• 제목/요약/키워드: Artificial intelligence algorithms

검색결과 505건 처리시간 0.027초

Deep-learning performance in identifying and classifying dental implant systems from dental imaging: a systematic review and meta-analysis

  • Akhilanand Chaurasia;Arunkumar Namachivayam;Revan Birke Koca-Unsal;Jae-Hong Lee
    • Journal of Periodontal and Implant Science
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    • 제54권1호
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    • pp.3-12
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    • 2024
  • Deep learning (DL) offers promising performance in computer vision tasks and is highly suitable for dental image recognition and analysis. We evaluated the accuracy of DL algorithms in identifying and classifying dental implant systems (DISs) using dental imaging. In this systematic review and meta-analysis, we explored the MEDLINE/PubMed, Scopus, Embase, and Google Scholar databases and identified studies published between January 2011 and March 2022. Studies conducted on DL approaches for DIS identification or classification were included, and the accuracy of the DL models was evaluated using panoramic and periapical radiographic images. The quality of the selected studies was assessed using QUADAS-2. This review was registered with PROSPERO (CRDCRD42022309624). From 1,293 identified records, 9 studies were included in this systematic review and meta-analysis. The DL-based implant classification accuracy was no less than 70.75% (95% confidence interval [CI], 65.6%-75.9%) and no higher than 98.19 (95% CI, 97.8%-98.5%). The weighted accuracy was calculated, and the pooled sample size was 46,645, with an overall accuracy of 92.16% (95% CI, 90.8%-93.5%). The risk of bias and applicability concerns were judged as high for most studies, mainly regarding data selection and reference standards. DL models showed high accuracy in identifying and classifying DISs using panoramic and periapical radiographic images. Therefore, DL models are promising prospects for use as decision aids and decision-making tools; however, there are limitations with respect to their application in actual clinical practice.

불법 주정차 단속을 위한 딥러닝 기반 이미지 인식 모델 (A Deep Learning-Based Image Recognition Model for Illegal Parking Enforcement)

  • 조민규;김민준;김재환;김진욱;황병선;이승우;선준호;김진영
    • 한국인터넷방송통신학회논문지
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    • 제24권1호
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    • pp.59-64
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    • 2024
  • 최근 다양한 산업 분야에서 드론과 인공지능 기술이 융합된 연구 사례가 진행되고 있다. 본 논문에서는 딥러닝 기반 객체 인식과 객체 판별 알고리즘을 이용하여 불법 주정차 차량 인식 모델을 제안한다. 객체 인식 알고리즘은 YOLOv8를 사용하였으며, 객체 판별 알고리즘은 ResNet18을 사용하였다. 제안된 모델은 일반 도로 상황에서 수집한 이미지 데이터를 이용하여 모델 학습을 수행하였고, 학습된 모델은 이미지 기반 불법 주정차를 판별하는데 높은 정확도를 보였다. 이를 통해 제안된 모델은 다양한 이미지로부터 불법 주정차 차량을 식별하기 위한 일반화 성능을 갖추고 있음을 확인하였다.

Hybrid machine learning with moth-flame optimization methods for strength prediction of CFDST columns under compression

  • Quang-Viet Vu;Dai-Nhan Le;Thai-Hoan Pham;Wei Gao;Sawekchai Tangaramvong
    • Steel and Composite Structures
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    • 제51권6호
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    • pp.679-695
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    • 2024
  • This paper presents a novel technique that combines machine learning (ML) with moth-flame optimization (MFO) methods to predict the axial compressive strength (ACS) of concrete filled double skin steel tubes (CFDST) columns. The proposed model is trained and tested with a dataset containing 125 tests of the CFDST column subjected to compressive loading. Five ML models, including extreme gradient boosting (XGBoost), gradient tree boosting (GBT), categorical gradient boosting (CAT), support vector machines (SVM), and decision tree (DT) algorithms, are utilized in this work. The MFO algorithm is applied to find optimal hyperparameters of these ML models and to determine the most effective model in predicting the ACS of CFDST columns. Predictive results given by some performance metrics reveal that the MFO-CAT model provides superior accuracy compared to other considered models. The accuracy of the MFO-CAT model is validated by comparing its predictive results with existing design codes and formulae. Moreover, the significance and contribution of each feature in the dataset are examined by employing the SHapley Additive exPlanations (SHAP) method. A comprehensive uncertainty quantification on probabilistic characteristics of the ACS of CFDST columns is conducted for the first time to examine the models' responses to variations of input variables in the stochastic environments. Finally, a web-based application is developed to predict ACS of the CFDST column, enabling rapid practical utilization without requesting any programing or machine learning expertise.

