• 제목/요약/키워드: classification model

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Remote Sensing Image Classification for Land Cover Mapping in Developing Countries: A Novel Deep Learning Approach

  • Lynda, Nzurumike Obianuju;Nnanna, Nwojo Agwu;Boukar, Moussa Mahamat
    • International Journal of Computer Science & Network Security
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    • 제22권2호
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    • pp.214-222
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    • 2022
  • Convolutional Neural networks (CNNs) are a category of deep learning networks that have proven very effective in computer vision tasks such as image classification. Notwithstanding, not much has been seen in its use for remote sensing image classification in developing countries. This is majorly due to the scarcity of training data. Recently, transfer learning technique has successfully been used to develop state-of-the art models for remote sensing (RS) image classification tasks using training and testing data from well-known RS data repositories. However, the ability of such model to classify RS test data from a different dataset has not been sufficiently investigated. In this paper, we propose a deep CNN model that can classify RS test data from a dataset different from the training dataset. To achieve our objective, we first, re-trained a ResNet-50 model using EuroSAT, a large-scale RS dataset to develop a base model then we integrated Augmentation and Ensemble learning to improve its generalization ability. We further experimented on the ability of this model to classify a novel dataset (Nig_Images). The final classification results shows that our model achieves a 96% and 80% accuracy on EuroSAT and Nig_Images test data respectively. Adequate knowledge and usage of this framework is expected to encourage research and the usage of deep CNNs for land cover mapping in cases of lack of training data as obtainable in developing countries.

생물 분류 탐구에서 과제 집착의 인지적 모형 규명 (Investigation of Cognitive Model of Task Commitment on Biology Classification Inquiry)

  • 권승혁;권용주
    • 과학교육연구지
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    • 제37권1호
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    • pp.170-185
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    • 2013
  • 본 연구의 목적은 생물 분류 탐구에서 과제 집착의 인지적인 모형을 규명하는 것이다. 이를 위해 생명 과학 탐구에서 과제 집착에 대한 다양한 문헌들을 분석하여 과제 집착에 대한 가설적인 인지적 모형을 고안하였다. 이 후, 고안한 모형의 규명을 위해 과제 집착의 분석을 위한 과제를 개발하고 사고 발성법과 회상적 면접법을 이용하여 연구 참여자의 프로토콜을 수집, 분석함으로써 생물 분류 탐구에서 과제 집착의 인지적 모형을 규명하였다. 연구 결과, 문헌 기반의 모형을 고안하고 프로토콜 분석을 통하여 규명한 과제 집착의 인지적 모형을 크게 과제 집착 유발, 과제 집착 강화, 과제 집착 유지의 세 단계의 과정으로 구성하였다. 과제 집착 유발 단계에서는 과제에 대한 관찰, 과제 관련 경험 표상, 탐구 예비 수행, 목표 평가의 하위과정으로 구성하였다. 과제 집착 강화 단계는 경험 기반 탐구 계획 설정 또는 경험 미기반 탐구 계획 설정, 적극적인 수행 및 소극적인 수행, 탐구 수행중 자기 평가, 가설 검증까지 반복적인 수행의 하위 과정으로 구성하였다. 과제 집착 유지 단계에서는 완료 후 피드백 수행, 자발적인 후속 탐구 수행의 하위 과정으로 구성하였다. 각 단계마다 과제 집착 구성 요소인 자신감, 목표설정, 주의집중이 변화하는 것으로 구성하였다. 위 연구 결과에 의해 생물 분류 탐구에서 과제 집착의 인지적 모형을 통해 생물 분류 탐구에서 과제 집착 향상을 위한 구체적인 교수-학습 전략을 구성하기 위한 기초 정보를 제공할 수 있으며 탐구과정에서 과제 집착의 단계적인 평가와 피드백 제시에 도움이 될 것이다.

