remained a response to pressing buttons, but in Peridot, it has advanced to the point where you can pet the characters by touching the smartphone screen. In addition, through object and step recognition, it was confirmed that the sense of reality had become more realistic, with toys thrown by users on the screen bouncing off real objects. We hope that this research material will serve as a useful reference for the development of digital training content to be developed in the near future.

K-MEANS 알고리즘을 이용한 인지 재활 훈련 방법의 개선 (Improvement of Cognitive Rehabilitation Method using K-means Algorithm)

  • 조하연;이혁민;문호상;신성욱;정성택
    • 한국인터넷방송통신학회논문지
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    • 제18권6호
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    • pp.259-268
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    • 2018
  • 본 연구의 목적은 인지기능 훈련 콘텐츠들을 사용하는 동안 사용자들의 흥미와 몰입도를 높이기 위하여 인지 능력 수준에 맞춘 훈련 방법을 제시하는 것이다. 사용자의 인지 능력 수준은 K-means 알고리즘을 적용한 협업 필터링을 사용하여 사용자들의 정보와 한국형 아동 간이 정신 상태 검사 점수를 기반으로 군집화한 결과를 바탕으로 이루어졌다. 이 결과를 구현된 인지기능 훈련 통합 시스템에 적용하여 사용자의 인지 능력 수준에 알맞은 인지기능 훈련 영역 별 콘텐츠 순서와 난이도를 추천하였다. 특히 콘텐츠 난이도 조절은 사용자들이 긴장감과 편안함을 반복적으로 느낄 수 있도록 제안한 '몰입이론' 방법을 적용하여 높은 몰입감을 주고자 하였다. 결론적으로 본 논문에서 제안한 사용자 맞춤형 인지기능 훈련 방법은 기존의 치료사가 콘텐츠 순서와 난이도를 주관적으로 설정하는 것보다 더욱 효과적이고 재활 결과를 기대할 수 있을 것이다.

An Efficient Machine Learning-based Text Summarization in the Malayalam Language

  • P Haroon, Rosna;Gafur M, Abdul;Nisha U, Barakkath
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권6호
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    • pp.1778-1799
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    • 2022
  • Automatic text summarization is a procedure that packs enormous content into a more limited book that incorporates significant data. Malayalam is one of the toughest languages utilized in certain areas of India, most normally in Kerala and in Lakshadweep. Natural language processing in the Malayalam language is relatively low due to the complexity of the language as well as the scarcity of available resources. In this paper, a way is proposed to deal with the text summarization process in Malayalam documents by training a model based on the Support Vector Machine classification algorithm. Different features of the text are taken into account for training the machine so that the system can output the most important data from the input text. The classifier can classify the most important, important, average, and least significant sentences into separate classes and based on this, the machine will be able to create a summary of the input document. The user can select a compression ratio so that the system will output that much fraction of the summary. The model performance is measured by using different genres of Malayalam documents as well as documents from the same domain. The model is evaluated by considering content evaluation measures precision, recall, F score, and relative utility. Obtained precision and recall value shows that the model is trustable and found to be more relevant compared to the other summarizers.