딥러닝의 파일 입출력을 위한 버퍼캐시 성능 개선 연구 (A Study on Improvement of Buffer Cache Performance for File I/O in Deep Learning)

  • 이정하;반효경
    • 한국인터넷방송통신학회논문지
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    • 제24권2호
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    • pp.93-98
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    • 2024
  • 인공지능과 고성능 컴퓨팅 기술이 급속히 발전하면서 다양한 분야에 딥러닝 기술이 활용되고 있다. 딥러닝은 학습 과정에서 대량의 데이터를 무작위로 읽어 학습을 진행하고, 이 과정을 반복한다. 많은 수의 파일들이 무작위로 반복 참조되는 딥러닝의 파일 입출력은 시간적 지역성을 지닌 일반적인 응용과는 다른 특징을 보인다. 이로 인한 캐싱의 어려움을 극복하기 위해 본 연구에서는 딥러닝 데이터셋 읽기의 무작위성을 줄이고 기존의 버퍼 캐시 알고리즘에 적응적으로 동작하는 새로운 데이터 읽기 방안을 제안한다. 본 논문에서는 실험을 통해 제안하는 방식이 버퍼 캐시의 미스율을 기존의 방식에 비해 평균 16%, 최대 33% 감소시키고, 수행시간을 24%까지 개선함을 보인다.

A Comparative Study of Deep Learning Techniques for Alzheimer's disease Detection in Medical Radiography

  • Amal Alshahrani;Jenan Mustafa;Manar Almatrafi;Layan Albaqami;Raneem Aljabri;Shahad Almuntashri
    • International Journal of Computer Science & Network Security
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    • 제24권5호
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    • pp.53-63
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    • 2024
  • Alzheimer's disease is a brain disorder that worsens over time and affects millions of people around the world. It leads to a gradual deterioration in memory, thinking ability, and behavioral and social skills until the person loses his ability to adapt to society. Technological progress in medical imaging and the use of artificial intelligence, has provided the possibility of detecting Alzheimer's disease through medical images such as magnetic resonance imaging (MRI). However, Deep learning algorithms, especially convolutional neural networks (CNNs), have shown great success in analyzing medical images for disease diagnosis and classification. Where CNNs can recognize patterns and objects from images, which makes them ideally suited for this study. In this paper, we proposed to compare the performances of Alzheimer's disease detection by using two deep learning methods: You Only Look Once (YOLO), a CNN-enabled object recognition algorithm, and Visual Geometry Group (VGG16) which is a type of deep convolutional neural network primarily used for image classification. We will compare our results using these modern models Instead of using CNN only like the previous research. In addition, the results showed different levels of accuracy for the various versions of YOLO and the VGG16 model. YOLO v5 reached 56.4% accuracy at 50 epochs and 61.5% accuracy at 100 epochs. YOLO v8, which is for classification, reached 84% accuracy overall at 100 epochs. YOLO v9, which is for object detection overall accuracy of 84.6%. The VGG16 model reached 99% accuracy for training after 25 epochs but only 78% accuracy for testing. Hence, the best model overall is YOLO v9, with the highest overall accuracy of 86.1%.

Harnessing the Power of Voice: A Deep Neural Network Model for Alzheimer's Disease Detection

  • Chan-Young Park;Minsoo Kim;YongSoo Shim;Nayoung Ryoo;Hyunjoo Choi;Ho Tae Jeong;Gihyun Yun;Hunboc Lee;Hyungryul Kim;SangYun Kim;Young Chul Youn
    • 대한치매학회지
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    • 제23권1호
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    • pp.1-10
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    • 2024
  • Background and Purpose: Voice, reflecting cerebral functions, holds potential for analyzing and understanding brain function, especially in the context of cognitive impairment (CI) and Alzheimer's disease (AD). This study used voice data to distinguish between normal cognition and CI or Alzheimer's disease dementia (ADD). Methods: This study enrolled 3 groups of subjects: 1) 52 subjects with subjective cognitive decline; 2) 110 subjects with mild CI; and 3) 59 subjects with ADD. Voice features were extracted using Mel-frequency cepstral coefficients and Chroma. Results: A deep neural network (DNN) model showed promising performance, with an accuracy of roughly 81% in 10 trials in predicting ADD, which increased to an average value of about 82.0%±1.6% when evaluated against unseen test dataset. Conclusions: Although results did not demonstrate the level of accuracy necessary for a definitive clinical tool, they provided a compelling proof-of-concept for the potential use of voice data in cognitive status assessment. DNN algorithms using voice offer a promising approach to early detection of AD. They could improve the accuracy and accessibility of diagnosis, ultimately leading to better outcomes for patients.

