• Title/Summary/Keyword: 객체분류

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Land Cover Classification Using UAV Imagery and Object-Based Image Analysis - Focusing on the Maseo-myeon, Seocheon-gun, Chungcheongnam-do - (UAV와 객체기반 영상분석 기법을 활용한 토지피복 분류 - 충청남도 서천군 마서면 일원을 대상으로 -)

  • MOON, Ho-Gyeong;LEE, Seon-Mi;CHA, Jae-Gyu
    • Journal of the Korean Association of Geographic Information Studies
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    • v.20 no.1
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    • pp.1-14
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    • 2017
  • A land cover map provides basic information to help understand the current state of a region, but its utilization in the ecological research field has deteriorated due to limited temporal and spatial resolutions. The purpose of this study was to investigate the possibility of using a land cover map with data based on high resolution images acquired by UAV. Using the UAV, 10.5 cm orthoimages were obtained from the $2.5km^2$ study area, and land cover maps were obtained from object-based and pixel-based classification for comparison and analysis. From accuracy verification, classification accuracy was shown to be high, with a Kappa of 0.77 for the pixel-based classification and a Kappa of 0.82 for the object-based classification. The overall area ratios were similar, and good classification results were found in grasslands and wetlands. The optimal image segmentation weights for object-based classification were Scale=150, Shape=0.5, Compactness=0.5, and Color=1. Scale was the most influential factor in the weight selection process. Compared with the pixel-based classification, the object-based classification provides results that are easy to read because there is a clear boundary between objects. Compared with the land cover map from the Ministry of Environment (subdivision), it was effective for natural areas (forests, grasslands, wetlands, etc.) but not developed areas (roads, buildings, etc.). The application of an object-based classification method for land cover using UAV images can contribute to the field of ecological research with its advantages of rapidly updated data, good accuracy, and economical efficiency.

A Study on Extraction of Central Objects in Color Images (칼라 영상에서의 중심 객체 추출에 관한 연구)

  • 김성영;박창민;권규복;김민환
    • Journal of Korea Multimedia Society
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    • v.5 no.6
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    • pp.616-624
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    • 2002
  • An extraction method of central objects in the color images is proposed, in this paper. A central object is defined as a comparatively consist of the central object in the image. First of all. an input image and its decreased resolution images are segmented. Segmented regions are classified as the outer or the inner region. The outer region is adjacent regions are included by a same region in the decreased resolution image. Then core object regions and core background regions are selected from the inner region and the outer region respectively. Core object regions are the representative regions for the object and are selected by using the information about the information about the region size and location. Each inner regions is classified into foreground or background regions by comparing values of a color histogram intersection of the inner region against the core object region and the core background regions. The core object region and foreground regions consist of the central object in the image.

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클래스 유사도에 의한 분류방법에 관한 연구

  • 최영신;김용환;최성
    • Proceedings of the KAIS Fall Conference
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    • 2001.05a
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    • pp.366-369
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    • 2001
  • 게임 제작 도구의 핵심 구성 요소가 되는 클래스 라이브러리 개발을 위해 게임 객체와 수 있는 클래스 분류방법이 필요하다 클래스 분류방법에는 Enumerative 분류 방법과 클러스터링 방법을 적용한다. 본 논문에선 클래스의 시공간 개념 분석을 하고 유사도 값에 의한 클러스터링을 한다. 유사도 값에 의한 클래스 클러스터링이 게임 클래스 객체들의 행위들을 분류할 카테고리에 없는 경우 Enumerative분류 방법을 하여 게임 클래스 라이브러리를 연구하였다.

Object Classification Method for Security Model Based on Linux System (리눅스 환경에서 보안 모델을 위한 객체 분류 방법)

  • Im Jong-Hyuk;Park Jae-Chul;Kim Dong-Kook;Noh Bong-Nam
    • Proceedings of the Korea Institutes of Information Security and Cryptology Conference
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    • 2006.06a
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    • pp.228-232
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    • 2006
  • 최근 활발히 개발 중인 보안운영체제의 핵심인 보안커널(security kernel)은 참조모니터(reference monitor)에서 주체(subject)가 객체(object)에 대한 실행(action) 권한을 판단함으로써 접근 제어를 실행한다. 보안운영체제의 대표적인 접근제어모델에는 다중레벨접근제어(MLS: Multi Level Security)모델과 역할기반접근제어(RBAC: Role Based Access Control) 모델 등이 있다. 리눅스 시스템에서 이러한 접근제어모델을 적용하기 위해서 접근 대상이 되는 객체들의 효과적인 분류가 요구된다. 본 논문에서는 리눅스 환경에서 효과적인 접근제어모델을 적용하기 위하여 객체들을 객체 클래스(class)와 유형(type)을 기준으로 분류 하였다.

