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    <dcat:Catalog>
        <dcat:dataset>
            <dcat:Dataset>
                <dct:description xml:lang="kr">체육시설 안전점검 결함사진 학습 데이터는 체육시설법에 의거하여 서울올림픽기념국민체육진흥공단이 전국체육시설 안전점검 과정에서 촬영한 시설물의 결함 사진입니다.<br/>이미지의 점검일자, 시군구, 주소, 점검항목 등을 조회하고 확인할 수 있습니다. 체육시설 결함 유형별 분류로 AI 학습데이터의 기반을 마련하고 AI 기업들에 AI 학습데이터 목적으로 개방하여<br/>국가 차원의 체육시설 안전점검 표준화ㆍ지능화 기반 마련 및 국민 체감형 공공서비스 제공 등 공익성 확보에 기여합니다.<br/>이 학습데이터는 AI 고도화, 위험 발굴 확대로 국민 안전 강화를 실현할 수 있습니다.<br/>*AI 점검 : AI가 다수의 결함 사례를 학습해 새로운 사진에서 동일한 위험을 자동 판정하는 AI 기술</dct:description>
                <dct:description xml:lang="en">The training data for safety inspection defect photos of sports facilities are photos of facilities with defects taken by the Seoul Olympic Memorial National Sports Promotion Foundation during safety inspections of sports facilities nationwide, in accordance with the Sports Facilities Act. You can search and confirm the inspection date, city/county/district, address, and inspection items in the images. By categorizing sports facility defects by type, we establish the foundation for AI learning data and open it to AI companies for AI learning purposes. This contributes to securing public interest, such as establishing a foundation for national-level sports facility safety inspection standardization and intelligence and providing tangible public services. This training data can enhance national safety by advancing AI and expanding risk identification. *AI inspection: AI technology that automatically determines the same risks in new photos by learning from numerous defect cases.</dct:description>
                <dct:title xml:lang="kr">서울올림픽기념국민체육진흥공단_체육시설 안전점검 결함사진 학습 데이터</dct:title>
                <dct:title xml:lang="en">Seoul Olympic Memorial National Sports Promotion Foundation_Sports Facility Safety Inspection Defect Photo Learning Data</dct:title>
                <dct:issued rdf:datatype="http://www.w3.org/2001/XMLSchema#date">2025-12-31</dct:issued>
                <dct:modified rdf:datatype="http://www.w3.org/2001/XMLSchema#date">2026-01-13</dct:modified>
                <dct:publisher>
                    <foaf:Organization>
                        <foaf:name>서울올림픽기념국민체육진흥공단</foaf:name>
                        
                    </foaf:Organization>
                </dct:publisher>
                <dcat:contactPoint>
                    <vcard:Organization>
                        <vcard:organization-unit>디지털혁신팀</vcard:organization-unit>
                        <vcard:hasTelephone rdf:resource="02-410-1674"/>
                    </vcard:Organization>
                </dcat:contactPoint>
                <dct:conformsTo ></dct:conformsTo>
                <dcat:theme>문화체육관광 - 문화체육관광일반</dcat:theme>
                <dcat:keyword xml:lang="kr">체육시설,안전점검,사진,AI,학습용,결함</dcat:keyword>
                <dcat:keyword xml:lang="en">sports facilities,Safety inspection,picture,AI,For learning,defect</dcat:keyword>
                <dct:rights>이용허락범위 제한 없음</dct:rights>
                <dct:accrualPeriodicity>수시</dct:accrualPeriodicity>
                
                <dcat:landingPage rdf:resource="https://www.data.go.kr/data/15157025/fileData.do"/>
                <dcat:distribution>
                    <dcat:Distribution>
                        <dct:accessURL ></dct:accessURL>
                        <dcat:description></dcat:description>
                        <dcat:format>csv</dcat:format>
                        <dct:issued rdf:datatype="http://www.w3.org/2001/XMLSchema#date">2026-01-13</dct:issued>
                        <dcat:title>서울올림픽기념국민체육진흥공단_체육시설 안전점검 결함사진 학습 데이터_20251231</dcat:title>
                    </dcat:Distribution>
                </dcat:distribution>
                <dct:spatial></dct:spatial>
                <dct:temporal></dct:temporal>
            </dcat:Dataset>
        </dcat:dataset>

        
    </dcat:Catalog>
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