• 제목/요약/키워드: Object-based model

검색결과 2,194건 처리시간 0.031초

LSG:모델 기반 3차원 물체 인식을 위한 정형화된 국부적인 특징 구조 (LSG;(Local Surface Group); A Generalized Local Feature Structure for Model-Based 3D Object Recognition)

  • 이준호
    • 정보처리학회논문지B
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    • 제8B권5호
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    • pp.573-578
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    • 2001
  • This research proposes a generalized local feature structure named "LSG(Local Surface Group) for model-based 3D object recognition". An LSG consists of a surface and its immediately adjacent surface that are simultaneously visible for a given viewpoint. That is, LSG is not a simple feature but a viewpoint-dependent feature structure that contains several attributes such as surface type. color, area, radius, and simultaneously adjacent surface. In addition, we have developed a new method based on Bayesian theory that computes a measure of how distinct an LSG is compared to other LSGs for the purpose of object recognition. We have experimented the proposed methods on an object databaed composed of twenty 3d object. The experimental results show that LSG and the Bayesian computing method can be successfully employed to achieve rapid 3D object recognition.

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Object Classification based on Weakly Supervised E2LSH and Saliency map Weighting

  • Zhao, Yongwei;Li, Bicheng;Liu, Xin;Ke, Shengcai
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제10권1호
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    • pp.364-380
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    • 2016
  • The most popular approach in object classification is based on the bag of visual-words model, which has several fundamental problems that restricting the performance of this method, such as low time efficiency, the synonym and polysemy of visual words, and the lack of spatial information between visual words. In view of this, an object classification based on weakly supervised E2LSH and saliency map weighting is proposed. Firstly, E2LSH (Exact Euclidean Locality Sensitive Hashing) is employed to generate a group of weakly randomized visual dictionary by clustering SIFT features of the training dataset, and the selecting process of hash functions is effectively supervised inspired by the random forest ideas to reduce the randomcity of E2LSH. Secondly, graph-based visual saliency (GBVS) algorithm is applied to detect the saliency map of different images and weight the visual words according to the saliency prior. Finally, saliency map weighted visual language model is carried out to accomplish object classification. Experimental results datasets of Pascal 2007 and Caltech-256 indicate that the distinguishability of objects is effectively improved and our method is superior to the state-of-the-art object classification methods.

객체그룹화에 기반한 지리정보시스템의 설계 (The Design of Geographic Information System based on Object Grouping)

  • 강신봉;주인학;최윤철
    • 대한공간정보학회지
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    • 제3권1호
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    • pp.45-54
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    • 1995
  • 관계 데이타모델은 관계(relations)의 수학적인 개념에 기반을 두고 잘 정형화되어 있으며 실용분야에서 많은 검토가 되었으나, 대부분의 지리객체의 특징인 복합 계층구조를 표현하는데는 적합하지 않다. 반면에 객체지향 데이터모델은 복합 계충구조를 자연스럽게 표현할 수 있었으나, 현재 대부분의 상용 GIS시스템 사용자가 이용하고 있는 관계데이타모델과의 데이타 공유가 어려우며, 표준화된 구조(format)의 표준 질의어가 정립되어 있지 못하다. 본 논문에서는 RDBMS를 기반으로 하여 기존의 관계 데이타모델의 데이타를 사용할 수 있으면서 객체지향 데이타모델의 각종 개념을 지원할 수 있는 객체그룹화(Object Grouping)를 제안하였으며, 이를 이용하여 지리정보시스템을 설계하였다.

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효율적인 인덱싱 기법을 이용한 3차원 물체인식:Part II-물체에 대한 가설의 생성과 검증 (Three-dimensional object recognition using efficient indexing:Part II-generation and verification of object hypotheses)

  • 이준호
    • 전자공학회논문지C
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    • 제34C권10호
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    • pp.76-88
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    • 1997
  • Based on the principles described in Part I, we have implemented a working prototype vision system using a feature structure called an LSG (local surface group) for generating object hypotheses. In order to verify an object hypothesis, we estimate the view of the hypothesized model object and render the model object for the computed view. The object hypothesis is then verified by finding additional features in the scene that match those present in the rendered image. Experimental results on synthetic and real range images show the effectiveness of the indexing scheme.