Predicting Traffic Accident Risk based on Driver Abnormal Behavior and Gaze

  • Ji-Woong Yang;Hyeon-Jin Jung;Han-Jin Lee;Tae-Wook Kim;Ellen J. Hong
    • 한국컴퓨터정보학회논문지
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    • 제29권8호
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    • pp.1-9
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    • 2024
  • 본 연구는 기존 연구가 주로 도로의 물리적 상태 및 도로 환경 등 외부 요인에 초점을 맞춘 것에 반해, 차량 내부에서 발생하는 운전자의 행동 및 시선 변화를 실시간으로 분석함으로써 교통사고 위험도를 측정하고 예측하는 새로운 접근법을 제시한다. 실시간으로 운전자의 이상행동과 시선 이동 패턴을 정밀하게 측정하고, 이를 통해 도출된 각각의 위험 점수를 합산하여 교통사고 위험도를 평가한다. 본 연구는 기존 연구에서 다루지 않았던 내재적 요인의 중요성을 강조하며 교통안전 연구 분야에 새로운 시각을 제공한다. 이러한 혁신적 접근 방식은 교통사고 예방 및 안전 개선을 위한 실시간 예측 모델의 개발 가능성을 제시하며, 향후 교통사고 예방 전략 및 정책 수립에 있어 중요한 기초 자료를 제공할 수 있을 것으로 기대된다.

유사도 알고리즘을 활용한 시맨틱 프로세스 검색방안 (Semantic Process Retrieval with Similarity Algorithms)

  • 이홍주
    • Asia pacific journal of information systems
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    • 제18권1호
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    • pp.79-96
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    • 2008
  • One of the roles of the Semantic Web services is to execute dynamic intra-organizational services including the integration and interoperation of business processes. Since different organizations design their processes differently, the retrieval of similar semantic business processes is necessary in order to support inter-organizational collaborations. Most approaches for finding services that have certain features and support certain business processes have relied on some type of logical reasoning and exact matching. This paper presents our approach of using imprecise matching for expanding results from an exact matching engine to query the OWL(Web Ontology Language) MIT Process Handbook. MIT Process Handbook is an electronic repository of best-practice business processes. The Handbook is intended to help people: (1) redesigning organizational processes, (2) inventing new processes, and (3) sharing ideas about organizational practices. In order to use the MIT Process Handbook for process retrieval experiments, we had to export it into an OWL-based format. We model the Process Handbook meta-model in OWL and export the processes in the Handbook as instances of the meta-model. Next, we need to find a sizable number of queries and their corresponding correct answers in the Process Handbook. Many previous studies devised artificial dataset composed of randomly generated numbers without real meaning and used subjective ratings for correct answers and similarity values between processes. To generate a semantic-preserving test data set, we create 20 variants for each target process that are syntactically different but semantically equivalent using mutation operators. These variants represent the correct answers of the target process. We devise diverse similarity algorithms based on values of process attributes and structures of business processes. We use simple similarity algorithms for text retrieval such as TF-IDF and Levenshtein edit distance to devise our approaches, and utilize tree edit distance measure because semantic processes are appeared to have a graph structure. Also, we design similarity algorithms considering similarity of process structure such as part process, goal, and exception. Since we can identify relationships between semantic process and its subcomponents, this information can be utilized for calculating similarities between processes. Dice's coefficient and Jaccard similarity measures are utilized to calculate portion of overlaps between processes in diverse ways. We perform retrieval experiments to compare the performance of the devised similarity algorithms. We measure the retrieval performance in terms of precision, recall and F measure? the harmonic mean of precision and recall. The tree edit distance shows the poorest performance in terms of all measures. TF-IDF and the method incorporating TF-IDF measure and Levenshtein edit distance show better performances than other devised methods. These two measures are focused on similarity between name and descriptions of process. In addition, we calculate rank correlation coefficient, Kendall's tau b, between the number of process mutations and ranking of similarity values among the mutation sets. In this experiment, similarity measures based on process structure, such as Dice's, Jaccard, and derivatives of these measures, show greater coefficient than measures based on values of process attributes. However, the Lev-TFIDF-JaccardAll measure considering process structure and attributes' values together shows reasonably better performances in these two experiments. For retrieving semantic process, we can think that it's better to consider diverse aspects of process similarity such as process structure and values of process attributes. We generate semantic process data and its dataset for retrieval experiment from MIT Process Handbook repository. We suggest imprecise query algorithms that expand retrieval results from exact matching engine such as SPARQL, and compare the retrieval performances of the similarity algorithms. For the limitations and future work, we need to perform experiments with other dataset from other domain. And, since there are many similarity values from diverse measures, we may find better ways to identify relevant processes by applying these values simultaneously.

