• 제목/요약/키워드: Feature Classification

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적응적 대표 컬러 히스토그램과 방향성 패턴 히스토그램을 이용한 내용 기반 영상 검색 (Content-based image retrieval using adaptive representative color histogram and directional pattern histogram)

  • 김태수;김승진;이건일
    • 대한전자공학회논문지SP
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    • 제42권4호
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    • pp.119-126
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    • 2005
  • 본 논문에서는 영상의 블록 분류 특성에 적응적인 대표 컬러 히스토그램 (representative color histogram)과 방향성 패턴 히스토그램 (directional pattern histogram)을 이용한 새로운 내용 기반 영상 검색 방법 (content-based image retrieval)을 제안한다. 제안한 방법에서는 영상을 일정한 크기의 블록으로 나누고, 분할된 블록의 분류 특성에 따라 컬러와 패턴 특징 벡터를 추출한다. 먼저 분할된 블록을 채도 (saturation)에 따라 휘도 블록 또는 컬러 블록으로 분류한 후, 휘도 블록에 대해서는 블록 평균휘도 쌍의 히스토그램을 구하고, 컬러 블록에 대해서는 블록 평균 컬러 쌍 히스토그램을 구함으로써 블록 분류 특징에 따라 컬러 특징 벡터를 추출한다. 또한 블록 휘도 변화의 기울기 (gradient)를 계산하여 방향성 분류를 행한 후 히스토그램을 계산함으로써 블록 방향성 패턴 특징을 추출한다. 본 논문에서 제안한 영상 검색 방법의 성능을 평가하기 위해서 컴퓨터 모의실험을 행한 결과 제안한 방법이 기존의 방법들보다 정확도 (precision) 및 특징 벡터 차원 (feature vector dimension) 크기 등의 객관적인 측면에서 우수함을 확인하였다.

Intelligent System for the Prediction of Heart Diseases Using Machine Learning Algorithms with Anew Mixed Feature Creation (MFC) technique

  • Rawia Elarabi;Abdelrahman Elsharif Karrar;Murtada El-mukashfi El-taher
    • International Journal of Computer Science & Network Security
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    • 제23권5호
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    • pp.148-162
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    • 2023
  • Classification systems can significantly assist the medical sector by allowing for the precise and quick diagnosis of diseases. As a result, both doctors and patients will save time. A possible way for identifying risk variables is to use machine learning algorithms. Non-surgical technologies, such as machine learning, are trustworthy and effective in categorizing healthy and heart-disease patients, and they save time and effort. The goal of this study is to create a medical intelligent decision support system based on machine learning for the diagnosis of heart disease. We have used a mixed feature creation (MFC) technique to generate new features from the UCI Cleveland Cardiology dataset. We select the most suitable features by using Least Absolute Shrinkage and Selection Operator (LASSO), Recursive Feature Elimination with Random Forest feature selection (RFE-RF) and the best features of both LASSO RFE-RF (BLR) techniques. Cross-validated and grid-search methods are used to optimize the parameters of the estimator used in applying these algorithms. and classifier performance assessment metrics including classification accuracy, specificity, sensitivity, precision, and F1-Score, of each classification model, along with execution time and RMSE the results are presented independently for comparison. Our proposed work finds the best potential outcome across all available prediction models and improves the system's performance, allowing physicians to diagnose heart patients more accurately.

사상채질 분류를 위한 안면부내 특징 요소 추출 (Facial Features Extraction for Sasang Constitution Classification)

  • 배나영;안택원;조동욱;이화섭
    • 사상체질의학회지
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    • 제17권2호
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    • pp.46-51
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    • 2005
  • 1. Objectives The purpose of this study is to objectify the diagnosis of Sasang Constitution. Using the methods of this study, it will improve to classificate Sasang Constitution. 2. Methods 1) Automatic feature extraction of human frontal faces for Sasang Constitution classification. 2) Color feature extraction of human frontal faces (1)Erosion filtering (skin-white, the other-black) (2) Median median 3. Results and Conclusions Observing a person's shape has been the major method for Sasang Constitution classification, which usually has been dependent upon doctor's intuition as of these days. We are developing an automatic system which provides objective basic data for Sasang Constitution classification. For this, in this paper, firstly, the signal processing techniques are applied to automatic feature extraction of human frontal faces for Sasang Constitution classification. The experiment is conducted to verify the effectiveness of the proposed system.

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Seabed Sediment Classification Algorithm using Continuous Wavelet Transform

  • Lee, Kibae;Bae, Jinho;Lee, Chong Hyun;Kim, Juho;Lee, Jaeil;Cho, Jung Hong
    • Journal of Advanced Research in Ocean Engineering
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    • 제2권4호
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    • pp.202-208
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    • 2016
  • In this paper, we propose novel seabed sediment classification algorithm using feature obtained by continuous wavelet transform (CWT). Contrast to previous researches using direct reflection coefficient of seabed which is function of frequency and is highly influenced by sediment types, we develop an algorithm using both direct reflection signal and backscattering signal. In order to obtain feature vector, we employ CWT of the signal and obtain histograms extracted from local binary patterns of the scalogram. The proposed algorithm also adopts principal component analysis (PCA) to reduce dimension of the feature vector so that it requires low computational cost to classify seabed sediment. For training and classification, we adopts K-means clustering algorithm which can be done with low computational cost and does not require prior information of the sediment. To verify the proposed algorithm, we obtain field data measured at near Jeju island and show that the proposed classification algorithm has reliable discrimination performance by comparing the classification results with actual physical properties of the sediments.