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개별화학습지원-학습객체모델에 기초한 교수설계모형 개발 (The Development of Instructional Design Model, based on LO-Model supporting Individualized Learning)

  • 홍지영;송기상;이태욱
    • 컴퓨터교육학회논문지
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    • 제6권4호
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    • pp.115-123
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    • 2003
  • 일반적인 코스웨어에서는 단순한 분기 수준에서 학습자료를 제시하는 것 이외의 개별화에 관한 노력을 찾아보기 힘들다. 이러한 문제의 원인은 다양한 측면에서 찾아볼 수 있지만, 코스웨어 자체가 융통적이지 못하고 재사용이 불가능한 하나의 고정된 구조로 구성되어 있으며 개발하는 데 있어 많은 비용과 시간이 소모된다는 것이다. 소프트웨어 개발 방법에서 객체지향개념이 등장한 것과 같은 맥락으로 코스와 컨텐트 개발에서는 학습객체라고 하는 개념이 대두되어 이를 통한 융통적인 코스 설계의 가능성을 보여주고 있다. 하지만 학습객체 기반의 코스 설계에서도 여전히 기존의 코스웨어와 비슷한 형태와 구조를 보이고 있으며, 학습객체를 활용한 개별화학습 구현에 대한 노력은 아직 미비하다. 본 연구에서는 기존 학습객체를 확장하여 개별화학습을 지원할 수 있는 개략적인 개별화학습지원-학습객체모델을 제안하며, 이를 기초로 개별화된 학습경로를 제시해 줄 수 있는 교수설계모형을 ADDIE 모델을 기초로 설계해 보았다.

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샴 네트워크 기반 객체 추적을 위한 표적 이미지 교환 모델 (Target Image Exchange Model for Object Tracking Based on Siamese Network)

  • 박성준;김규민;황승준;백중환
    • 한국정보통신학회논문지
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    • 제25권3호
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    • pp.389-395
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    • 2021
  • 본 논문에서는 샴 네트워크 기반의 객체 추적 알고리즘의 성능 향상을 위한 표적 이미지 교환 모델을 제안한다. 샴 네트워크 기반의 객체 추적 알고리즘은 시퀀스의 첫 프레임에서 지정된 표적 이미지만을 사용하여 탐색 이미지 내에서 가장 유사한 부분을 찾아 객체를 추적한다. 첫 프레임의 객체와 유사도를 비교하기 때문에 추적에 한 번 실패하게 되면 오류가 축적되어 추적 객체가 아닌 부분에서 표류하게 되는 현상이 발생한다. 따라서 CNN(Convolutional Neural Network)기반의 모델을 설계하여 추적이 잘 진행되고 있는지 확인하고 샴 네트워크 기반의 객체 추적 알고리즘에서 출력되는 점수를 이용하여 표적 이미지 교환 시기를 정의하였다. 제안 모델은 VOT-2018 데이터 셋을 이용하여 성능을 평가하였고 최종적으로 정확도 0.611 견고도 22.816을 달성하였다.

CenterNet Based on Diagonal Half-length and Center Angle Regression for Object Detection

  • Yuantian, Xia;XuPeng Kou;Weie Jia;Shuhan Lu;Longhe Wang;Lin Li
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권7호
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    • pp.1841-1857
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    • 2023
  • CenterNet, a novel object detection algorithm without anchor based on key points, regards the object as a single center point for prediction and directly regresses the object's height and width. However, because the objects have different sizes, directly regressing their height and width will make the model difficult to converge and lose the intrinsic relationship between object's width and height, thereby reducing the stability of the model and the consistency of prediction accuracy. For this problem, we proposed an algorithm based on the regression of the diagonal half-length and the center angle, which significantly compresses the solution space of the regression components and enhances the intrinsic relationship between the decoded components. First, encode the object's width and height into the diagonal half-length and the center angle, where the center angle is the angle between the diagonal and the vertical centreline. Secondly, the predicted diagonal half-length and center angle are decoded into two length components. Finally, the position of the object bounding box can be accurately obtained by combining the corresponding center point coordinates. Experiments show that, when using CenterNet as the improved baseline and resnet50 as the Backbone, the improved model achieved 81.6% and 79.7% mAP on the VOC 2007 and 2012 test sets, respectively. When using Hourglass-104 as the Backbone, the improved model achieved 43.3% mAP on the COCO 2017 test sets. Compared with CenterNet, the improved model has a faster convergence rate and significantly improved the stability and prediction accuracy.