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중력모델에 기반한 하이퍼스텍트럴 영상 분류 (Classification of Hyperspectral Images based on Gravity type Model)

  • 변영기;이정호;김용민;김용일
    • 한국측량학회:학술대회논문집
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    • 한국측량학회 2007년도 춘계학술발표회 논문집
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    • pp.183-186
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    • 2007
  • Hyperspectral remote sensing data contain plenty of information about objects, which makes object classification more precise. Over the past several years, different algorithms for the classification of hyperspectral remote sensing images have been developed. In this study, we proposed method based on absorption band extraction and Gravity type model to solve hyperspectral image classification problem. In contrast to conventional methods that are based on correlation techniques, this method is simple and more effective. The proposed approach was tested to evaluate its effectiveness. The evaluation was done by comparing the results of preexiting SFF(Spectral Feature Fitting) classification method. The evaluation results showed the proposed approach has a good potential in the classification of hyperspectral images.

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Performance of GMM and ANN as a Classifier for Pathological Voice

  • Wang, Jianglin;Jo, Cheol-Woo
    • 음성과학
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    • 제14권1호
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    • pp.151-162
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    • 2007
  • This study focuses on the classification of pathological voice using GMM (Gaussian Mixture Model) and compares the results to the previous work which was done by ANN (Artificial Neural Network). Speech data from normal people and patients were collected, then diagnosed and classified into two different categories. Six characteristic parameters (Jitter, Shimmer, NHR, SPI, APQ and RAP) were chosen. Then the classification method based on the artificial neural network and Gaussian mixture method was employed to discriminate the data into normal and pathological speech. The GMM method attained 98.4% average correct classification rate with training data and 95.2% average correct classification rate with test data. The different mixture number (3 to 15) of GMM was used in order to obtain an optimal condition for classification. We also compared the average classification rate based on GMM, ANN and HMM. The proper number of mixtures on Gaussian model needs to be investigated in our future work.

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정규혼합모델을 이용한 수중 천이신호 식별 (Classification of Underwater Transient Signals Using Gaussian Mixture Model)

  • 오상환;배건성
    • 한국정보통신학회논문지
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    • 제16권9호
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    • pp.1870-1877
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    • 2012
  • 천이신호는 지속시간이 짧으면서 길이의 변화가 크고, 시변성 및 비정재성 특성을 갖는다. 이러한 천이신호의 식별에는 분석 프레임 단위로 참조신호에 대한 기준패턴을 만들어 입력신호와의 유사도를 비교하는 방법이 효과적일 수 있다. 본 연구에서는 참조신호의 기준패턴으로 프레임 기반의 특징벡터들에 대해 확률통계 모형인 정규혼합모델을 적용하는 방법을 제안하고, 다양한 수중 천이신호에 대한 식별 실험을 통해 제안한 방법의 타당성을 검증하였다.

An Optimal Weighting Method in Supervised Learning of Linguistic Model for Text Classification

  • Mikawa, Kenta;Ishida, Takashi;Goto, Masayuki
    • Industrial Engineering and Management Systems
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    • 제11권1호
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    • pp.87-93
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    • 2012
  • This paper discusses a new weighting method for text analyzing from the view point of supervised learning. The term frequency and inverse term frequency measure (tf-idf measure) is famous weighting method for information retrieval, and this method can be used for text analyzing either. However, it is an experimental weighting method for information retrieval whose effectiveness is not clarified from the theoretical viewpoints. Therefore, other effective weighting measure may be obtained for document classification problems. In this study, we propose the optimal weighting method for document classification problems from the view point of supervised learning. The proposed measure is more suitable for the text classification problem as used training data than the tf-idf measure. The effectiveness of our proposal is clarified by simulation experiments for the text classification problems of newspaper article and the customer review which is posted on the web site.

Using Classification function to integrate Discriminant Analysis, Logistic Regression and Backpropagation Neural Networks for Interest Rates Forecasting

  • Oh, Kyong-Joo;Ingoo Han
    • 한국지능정보시스템학회:학술대회논문집
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    • 한국지능정보시스템학회 2000년도 추계정기학술대회:지능형기술과 CRM
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    • pp.417-426
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    • 2000
  • This study suggests integrated neural network models for Interest rate forecasting using change-point detection, classifiers, and classification functions based on structural change. The proposed model is composed of three phases with tee-staged learning. The first phase is to detect successive and appropriate structural changes in interest rare dataset. The second phase is to forecast change-point group with classifiers (discriminant analysis, logistic regression, and backpropagation neural networks) and their. combined classification functions. The fecal phase is to forecast the interest rate with backpropagation neural networks. We propose some classification functions to overcome the problems of two-staged learning that cannot measure the performance of the first learning. Subsequently, we compare the structured models with a neural network model alone and, in addition, determine which of classifiers and classification functions can perform better. This article then examines the predictability of the proposed classification functions for interest rate forecasting using structural change.