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Estimation of Populations of Moth Using Object Segmentation and an SVM Classifier (객체 분할과 SVM 분류기를 이용한 해충 개체 수 추정)

  • Hong, Young-Ki;Kim, Tae-Woo
    • Journal of the Korea Academia-Industrial cooperation Society
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    • v.18 no.11
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    • pp.705-710
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    • 2017
  • This paper proposes an estimation method of populations of Grapholita molestas using object segmentation and an SVM classifier in the moth images. Object segmentation and moth classification were performed on images of Grapholita molestas moth acquired on a pheromone trap equipped in an orchard. Object segmentation consisted of pre-processing, thresholding, morphological filtering, and object labeling process. The classification of Grapholita molestas in the moth images consisted of the training and classification of an SVM classifier and estimation of the moth populations. The object segmentation simplifies the moth classification process by segmenting the individual objects before passing an input image to the SVM classifier. The image blocks were extracted around the center point and principle axis of the segmented objects, and fed into the SVM classifier. In the experiments, the proposed method performed an estimation of the moth populations for 10 moth images and achieved an average estimation precision rate of 97%. Therefore, it showed an effective monitoring method of populations of Grapholita molestas in the orchard. In addition, the mean processing time of the proposed method and sliding window technique were 2.4 seconds and 5.7 seconds, respectively. Therefore, the proposed method has a 2.4 times faster processing time than the latter technique.

Retrieval of Object-Oriented Component using Enhanced Spreading Activation (개선된 Spreading Activation을 이용한 객체지향 컴포넌트의 검색)

  • Kim, Gui-Jug
    • Proceedings of the Korea Information Processing Society Conference
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    • 2002.11c
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    • pp.1949-1952
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    • 2002
  • 본 연구는 객체지향 컴포넌트 검색을 위해서 개선된 Spreading Activation 방법을 이용하여 다중 패싯 분류된 컴포넌트를 효율적으로 검색할 수 있는 방법을 제안하였다. 객체지향 코드 기반의 관계정의를 위해 특성과 컨텍스트 간에 연관관계를 설정하고, 컨덱스트의 자동 추출을 위한 Spreading Activation 방법의 초기 활성값을 정의하였다. 쿼리에 대해 자동 검색된 컨텍스트에 의해 후보컴포넌트가 선정되고, 쿼리와 컴포넌트 간의 신뢰도가 계산됨으로써 컴포넌트가 검색될 수 있도록 하였다. 본 연구는 다중 패싯 분류된 객체지향 컴포넌트의 검색에 효율적이며, 사용자 수작업의 부담을 최대한 감소시켜 컴포넌트의 재사용성을 높일 수 있도록 하였다.

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Rotation Transformation Invariant Texture Classification for Object Recognition of Surveillance Camera Image (감시 카메라 영상의 객체 인식을 위한 회전 변화에 강인한 질감 분류)

  • Kim, Won-Hee;Park, Seong-Mo;Kim, Jong-Nam
    • Proceedings of the Korea Information Processing Society Conference
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    • 2009.04a
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    • pp.171-172
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    • 2009
  • 질감 분류 기술은 패턴인식과 컴퓨터 비전 분야에서 널리 사용되는 기술로서, 최근 들어서는 감시 카메라 시스템에서의 정확한 객체 인식을 위한 회전 변화에 강인한 질감 분류 연구가 진행되고 있다. 본 논문에서는 순환 가보 웨이블렛 필터를 이용한 회전 변환에 강인한 질감 분류 방법을 제안한다. 제안하는 방법은 순환 가보 웨이블렛 필터링된 영상에서 전역 및 지역 특징 벡터를 계산하고 특징 벡터의 차이를 이용한 유사도 측정 판별식으로 질감 분류를 수행한다. Brodatz 질감 앨범을 이용한 실험에서 기존의 방법들보다 2~6% 향상된 질감 분류 비율을 확인할 수 있었다. 제안하는 방법은 질감 기반 객체 인식에 관련된 응용 분야에서 유용하게 사용될 수 있다.

