• 제목/요약/키워드: Classification of Difficulty

검색결과 247건 처리시간 0.027초

악안면부의 섬유골성 병소 명칭에 대한 고찰 (Review of nomenclature revision of fibro-ossous lesions in the maxillofacial region)

  • 이병도
    • Imaging Science in Dentistry
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    • 제37권1호
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    • pp.1-7
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    • 2007
  • Fibro-osseous lesions are composed of connective tissue and varying amount of mineralized substances, which may be bony or cementum-like structures. It is necessary for oral radiologist to differentiate due to the tendency of these fibro-osseous lesions to show similar histopathologic appearances, while the management of each lesion is different. However we often encounter a little difficulty in judgement because there are some overlaps between concept of each lesions. So recently I suggest, we face a need to review basic concept and classification of several fibro-osseous jaw lesions. In this article, several fibre-osseous lesions, such as fibrous dysplasia, cemento-ossifying fibroma and cemento-osseous dysplasia, will be discussed basing on the review of literature. particular emphasis will be made on the nomenclature revision of WHO's classification in 1992.

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Fake News Detection Using Deep Learning

  • Lee, Dong-Ho;Kim, Yu-Ri;Kim, Hyeong-Jun;Park, Seung-Myun;Yang, Yu-Jun
    • Journal of Information Processing Systems
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    • 제15권5호
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    • pp.1119-1130
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    • 2019
  • With the wide spread of Social Network Services (SNS), fake news-which is a way of disguising false information as legitimate media-has become a big social issue. This paper proposes a deep learning architecture for detecting fake news that is written in Korean. Previous works proposed appropriate fake news detection models for English, but Korean has two issues that cannot apply existing models: Korean can be expressed in shorter sentences than English even with the same meaning; therefore, it is difficult to operate a deep neural network because of the feature scarcity for deep learning. Difficulty in semantic analysis due to morpheme ambiguity. We worked to resolve these issues by implementing a system using various convolutional neural network-based deep learning architectures and "Fasttext" which is a word-embedding model learned by syllable unit. After training and testing its implementation, we could achieve meaningful accuracy for classification of the body and context discrepancies, but the accuracy was low for classification of the headline and body discrepancies.

Labeling Big Spatial Data: A Case Study of New York Taxi Limousine Dataset

  • AlBatati, Fawaz;Alarabi, Louai
    • International Journal of Computer Science & Network Security
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    • 제21권6호
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    • pp.207-212
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    • 2021
  • Clustering Unlabeled Spatial-datasets to convert them to Labeled Spatial-datasets is a challenging task specially for geographical information systems. In this research study we investigated the NYC Taxi Limousine Commission dataset and discover that all of the spatial-temporal trajectory are unlabeled Spatial-datasets, which is in this case it is not suitable for any data mining tasks, such as classification and regression. Therefore, it is necessary to convert unlabeled Spatial-datasets into labeled Spatial-datasets. In this research study we are going to use the Clustering Technique to do this task for all the Trajectory datasets. A key difficulty for applying machine learning classification algorithms for many applications is that they require a lot of labeled datasets. Labeling a Big-data in many cases is a costly process. In this paper, we show the effectiveness of utilizing a Clustering Technique for labeling spatial data that leads to a high-accuracy classifier.

자동차산업에 있어서 부품업체 품질보증에 관한 고찰 (A Study on Quality Assurance of Suppliers in the Automotive Industry)

  • 고동완
    • 오토저널
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    • 제26권1호
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    • pp.76-82
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    • 2004
  • In this paper, the trend of quality management system that suppliers in the automotive industry are adopting, the classification system of suppliers and car manufacturers requirements for quality are described. Due to the complexity of the requirements for quality, the introduction of an active quality management system which can meet all conditions is a difficult task. Thus, to cope with this difficulty, this paper shows the optimal requirements that suppliers have to consider when they are introducing quality management system and the discriminated strategies to assure parts quality by supplier model.