CNN 기반 지문분류 연구 동향 (Research Trends in CNN-based Fingerprint Classification)

  • 정혜욱
    • 문화기술의 융합
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    • 제8권5호
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    • pp.653-662
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    • 2022
  • 최근 이미지와 같은 다차원의 복잡한 패턴 인식에 많이 사용하는 CNN(Convolutional Neural Networks)을 적용한 지문분류 방법이 다양하게 연구되고 있다. CNN 기반 지문분류 방법은 일반적으로 특징추출과 분류 단계로 나누어진 두 단계의 과정을 하나로 통합하여 실행할 수 있다. 따라서 CNN 기반 방법은 지문 이미지의 특징을 자동으로 추출할 수 있으므로, 처리 과정을 단축시킬 수 있는 장점이 있다. 또한 불완전하거나 품질이 낮은 지문의 특징을 다양하게 학습할 수 있으므로, 예외 상황의 특징 추출에 대해 유연성이 있다. 본 논문에서는 CNN 기반 지문분류연구동향을 파악하고, 실험 방법 및 결과 분석을 통해 향후 연구방향에 대해 논의하고자 한다.

심음 기반의 심장질환 분류를 위한 새로운 시간영역 특징 (New Temporal Features for Cardiac Disorder Classification by Heart Sound)

  • 곽철;권오욱
    • 한국음향학회지
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    • 제29권2호
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    • pp.133-140
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    • 2010
  • 연속 심음신호로부터 추출한 새로운 시간영역에서의 특징들을 추가하여 심장질환 분류의 성능을 개선한다. 기존에 사용되고 있는 켑스트럼 영역 특징인 멜주파수 켑스트럼 계수 (MFCC)에 심음 포락선, 심잡음 확률벡터, 심잡음 진폭값 변동으로 구성된 새로운 3종류의 시간영역 특징을 추가한다. 심장 질환 분류 및 검출 실험에서, 시간영역 특징의 분류 정확도에 대한 기여도를 평가하고 순차적 특징선택 방식을 이용하여 시간영역 특징을 선택한다. 선택된 특징들은 다층 퍼셉트론(MLP), support rector machine (SVM), extreme learning machine (ELM)와 같은 신경회로망 패턴 분류기에 대하여 의미있고 일관되게 분류 정확도를 개선함을 보여준다.

실제 해상 실험 데이터를 이용한 능동소나 표적/비표적 식별 (Active Sonar Target/Nontarget Classification Using Real Sea-trial Data)

  • 석종원
    • 한국멀티미디어학회논문지
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    • 제20권10호
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    • pp.1637-1645
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    • 2017
  • Target/Nontarget classification can be divided into the study of shape estimation of the target analysing reflected echo signal and of type classification of the target using acoustical features. In active sonar system, the feature vectors are extracted from the signal reflected from the target, and an classification algorithm is applied to determine whether the received signal is a target or not. However, received sonar signals can be distorted in the underwater environments, and the spatio-temporal characteristics of active sonar signals change according to the aspect of the target. In addition, it is very difficult to collect real sea-trial data for research. In this paper, target/non-target classification were performed using real sea-trial data. Feature vectors are extracted using MFCC(Mel-Frequency Cepstral Coefficients), filterbank energy in the Fourier spectrum and wavelet domain. For the performance verification, classification experiments were performed using backpropagation neural network classifiers.

Guiding Practical Text Classification Framework to Optimal State in Multiple Domains

  • Choi, Sung-Pil;Myaeng, Sung-Hyon;Cho, Hyun-Yang
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제3권3호
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    • pp.285-307
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    • 2009
  • This paper introduces DICE, a Domain-Independent text Classification Engine. DICE is robust, efficient, and domain-independent in terms of software and architecture. Each module of the system is clearly modularized and encapsulated for extensibility. The clear modular architecture allows for simple and continuous verification and facilitates changes in multiple cycles, even after its major development period is complete. Those who want to make use of DICE can easily implement their ideas on this test bed and optimize it for a particular domain by simply adjusting the configuration file. Unlike other publically available tool kits or development environments targeted at general purpose classification models, DICE specializes in text classification with a number of useful functions specific to it. This paper focuses on the ways to locate the optimal states of a practical text classification framework by using various adaptation methods provided by the system such as feature selection, lemmatization, and classification models.

가우시안 혼합모델을 이용한 솔라셀 색상분류 (Solar Cell Classification using Gaussian Mixture Models)

  • 고진석;임재열
    • 반도체디스플레이기술학회지
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    • 제10권2호
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    • pp.1-5
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    • 2011
  • In recent years, worldwide production of solar wafers increased rapidly. Therefore, the solar wafer technology in the developed countries already has become an industry, and related industries such as solar wafer manufacturing equipment have developed rapidly. In this paper we propose the color classification method of the polycrystalline solar wafer that needed in manufacturing equipment. The solar wafer produced in the manufacturing process does not have a uniform color. Therefore, the solar wafer panels made with insensitive color uniformity will fall off the aesthetics. Gaussian mixture models (GMM) are among the most statistically mature methods for clustering and we use the Gaussian mixture models for the classification of the polycrystalline solar wafers. In addition, we compare the performance of the color feature vector from various color space for color classification. Experimental results show that the feature vector from YCbCr color space has the most efficient performance and the correct classification rate is 97.4%.