Landscape Object Classification and Attribute Information System for Standardizing Landscape BIM Library (조경 BIM 라이브러리 표준화를 위한 조경객체 및 속성정보 분류체계)

  • Kim, Bok-Young
    • Journal of the Korean Institute of Landscape Architecture
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    • v.51 no.2
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    • pp.103-119
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    • 2023
  • Since the Korean government has decided to apply the policy of BIM (Building Information Modeling) to the entire construction industry, it has experienced a positive trend in adoption and utilization. BIM can reduce workloads by building model objects into libraries that conform to standards and enable consistent quality, data integrity, and compatibility. In the domestic architecture, civil engineering, and the overseas landscape architecture sectors, many BIM library standardization studies have been conducted, and guidelines have been established based on them. Currently, basic research and attempts to introduce BIM are being made in Korean landscape architecture field, but the diffusion has been delayed due to difficulties in application. This can be addressed by enhancing the efficiency of BIM work using standardized libraries. Therefore, this study aims to provide a starting point for discussions and present a classification system for objects and attribute information that can be referred to when creating landscape libraries in practice. The standardization of landscape BIM library was explored from two directions: object classification and attribute information items. First, the Korean construction information classification system, product inventory classification system, landscape design and construction standards, and BIM object classification of the NLA (Norwegian Association of Landscape Architects) were referred to classify landscape objects. As a result, the objects were divided into 12 subcategories, including 'trees', 'shrubs', 'ground cover and others', 'outdoor installation', 'outdoor lighting facility', 'stairs and ramp', 'outdoor wall', 'outdoor structure', 'pavement', 'curb', 'irrigation', and 'drainage' under five major categories: 'landscape plant', 'landscape facility', 'landscape structure', 'landscape pavement', and 'irrigation and drainage'. Next, the attribute information for the objects was extracted and structured. To do this, the common attribute information items of the KBIMS (Korean BIM Standard) were included, and the object attribute information items that vary according to the type of objects were included by referring to the PDT (Product Data Template) of the LI (UK Landscape Institute). As a result, the common attributes included information on 'identification', 'distribution', 'classification', and 'manufacture and supply' information, while the object attributes included information on 'naming', 'specifications', 'installation or construction', 'performance', 'sustainability', and 'operations and maintenance'. The significance of this study lies in establishing the foundation for the introduction of landscape BIM through the standardization of library objects, which will enhance the efficiency of modeling tasks and improve the data consistency of BIM models across various disciplines in the construction industry.

Splitting Rules using Intervals for Object Classification in Image Databases (이미지 데이터베이스에서 인터벌을 이용한 객체분류를 위한 분리 방법)

  • Cho, June-Suh;Choi, Joon-Soo
    • The KIPS Transactions:PartD
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    • v.12D no.6 s.102
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    • pp.829-836
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    • 2005
  • The way to assign a splitting criterion for correct object classification is the main issue in all decisions trees. This paper describes new splitting rules for classification in order to find an optimal split point. Unlike the current splitting rules that are provided by searching all threshold values, this paper proposes the splitting rules that we based on the probabilities of pre assigned intervals. Our methodology provides that user can control the accuracy of tree by adjusting the number of intervals. In addition, we applied the proposed splitting rules to a set of image data that was retrieved by parameterized feature extraction to recognize image objects.

CCTV Object Detection with Background Subtraction and Convolutional Neural Network (배경 차분과 CNN 기반의 CCTV 객체 검출)

  • Kim, Young-Min;Lee, Jiyoung;Yoon, Illo;Han, Taekjin;Kim, Chulyeon
    • KIISE Transactions on Computing Practices
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    • v.24 no.3
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    • pp.151-156
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    • 2018
  • In this paper, a method to classify objects in outdoor CCTV images using Convolutional Neural Network(CNN) and background subtraction is proposed. Object candidates are extracted using background subtraction and they are classified with CNN to detect objects in the image. At the end, computation complexity is highly reduced in comparison to other object detection algorithms. A database is constructed by filming alleys and playgrounds, places where crime occurs mainly. In experiments, different image sizes and experimental settings are tested to construct a best classifier detecting person. And the final classification accuracy became 80% for same camera data and 67.5% for a different camera.