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SOM과 LVQ에 의한 자음의 분류 (Classification of Consonants by SOM and LVQ)

  • 이채봉;이창영
    • 한국전자통신학회논문지
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    • 제6권1호
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    • pp.34-42
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    • 2011
  • 음성타자기의 구현에 접근하려는 노력의 일환으로서, 우리는 본 논문에서 자음의 분류에 대해 연구한다. 많은 자음들은 시간에 따른 주기적 거동을 보이지 않고 따라서 그들에 대한 푸리에 해석의 타당성에 확신을 갖기 어렵다. 그러므로, 우선 음성 신호로부터 추출되는 MFCC와 LPCC 특징벡터들이 자음에 대해 어느 정도의 의미가 있는지를 파악하기 위하여 LBG 클러스터링을 통한 벡터양자화를 수행한다. VQ의 실험적 결과는 자음에 대한 푸리에 해석의 타당성에 관해 분명한 결론을 내리는 것이 쉽지 않음을 보여주었다. 자음의 분류를 위해 SOM과 LVQ의 두 가지 신경망이 사용되었다. SOM의 결과는 몇 쌍의 자음들이 나뉘어 분류되지 않음을 보여주었다. LVQ에서는 본질적으로 이 문제가 사라지지만 자음의 분류 정확도는 낮은 수준이었다. 이로부터, LVQ에 의한 자음 분류에 있어서는 MFCC 및 다른 특징 벡터들이 함께 사용되어야 함이 사료된다. 하지만 본 연구에서 도입한 MFCC/LVQ의 결합은 기존의 언어모델을 기반으로 하는 음소 분류에 비해 그 결과가 나쁘지 않은 것으로 나타났다. 모든 경우에 LPCC 특징벡터는 MFCC에 비해 그 결과가 좋지 않았다.

효율적인 문서 자동 분류를 위한 대표 색인어 추출 기법 (A Feature Selection Technique for an Efficient Document Automatic Classification)

  • 김지숙;김영지;문현정;우용태
    • 정보기술과데이타베이스저널
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    • 제8권1호
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    • pp.117-128
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    • 2001
  • Recently there are many researches of text mining to find interesting patterns or association rules from mass textual documents. However, the words extracted from informal documents are tend to be irregular and there are too many general words, so if we use pre-exist method, we would have difficulty in retrieving knowledge information effectively. In this paper, we propose a new feature extraction method to classify mass documents using association rule based on unsupervised learning technique. In experiment, we show the efficiency of suggested method by extracting features and classifying of documents.

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Vehicle Face Recognition Algorithm Based on Weighted Nonnegative Matrix Factorization with Double Regularization Terms

  • Shi, Chunhe;Wu, Chengdong
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제14권5호
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    • pp.2171-2185
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    • 2020
  • In order to judge that whether the vehicles in different images which are captured by surveillance cameras represent the same vehicle or not, we proposed a novel vehicle face recognition algorithm based on improved Nonnegative Matrix Factorization (NMF), different from traditional vehicle recognition algorithms, there are fewer effective features in vehicle face image than in whole vehicle image in general, which brings certain difficulty to recognition. The innovations mainly include the following two aspects: 1) we proposed a novel idea that the vehicle type can be determined by a few key regions of the vehicle face such as logo, grille and so on; 2) Through adding weight, sparseness and classification property constraints to the NMF model, we can acquire the effective feature bases that represent the key regions of vehicle face image. Experimental results show that the proposed algorithm not only achieve a high correct recognition rate, but also has a strong robustness to some non-cooperative factors such as illumination variation.