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A study on data mining techniques for soil classification methods using cone penetration test results

  • Junghee Park;So-Hyun Cho;Jong-Sub Lee;Hyun-Ki Kim
    • Geomechanics and Engineering
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    • 제35권1호
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    • pp.67-80
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    • 2023
  • Due to the nature of the conjunctive Cone Penetration Test(CPT), which does not verify the actual sample directly, geotechnical engineers commonly classify the underground geomaterials using CPT results with the classification diagrams proposed by various researchers. However, such classification diagrams may fail to reflect local geotechnical characteristics, potentially resulting in misclassification that does not align with the actual stratification in regions with strong local features. To address this, this paper presents an objective method for more accurate local CPT soil classification criteria, which utilizes C4.5 decision tree models trained with the CPT results from the clay-dominant southern coast of Korea and the sand-dominant region in South Carolina, USA. The results and analyses demonstrate that the C4.5 algorithm, in conjunction with oversampling, outlier removal, and pruning methods, can enhance and optimize the decision tree-based CPT soil classification model.

사상체질 판별을 위한 2단계 의사결정 나무 분석 (Two-Stage Decision Tree Analysis for Diagnosis of Personal Sasang Constitution Medicine Type)

  • 진희정;이혜정;김명건;김홍기;김종열
    • 사상체질의학회지
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    • 제22권3호
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    • pp.87-97
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    • 2010
  • 1. Objectives: In SCM, a personal Sasang constitution must be determined accurately before any Sasang treatment. The purpose of this study is to develop an objective method for classification of Sasang constitution. 2. Methods: We collected samples from 5 centers where SCM is practiced, and applied two-stage decision tree analysis on these samples. We recruited samples from 5 centers. The collected data were from subjects whose response to herbal medicine was confirmed according to Sasang constitution. 3. Results: The two-stage decision tree model shows higher classification power than a simple decision tree model. This study also suggests that gender must be considered in the first stage to improve the accuracy of classification. 4. Conclusions: We identified important factors for classifying Sasang constitutions through two-stage decision tree analysis. The two-stage decision tree model shows higher classification power than a simple decision tree model.

Diagnostic Classification Scheme in Iranian Breast Cancer Patients using a Decision Tree

  • Malehi, Amal Saki
    • Asian Pacific Journal of Cancer Prevention
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    • 제15권14호
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    • pp.5593-5596
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    • 2014
  • Background: The objective of this study was to determine a diagnostic classification scheme using a decision tree based model. Materials and Methods: The study was conducted as a retrospective case-control study in Imam Khomeini hospital in Tehran during 2001 to 2009. Data, including demographic and clinical-pathological characteristics, were uniformly collected from 624 females, 312 of them were referred with positive diagnosis of breast cancer (cases) and 312 healthy women (controls). The decision tree was implemented to develop a diagnostic classification scheme using CART 6.0 Software. The AUC (area under curve), was measured as the overall performance of diagnostic classification of the decision tree. Results: Five variables as main risk factors of breast cancer and six subgroups as high risk were identified. The results indicated that increasing age, low age at menarche, single and divorced statues, irregular menarche pattern and family history of breast cancer are the important diagnostic factors in Iranian breast cancer patients. The sensitivity and specificity of the analysis were 66% and 86.9% respectively. The high AUC (0.82) also showed an excellent classification and diagnostic performance of the model. Conclusions: Decision tree based model appears to be suitable for identifying risk factors and high or low risk subgroups. It can also assists clinicians in making a decision, since it can identify underlying prognostic relationships and understanding the model is very explicit.