SVM을 이용한 VKOSPI 일 중 변화 예측과 실제 옵션 매매에의 적용 (VKOSPI Forecasting and Option Trading Application Using SVM)

  • 라윤선;최흥식;김선웅
    • 지능정보연구
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    • 제22권4호
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    • pp.177-192
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    • 2016
  • 기계학습(Machine Learning)은 인공 지능의 한 분야로, 데이터를 이용하여 기계를 학습시켜 기계 스스로가 데이터 분석 및 예측을 하게 만드는 것과 관련한 컴퓨터 과학의 한 영역을 일컫는다. 그중에서 SVM(Support Vector Machines)은 주로 분류와 회귀 분석을 목적으로 사용되는 모델이다. 어느 두 집단에 속한 데이터들에 대한 정보를 얻었을 때, SVM 모델은 주어진 데이터 집합을 바탕으로 하여 새로운 데이터가 어느 집단에 속할지를 판단해준다. 최근 들어서 많은 금융전문가는 기계학습과 막대한 데이터가 존재하는 금융 분야와의 접목 가능성을 보며 기계학습에 집중하고 있다. 그러면서 각 금융사는 고도화된 알고리즘과 빅데이터를 통해 여러 금융업무 수행이 가능한 로봇(Robot)과 투자전문가(Advisor)의 합성어인 로보어드바이저(Robo-Advisor) 서비스를 발 빠르게 제공하기 시작했다. 따라서 현재의 금융 동향을 고려하여 본 연구에서는 기계학습 방법의 하나인 SVM을 활용하여 매매성과를 올리는 방법에 대해 제안하고자 한다. SVM을 통한 예측대상은 한국형 변동성지수인 VKOSPI이다. VKOSPI는 금융파생상품의 한 종류인 옵션의 가격에 영향을 미친다. VKOSPI는 흔히 말하는 변동성과 같고 VKOSPI 값은 옵션의 종류와 관계없이 옵션 가격과 정비례하는 특성이 있다. 그러므로 VKOSPI의 정확한 예측은 옵션 매매에서의 수익을 낼 수 있는 중요한 요소 중 하나이다. 지금까지 기계학습을 기반으로 한 VKOSPI의 예측을 다룬 연구는 없었다. 본 연구에서는 SVM을 통해 일 중의 VKOSPI를 예측하였고, 예측 내용을 바탕으로 옵션 매매에 대한 적용 가능 여부를 실험하였으며 실제로 향상된 매매 성과가 나타남을 증명하였다.

지능형 알고리즘 기반 RGBW Dimming control LED 감성조명 시스템 개발 (Development of RGBW Dimming Control Sensitivity Lighting System based on the Intelligence Algorithm)

  • 오성권;임승준;마창민;김진율
    • 한국지능시스템학회논문지
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    • 제21권3호
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    • pp.359-364
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    • 2011
  • 본 연구는 감성 공학과 인공 지능 알고리즘의 하나인 퍼지 추론을 이용하여 LED 색온도 제어시스템의 체계적인 제어를 위한 퍼지 추론 기반 LED 감성 조명 시스템을 개발하고자 한다. 감성공학 영역에서 하나의 형용사 언어로 표현되는 감성과 색상과의 관계를 고려하여 감성언어를 결정하고, 인간의 뇌에서 나오는 뇌파의 파장과 색온도와의 관계를 고려하여 수업과목의 종류를 결정한다. 결정된 감성언어와 수업과목의 종류를 이용하여 RGB LED의 색온도를 조정한다. 더불어 GPS(Global Positioning System)로 위도와 경도의 정보를 이용하여 실시간으로 태양의 고도를 산출하고, 온도 및 습도센서의 정보를 이용하여 불쾌지수를 산출한다. 결과로 나온 태양의 고도와 불쾌지수의 변화에 따라 LED 조명시스템의 White LED의 조도와 RGBLED의 색온도를 조정한다. 개발된 LED 감성조명 시스템은 상황에 알맞은 분위기를 연출함으로써 학습능력과 업무능력의 효율 향상 등을 이끌어 낼 수 있을 것이다.