The Algorithm-Oriented Management of Nasal Bone Fracture according to Stranc's Classification System

  • Park, Ki-Sung;Kim, Seung-Soo;Lee, Wu-Seop;Yang, Wan-Suk
    • 대한두개안면성형외과학회지
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    • 제18권2호
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    • pp.97-104
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    • 2017
  • Background: Nasal bone fracture is one of the most common facial bone fracture types, and the surgical results exert a strong influence on the facial contour and patient satisfaction. Preventing secondary deformity and restoring the original bone state are the major goals of surgeons managing nasal bone fracture patients. In this study, a treatment algorithm was established by applying the modified open reduction technique and postoperative care for several years. Methods: This article is a retrospective chart review of 417 patients who had been received surgical treatment from 2014 to 2015. Using prepared questionnaires and visual analogue scale, several components (postoperative nasal contour; degree of pain; minor complications like dry mouth, sleep disturbance, swallowing difficulty, conversation difficulty, and headache; and degree of patient satisfaction) were evaluated. Results: The average scores for the postoperative nasal contour given by three experts, and the degree of patient satisfaction, were within the "satisfied" (4) to "very satisfied" (5) range (4.5, 4.6, 4.5, and 4.2, respectively). The postoperative degree of pain was sufficiently low that the patients needed only the minimum dose of painkiller. The scores for the minor complications (dry mouth, sleep disturbance, swallowing difficulty, conversation difficulty, headache) were relatively low (36.4, 40.8, 65.2, 32.3, and 34 out of the maximum score of 100, respectively). Conclusion: Satisfactory results were obtained through the algorithm-oriented management of nasal bone fracture. The degree of postoperative pain and minor complications were considerably low, and the degree of satisfaction with the nasal contour was high.

MRF 기반 반복적 경계지역내 분류수정 (MRF-based Iterative Class-Modification in Boundary)

  • 이상훈
    • 대한원격탐사학회지
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    • 제20권2호
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    • pp.139-152
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    • 2004
  • 본 연구에서는 수정이방성복원 후 지역확장분할 영상분류의 분류오류를 Markov Random Field(MRF) 기반 분류자를 사용하여 개선시킬 것을 제안하고 있다. 제안 접근법은 지역확장분할 분류에 의해 생성된 결과에서 분류오류의 발생 가능성이 높은 경계지역을 정의하고 경계지역내의 화소들에 대해 재분류를 수행하여 수정하는 것이다. 재분류를 위한 MRF 기반 분류자는 지역확장분할 분류에 의해 추정된 클래스 수와 클래스 특성 값을 기반으로 하여 분류를 수행하는 반복적인 기법이다. 모의자료에 대한 실험은 제안 기법이 분류 정확성을 향상시킴을 보여주었다 그러나 실제적으로 많은 탐사지역의 피복형태는 매우 복잡한 구조를 갖고 있으므로 일반적 MRF 기반 기법의 사용은 원격탐사 영상의 정확한 분석을 이끌어 내지 못할 수 있으므로 본 연구는 다중 분류자를 사용하는 다단계 경계지역 수정기법을 제안한다. 한반도의 실제 원격탐사 영상자료에 대한 적용결과는 다단계 기법의 효과성을 잘 보여주고 있다. 다단계 반복적 경계지역 내 분류수정은 분석지역에 존재하는 자세한 구조를 보존하는 한편 지역적 명확한 구분의 분류결과를 생성한다.

Discrimination model using denoising autoencoder-based majority vote classification for reducing false alarm rate

  • Heonyong Lee;Kyungtak Yu;Shiu Kim
    • Nuclear Engineering and Technology
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    • 제55권10호
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    • pp.3716-3724
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    • 2023
  • Loose parts monitoring and detecting alarm type in real Nuclear Power Plant have challenges such as background noise, insufficient alarm data, and difficulty of distinction between alarm data that occur during start and stop. Although many signal processing methods and alarm determination algorithms have been developed, it is not easy to determine valid alarm and extract the meaning data from alarm signal including background noise. To address these issues, this paper proposes a denoising autoencoder-based majority vote classification. Training and test data are prepared by acquiring alarm data from real NPP and simulation facility for data augmentation, and noisy data is reproduced by adding Gaussian noise. Using DAEs with 3, 5, 7, and 9 layers, features are extracted for each model and classified into neural networks. Finally, the results obtained from each DAE are classified by majority voting. Also, through comparison with other methods, the accuracy and the false alarm rate are compared, and the excellence of the proposed method is confirmed.