Object detection and tracking using a high-performance artificial intelligence-based 3D depth camera: towards early detection of African swine fever

  • Ryu, Harry Wooseuk;Tai, Joo Ho
    • Journal of Veterinary Science
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    • 제23권1호
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    • pp.17.1-17.10
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    • 2022
  • Background: Inspection of livestock farms using surveillance cameras is emerging as a means of early detection of transboundary animal disease such as African swine fever (ASF). Object tracking, a developing technology derived from object detection aims to the consistent identification of individual objects in farms. Objectives: This study was conducted as a preliminary investigation for practical application to livestock farms. With the use of a high-performance artificial intelligence (AI)-based 3D depth camera, the aim is to establish a pathway for utilizing AI models to perform advanced object tracking. Methods: Multiple crossovers by two humans will be simulated to investigate the potential of object tracking. Inspection of consistent identification will be the evidence of object tracking after crossing over. Two AI models, a fast model and an accurate model, were tested and compared with regard to their object tracking performance in 3D. Finally, the recording of pig pen was also processed with aforementioned AI model to test the possibility of 3D object detection. Results: Both AI successfully processed and provided a 3D bounding box, identification number, and distance away from camera for each individual human. The accurate detection model had better evidence than the fast detection model on 3D object tracking and showed the potential application onto pigs as a livestock. Conclusions: Preparing a custom dataset to train AI models in an appropriate farm is required for proper 3D object detection to operate object tracking for pigs at an ideal level. This will allow the farm to smoothly transit traditional methods to ASF-preventing precision livestock farming.

Object tracking algorithm of Swarm Robot System for using Polygon based Q-learning and parallel SVM

  • Seo, Snag-Wook;Yang, Hyun-Chang;Sim, Kwee-Bo
    • International Journal of Fuzzy Logic and Intelligent Systems
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    • 제8권3호
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    • pp.220-224
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    • 2008
  • This paper presents the polygon-based Q-leaning and Parallel SVM algorithm for object search with multiple robots. We organized an experimental environment with one hundred mobile robots, two hundred obstacles, and ten objects. Then we sent the robots to a hallway, where some obstacles were lying about, to search for a hidden object. In experiment, we used four different control methods: a random search, a fusion model with Distance-based action making (DBAM) and Area-based action making (ABAM) process to determine the next action of the robots, and hexagon-based Q-learning, and dodecagon-based Q-learning and parallel SVM algorithm to enhance the fusion model with Distance-based action making (DBAM) and Area-based action making (ABAM) process. In this paper, the result show that dodecagon-based Q-learning and parallel SVM algorithm is better than the other algorithm to tracking for object.

에이전트 기반의 고장허용 객체그룹 모델 구축 (Construction of an Agent-based Fault-Tolerant Object Group Model)

  • 강명석;김학배
    • 한국통신학회논문지
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    • 제34권1B호
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    • pp.74-85
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    • 2009
  • 본 논문에서는 효율적인 객체 관리와 고장 회복을 위해 에이전트 기술과 중복 메커니즘을 이용한 고장허용 객체그룹(fault Tolerant Object Group, FTOG)를 기반으로 에이전트 기반의 고장허용 객체그룹 모델을 제안한다. 고장허용 객체그룹의 확장된 기능으로 다섯 가지의 에이전트 - 내부처리 에이전트, 등록 에이전트, 상태처리 에이전트 사용자인터페이스 에이전트 서비스 에이전트를 정의하였다. 제안된 모델에서 에이전트들의 역할은 분산된 객체들의 상호작용을 줄이고 보다 효과적인 서비스를 제공하는데 있다. 에이전트 기반의 고장허용 객체그룹 모델의 효율성을 검증하기 위해 홈네트워크 서비스를 제공하는 가상의 지능형 홈네트워크 시뮬레이터를 구현하였다. 시뮬레이션을 통하여 제안한 모델은 객체들 간의 상호작용을 줄이고(부하감소) 효율적인 장 회복 등 안정적이고 신뢰성 있는 서비스를 제공함을 검증하였다.